Ejemplo n.º 1
0
bool ccKdTree::convertCellIndexToRandomColor()
{
	if (!m_associatedGenericCloud || !m_associatedGenericCloud->isA(CC_TYPES::POINT_CLOUD))
		return false;

	//get leaves
	std::vector<Leaf*> leaves;
	if (!getLeaves(leaves) || leaves.empty())
		return false;

	ccPointCloud* pc = static_cast<ccPointCloud*>(m_associatedGenericCloud);
	if (!pc->resizeTheRGBTable())
		return false;

	//for each cell
	for (size_t i=0; i<leaves.size(); ++i)
	{
		colorType col[3];
		ccColor::Generator::Random(col);
		CCLib::ReferenceCloud* subset = leaves[i]->points;
		if (subset)
		{
			for (unsigned j=0; j<subset->size(); ++j)
				pc->setPointColor(subset->getPointGlobalIndex(j),col);
		}
	}

	pc->showColors(true);

	return true;
}
Ejemplo n.º 2
0
void ccAlignDlg::dataSamplingRateChanged(double value)
{
    QString message("An error occured");

    CC_SAMPLING_METHOD method = getSamplingMethod();
    float rate = (float)dataSamplingRate->value()/(float)dataSamplingRate->maximum();
    if(method == SPACE)
        rate = 1.0f-rate;
    dataSample->setSliderPosition((unsigned)((float)dataSample->maximum()*rate));

    switch(method)
    {
        case SPACE:
			{
				CCLib::ReferenceCloud* tmpCloud = getSampledData(); //DGM FIXME: wow! you generate a spatially sampled cloud just to display its size?!
				if (tmpCloud)
				{
					message = QString("distance units (%1 remaining points)").arg(tmpCloud->size());
					delete tmpCloud;
				}
			}
            break;
        case RANDOM:
			{
				message = QString("remaining points (%1%)").arg(rate*100.0f,0,'f',1);
			}
            break;
        case OCTREE:
			{
				CCLib::ReferenceCloud* tmpCloud = getSampledData();  //DGM FIXME: wow! you generate a spatially sampled cloud just to display its size?!
				if (tmpCloud)
				{
					message = QString("%1 remaining points").arg(tmpCloud->size());
					delete tmpCloud;
				}
			}
            break;
        default:
			{
				unsigned remaining = (unsigned)(rate * (float)dataObject->size());
				message = QString("%1 remaining points").arg(remaining);
			}
            break;
    }
    dataRemaining->setText(message);
}
Ejemplo n.º 3
0
void ccAlignDlg::estimateDelta()
{
    unsigned i, nb;
    float meanDensity, meanSqrDensity, dev, value;
    ccProgressDialog pDlg(false,this);

    CCLib::ReferenceCloud *sampledData = getSampledData();
    //we have to work on a copy of the cloud in order to prevent the algorithms from modifying the original cloud.
    CCLib::ChunkedPointCloud* cloud = new CCLib::ChunkedPointCloud();
    cloud->reserve(sampledData->size());
    for(i=0; i<sampledData->size(); i++)
        cloud->addPoint(*sampledData->getPoint(i));
    cloud->enableScalarField();

    CCLib::GeometricalAnalysisTools::computeLocalDensity(cloud, &pDlg);
    nb = 0;
    meanDensity = 0.;
    meanSqrDensity = 0.;
    for(i=0; i<cloud->size(); i++)
    {
        value = cloud->getPointScalarValue(i);
        if(value > ZERO_TOLERANCE)
        {
            value = 1/value;
            meanDensity += value;
            meanSqrDensity += value*value;
            nb++;
        }
    }
    meanDensity /= (float)nb;
    meanSqrDensity /= (float)nb;
    dev = meanSqrDensity-(meanDensity*meanDensity);

    delta->setValue(meanDensity+dev);
    delete sampledData;
    delete cloud;
}
int ccFastMarchingForNormsDirection::updateResolvedTable(ccGenericPointCloud* theCloud,
                                                            GenericChunkedArray<1,uchar> &resolved,
                                                            NormsIndexesTableType* theNorms)
{
	if (!initialized)
		return -1;

	int count=0;
	for (unsigned i=0;i<activeCells.size();++i)
	{
		DirectionCell* aCell = (DirectionCell*)theGrid[activeCells[i]];
		CCLib::ReferenceCloud* Yk = theOctree->getPointsInCell(aCell->cellCode,gridLevel,true);
		if (!Yk)
			continue;

		Yk->placeIteratorAtBegining();
		
		for (unsigned k=0;k<Yk->size();++k)
		{
			unsigned index = Yk->getCurrentPointGlobalIndex();
			resolved.setValue(index,1); //resolvedValue=1

			const normsType& norm = theNorms->getValue(index);
			if (CCVector3::vdot(ccNormalVectors::GetNormal(norm),aCell->N)<0.0)
			{
				PointCoordinateType newN[3];
				const PointCoordinateType* N = ccNormalVectors::GetNormal(norm);
				newN[0]=-N[0];
				newN[1]=-N[1];
				newN[2]=-N[2];
				theNorms->setValue(index,ccNormalVectors::GetNormIndex(newN));
			}

			//norm = NormalVectors::getNormIndex(aCell->N);
			//theNorms->setValue(index,&norm);

			theCloud->setPointScalarValue(index,aCell->T);
			//theCloud->setPointScalarValue(index,aCell->v);
			Yk->forwardIterator();
			++count;
		}
	}

	return count;
}
Ejemplo n.º 5
0
bool ccKdTree::convertCellIndexToSF()
{
	if (!m_associatedGenericCloud || !m_associatedGenericCloud->isA(CC_TYPES::POINT_CLOUD))
		return false;

	//get leaves
	std::vector<Leaf*> leaves;
	if (!getLeaves(leaves) || leaves.empty())
		return false;

	ccPointCloud* pc = static_cast<ccPointCloud*>(m_associatedGenericCloud);

	const char c_defaultSFName[] = "Kd-tree indexes";
	int sfIdx = pc->getScalarFieldIndexByName(c_defaultSFName);
	if (sfIdx < 0)
		sfIdx = pc->addScalarField(c_defaultSFName);
	if (sfIdx < 0)
	{
		ccLog::Error("Not enough memory!");
		return false;
	}
	pc->setCurrentScalarField(sfIdx);

	//for each cell
	for (size_t i=0; i<leaves.size(); ++i)
	{
		CCLib::ReferenceCloud* subset = leaves[i]->points;
		if (subset)
		{
			for (unsigned j=0; j<subset->size(); ++j)
				subset->setPointScalarValue(j,(ScalarType)i);
		}
	}

	pc->getScalarField(sfIdx)->computeMinAndMax();
	pc->setCurrentDisplayedScalarField(sfIdx);
	pc->showSF(true);

	return true;
}
Ejemplo n.º 6
0
bool ccPointPairRegistrationDlg::convertToSphereCenter(CCVector3d& P, ccHObject* entity, PointCoordinateType& sphereRadius)
{
	sphereRadius = -PC_ONE;
	if (	!entity
		||	!useSphereToolButton->isChecked()
		||	!entity->isKindOf(CC_TYPES::POINT_CLOUD) ) //only works with cloud right now
	{
		//nothing to do
		return true;
	}

	//we'll now try to detect the sphere
	double searchRadius = radiusDoubleSpinBox->value();
	double maxRMSPercentage = maxRmsSpinBox->value() / 100.0;
	ccGenericPointCloud* cloud = static_cast<ccGenericPointCloud*>(entity);
	assert(cloud);

	//crop points inside a box centered on the current point
	ccBBox box;
	box.add(CCVector3::fromArray((P - CCVector3d(1,1,1)*searchRadius).u));
	box.add(CCVector3::fromArray((P + CCVector3d(1,1,1)*searchRadius).u));
	CCLib::ReferenceCloud* part = cloud->crop(box,true);

	bool success = false;
	if (part && part->size() > 16)
	{
		PointCoordinateType radius;
		CCVector3 C;
		double rms;
		ccProgressDialog pDlg(true, this);
		//first roughly search for the sphere
		if (CCLib::GeometricalAnalysisTools::detectSphereRobust(part,0.5,C,radius,rms,&pDlg,0.9))
		{
			if (radius / searchRadius < 0.5 || radius / searchRadius > 2.0)
			{
				ccLog::Warning(QString("[ccPointPairRegistrationDlg] Detected sphere radius (%1) is too far from search radius!").arg(radius));
			}
			else
			{
				//now look again (more precisely)
				{
					delete part;
					box.clear();
					box.add(C - CCVector3(1,1,1)*radius*static_cast<PointCoordinateType>(1.05)); //add 5%
					box.add(C + CCVector3(1,1,1)*radius*static_cast<PointCoordinateType>(1.05)); //add 5%
					part = cloud->crop(box,true);
					if (part && part->size() > 16)
						CCLib::GeometricalAnalysisTools::detectSphereRobust(part,0.5,C,radius,rms,&pDlg,0.99);
				}
				ccLog::Print(QString("[ccPointPairRegistrationDlg] Detected sphere radius = %1 (rms = %2)").arg(radius).arg(rms));
				if (radius / searchRadius < 0.5 || radius / searchRadius > 2.0)
				{
					ccLog::Warning("[ccPointPairRegistrationDlg] Sphere radius is too far from search radius!");
				}
				else if (rms / searchRadius >= maxRMSPercentage)
				{
					ccLog::Warning("[ccPointPairRegistrationDlg] RMS is too high!");
				}
				else
				{
					sphereRadius = radius;
					P = CCVector3d::fromArray(C.u);
					success = true;
				}
			}
		}
		else
		{
			ccLog::Warning("[ccPointPairRegistrationDlg] Failed to fit a sphere around the picked point!");
		}
	}
	else
	{
		//not enough memory? No points inside the 
		ccLog::Warning("[ccPointPairRegistrationDlg] Failed to crop points around the picked point?!");
	}

	if (part)
		delete part;

	return success;
}
Ejemplo n.º 7
0
bool ccRegistrationTools::ICP(	ccHObject* data,
								ccHObject* model,
								ccGLMatrix& transMat,
								double &finalScale,
								double& finalRMS,
								unsigned& finalPointCount,
								double minRMSDecrease,
								unsigned maxIterationCount,
								unsigned randomSamplingLimit,
								bool removeFarthestPoints,
								CCLib::ICPRegistrationTools::CONVERGENCE_TYPE method,
								bool adjustScale,
								double finalOverlapRatio/*=1.0*/,
								bool useDataSFAsWeights/*=false*/,
								bool useModelSFAsWeights/*=false*/,
								int filters/*=CCLib::ICPRegistrationTools::SKIP_NONE*/,
								int maxThreadCount/*=0*/,
								QWidget* parent/*=0*/)
{
	//progress bar
	QScopedPointer<ccProgressDialog> progressDlg;
	if (parent)
	{
		progressDlg.reset(new ccProgressDialog(false, parent));
	}

	Garbage<CCLib::GenericIndexedCloudPersist> cloudGarbage;

	//if the 'model' entity is a mesh, we need to sample points on it
	CCLib::GenericIndexedCloudPersist* modelCloud = nullptr;
	ccGenericMesh* modelMesh = nullptr;
	if (model->isKindOf(CC_TYPES::MESH))
	{
		modelMesh = ccHObjectCaster::ToGenericMesh(model);
		modelCloud = modelMesh->getAssociatedCloud();
	}
	else
	{
		modelCloud = ccHObjectCaster::ToGenericPointCloud(model);
	}

	//if the 'data' entity is a mesh, we need to sample points on it
	CCLib::GenericIndexedCloudPersist* dataCloud = nullptr;
	if (data->isKindOf(CC_TYPES::MESH))
	{
		dataCloud = CCLib::MeshSamplingTools::samplePointsOnMesh(ccHObjectCaster::ToGenericMesh(data), s_defaultSampledPointsOnDataMesh, progressDlg.data());
		if (!dataCloud)
		{
			ccLog::Error("[ICP] Failed to sample points on 'data' mesh!");
			return false;
		}
		cloudGarbage.add(dataCloud);
	}
	else
	{
		dataCloud = ccHObjectCaster::ToGenericPointCloud(data);
	}

	//we activate a temporary scalar field for registration distances computation
	CCLib::ScalarField* dataDisplayedSF = nullptr;
	int oldDataSfIdx = -1, dataSfIdx = -1;

	//if the 'data' entity is a real ccPointCloud, we can even create a proper temporary SF for registration distances
	if (data->isA(CC_TYPES::POINT_CLOUD))
	{
		ccPointCloud* pc = static_cast<ccPointCloud*>(data);
		dataDisplayedSF = pc->getCurrentDisplayedScalarField();
		oldDataSfIdx = pc->getCurrentInScalarFieldIndex();
		dataSfIdx = pc->getScalarFieldIndexByName(REGISTRATION_DISTS_SF);
		if (dataSfIdx < 0)
			dataSfIdx = pc->addScalarField(REGISTRATION_DISTS_SF);
		if (dataSfIdx >= 0)
			pc->setCurrentScalarField(dataSfIdx);
		else
		{
			ccLog::Error("[ICP] Couldn't create temporary scalar field! Not enough memory?");
			return false;
		}
	}
	else
	{
		if (!dataCloud->enableScalarField())
		{
			ccLog::Error("[ICP] Couldn't create temporary scalar field! Not enough memory?");
			return false;
		}
	}

	//add a 'safety' margin to input ratio
	static double s_overlapMarginRatio = 0.2;
	finalOverlapRatio = std::max(finalOverlapRatio, 0.01); //1% minimum
	//do we need to reduce the input point cloud (so as to be close
	//to the theoretical number of overlapping points - but not too
	//low so as we are not registered yet ;)
	if (finalOverlapRatio < 1.0 - s_overlapMarginRatio)
	{
		//DGM we can now use 'approximate' distances as SAITO algorithm is exact (but with a coarse resolution)
		//level = 7 if < 1.000.000
		//level = 8 if < 10.000.000
		//level = 9 if > 10.000.000
		int gridLevel = static_cast<int>(floor(log10(static_cast<double>(std::max(dataCloud->size(), modelCloud->size()))))) + 2;
		    gridLevel = std::min(std::max(gridLevel, 7), 9);
		int result = -1;
		if (modelMesh)
		{
			CCLib::DistanceComputationTools::Cloud2MeshDistanceComputationParams c2mParams;
			c2mParams.octreeLevel = gridLevel;
			c2mParams.maxSearchDist = 0;
			c2mParams.useDistanceMap = true;
			c2mParams.signedDistances = false;
			c2mParams.flipNormals = false;
			c2mParams.multiThread = false;
			result = CCLib::DistanceComputationTools::computeCloud2MeshDistance(dataCloud, modelMesh, c2mParams, progressDlg.data());
		}
		else
		{
			result = CCLib::DistanceComputationTools::computeApproxCloud2CloudDistance(	dataCloud,
																						modelCloud,
																						gridLevel,
																						-1,
																						progressDlg.data());
		}

		if (result < 0)
		{
			ccLog::Error("Failed to determine the max (overlap) distance (not enough memory?)");
			return false;
		}

		//determine the max distance that (roughly) corresponds to the input overlap ratio
		ScalarType maxSearchDist = 0;
		{
			unsigned count = dataCloud->size();
			std::vector<ScalarType> distances;
			try
			{
				distances.resize(count);
			}
			catch (const std::bad_alloc&)
			{
				ccLog::Error("Not enough memory!");
				return false;
			}
			for (unsigned i=0; i<count; ++i)
			{
				distances[i] = dataCloud->getPointScalarValue(i);
			}
			
			ParallelSort(distances.begin(), distances.end());
			
			//now look for the max value at 'finalOverlapRatio+margin' percent
			maxSearchDist = distances[static_cast<unsigned>(std::max(1.0,count*(finalOverlapRatio+s_overlapMarginRatio)))-1];
		}

		//evntually select the points with distance below 'maxSearchDist'
		//(should roughly correspond to 'finalOverlapRatio + margin' percent)
		{
			CCLib::ReferenceCloud* refCloud = new CCLib::ReferenceCloud(dataCloud);
			cloudGarbage.add(refCloud);
			unsigned countBefore = dataCloud->size();
			unsigned baseIncrement = static_cast<unsigned>(std::max(100.0,countBefore*finalOverlapRatio*0.05));
			for (unsigned i=0; i<countBefore; ++i)
			{
				if (dataCloud->getPointScalarValue(i) <= maxSearchDist)
				{
					if (	refCloud->size() == refCloud->capacity()
						&&	!refCloud->reserve(refCloud->size() + baseIncrement) )
					{
						ccLog::Error("Not enough memory!");
						return false;
					}
					refCloud->addPointIndex(i);
				}
			}
			refCloud->resize(refCloud->size());
			dataCloud = refCloud;

			unsigned countAfter = dataCloud->size();
			double keptRatio = static_cast<double>(countAfter)/countBefore;
			ccLog::Print(QString("[ICP][Partial overlap] Selecting %1 points out of %2 (%3%) for registration").arg(countAfter).arg(countBefore).arg(static_cast<int>(100*keptRatio)));

			//update the relative 'final overlap' ratio
			finalOverlapRatio /= keptRatio;
		}
	}

	//weights
	CCLib::ScalarField* modelWeights = nullptr;
	CCLib::ScalarField* dataWeights = nullptr;
	{
		if (!modelMesh && useModelSFAsWeights)
		{
			if (modelCloud == dynamic_cast<CCLib::GenericIndexedCloudPersist*>(model) && model->isA(CC_TYPES::POINT_CLOUD))
			{
				ccPointCloud* pc = static_cast<ccPointCloud*>(model);
				modelWeights = pc->getCurrentDisplayedScalarField();
				if (!modelWeights)
					ccLog::Warning("[ICP] 'useDataSFAsWeights' is true but model has no displayed scalar field!");
			}
			else
			{
				ccLog::Warning("[ICP] 'useDataSFAsWeights' is true but only point cloud scalar fields can be used as weights!");
			}
		}

		if (useDataSFAsWeights)
		{
			if (!dataDisplayedSF)
			{
				if (dataCloud == ccHObjectCaster::ToPointCloud(data))
					ccLog::Warning("[ICP] 'useDataSFAsWeights' is true but data has no displayed scalar field!");
				else
					ccLog::Warning("[ICP] 'useDataSFAsWeights' is true but only point cloud scalar fields can be used as weights!");
			}
			else
			{
				dataWeights = dataDisplayedSF;
			}
		}
	}

	CCLib::ICPRegistrationTools::RESULT_TYPE result;
	CCLib::PointProjectionTools::Transformation transform;
	CCLib::ICPRegistrationTools::Parameters params;
	{
		params.convType = method;
		params.minRMSDecrease = minRMSDecrease;
		params.nbMaxIterations = maxIterationCount;
		params.adjustScale = adjustScale;
		params.filterOutFarthestPoints = removeFarthestPoints;
		params.samplingLimit = randomSamplingLimit;
		params.finalOverlapRatio = finalOverlapRatio;
		params.modelWeights = modelWeights;
		params.dataWeights = dataWeights;
		params.transformationFilters = filters;
		params.maxThreadCount = maxThreadCount;
	}

	result = CCLib::ICPRegistrationTools::Register(	modelCloud,
													modelMesh,
													dataCloud,
													params,
													transform,
													finalRMS,
													finalPointCount,
													static_cast<CCLib::GenericProgressCallback*>(progressDlg.data()));

	if (result >= CCLib::ICPRegistrationTools::ICP_ERROR)
	{
		ccLog::Error("Registration failed: an error occurred (code %i)",result);
	}
	else if (result == CCLib::ICPRegistrationTools::ICP_APPLY_TRANSFO)
	{
		transMat = FromCCLibMatrix<PointCoordinateType, float>(transform.R, transform.T, transform.s);
		finalScale = transform.s;
	}

	//remove temporary SF (if any)
	if (dataSfIdx >= 0)
	{
		assert(data->isA(CC_TYPES::POINT_CLOUD));
		ccPointCloud* pc = static_cast<ccPointCloud*>(data);
		pc->setCurrentScalarField(oldDataSfIdx);
		pc->deleteScalarField(dataSfIdx);
	}

	return (result < CCLib::ICPRegistrationTools::ICP_ERROR);
}
Ejemplo n.º 8
0
void qHPR::doAction()
{
	assert(m_app);
	if (!m_app)
		return;

	const ccHObject::Container& selectedEntities = m_app->getSelectedEntities();
	size_t selNum = selectedEntities.size();
	if (	selNum != 1
		||	!selectedEntities.front()->isA(CC_TYPES::POINT_CLOUD))
	{
		m_app->dispToConsole("Select only one cloud!",ccMainAppInterface::ERR_CONSOLE_MESSAGE);
		return;
	}

	ccPointCloud* cloud = static_cast<ccPointCloud*>(selectedEntities[0]);

	ccGLWindow* win = m_app->getActiveGLWindow();
	if (!win)
	{
		m_app->dispToConsole("No active window!",ccMainAppInterface::ERR_CONSOLE_MESSAGE);
		return;
	}

	//display parameters
	const ccViewportParameters& params =  win->getViewportParameters();
	if (!params.perspectiveView)
	{
		m_app->dispToConsole("Perspective mode only!",ccMainAppInterface::ERR_CONSOLE_MESSAGE);
		return;
	}

	ccHprDlg dlg(m_app->getMainWindow());
	if (!dlg.exec())
		return;

	//progress dialog
	ccProgressDialog progressCb(false,m_app->getMainWindow());

	//unique parameter: the octree subdivision level
	int octreeLevel = dlg.octreeLevelSpinBox->value();
	assert(octreeLevel >= 0 && octreeLevel <= CCLib::DgmOctree::MAX_OCTREE_LEVEL);

	//compute octree if cloud hasn't any
	ccOctree::Shared theOctree = cloud->getOctree();
	if (!theOctree)
	{
		theOctree = cloud->computeOctree(&progressCb);
		if (theOctree && cloud->getParent())
		{
			m_app->addToDB(cloud->getOctreeProxy());
		}
	}

	if (!theOctree)
	{
		m_app->dispToConsole("Couldn't compute octree!",ccMainAppInterface::ERR_CONSOLE_MESSAGE);
		return;
	}

	CCVector3d viewPoint = params.cameraCenter;
	if (params.objectCenteredView)
	{
		CCVector3d PC = params.cameraCenter - params.pivotPoint;
		params.viewMat.inverse().apply(PC);
		viewPoint = params.pivotPoint + PC;
	}

	//HPR
	CCLib::ReferenceCloud* visibleCells = 0;
	{
		QElapsedTimer eTimer;
		eTimer.start();

		CCLib::ReferenceCloud* theCellCenters = CCLib::CloudSamplingTools::subsampleCloudWithOctreeAtLevel(	cloud,
																											static_cast<unsigned char>(octreeLevel),
																											CCLib::CloudSamplingTools::NEAREST_POINT_TO_CELL_CENTER,
																											&progressCb,
																											theOctree.data());
		if (!theCellCenters)
		{
			m_app->dispToConsole("Error while simplifying point cloud with octree!",ccMainAppInterface::ERR_CONSOLE_MESSAGE);
			return;
		}

		visibleCells = removeHiddenPoints(theCellCenters,viewPoint,3.5);
	
		m_app->dispToConsole(QString("[HPR] Cells: %1 - Time: %2 s").arg(theCellCenters->size()).arg(eTimer.elapsed()/1.0e3));

		//warning: after this, visibleCells can't be used anymore as a
		//normal cloud (as it's 'associated cloud' has been deleted).
		//Only its indexes are valid! (they are corresponding to octree cells)
		delete theCellCenters;
		theCellCenters = 0;
	}

	if (visibleCells)
	{
		//DGM: we generate a new cloud now, instead of playing with the points visiblity! (too confusing for the user)
		/*if (!cloud->isVisibilityTableInstantiated() && !cloud->resetVisibilityArray())
		{
			m_app->dispToConsole("Visibility array allocation failed! (Not enough memory?)",ccMainAppInterface::ERR_CONSOLE_MESSAGE);
			return;
		}

		ccPointCloud::VisibilityTableType* pointsVisibility = cloud->getTheVisibilityArray();
		assert(pointsVisibility);
		pointsVisibility->fill(POINT_HIDDEN);
		//*/

		CCLib::ReferenceCloud visiblePoints(theOctree->associatedCloud());

		unsigned visiblePointCount = 0;
		unsigned visibleCellsCount = visibleCells->size();

		CCLib::DgmOctree::cellIndexesContainer cellIndexes;
		if (!theOctree->getCellIndexes(static_cast<unsigned char>(octreeLevel), cellIndexes))
		{
			m_app->dispToConsole("Couldn't fetch the list of octree cell indexes! (Not enough memory?)",ccMainAppInterface::ERR_CONSOLE_MESSAGE);
			delete visibleCells;
			return;
		}

		for (unsigned i=0; i<visibleCellsCount; ++i)
		{
			//cell index
			unsigned index = visibleCells->getPointGlobalIndex(i);

			//points in this cell...
			CCLib::ReferenceCloud Yk(theOctree->associatedCloud());
			theOctree->getPointsInCellByCellIndex(&Yk,cellIndexes[index],static_cast<unsigned char>(octreeLevel));
			//...are all visible
			/*unsigned count = Yk.size();
			for (unsigned j=0;j<count;++j)
				pointsVisibility->setValue(Yk.getPointGlobalIndex(j),POINT_VISIBLE);
			visiblePointCount += count;
			//*/
			if (!visiblePoints.add(Yk))
			{
				m_app->dispToConsole("Not enough memory!",ccMainAppInterface::ERR_CONSOLE_MESSAGE);
				delete visibleCells;
				return;
			}
		}

		delete visibleCells;
		visibleCells = 0;

		m_app->dispToConsole(QString("[HPR] Visible points: %1").arg(visiblePointCount));

		if (visiblePoints.size() == cloud->size())
		{
			m_app->dispToConsole("No points were removed!",ccMainAppInterface::ERR_CONSOLE_MESSAGE);
		}
		else
		{
			//create cloud from visibility selection
			ccPointCloud* newCloud = cloud->partialClone(&visiblePoints);
			if (newCloud)
			{			
				newCloud->setDisplay(newCloud->getDisplay());
				newCloud->setVisible(true);
				newCloud->setName(cloud->getName()+QString(".visible_points"));
				cloud->setEnabled(false);

				//add associated viewport object
				cc2DViewportObject* viewportObject = new cc2DViewportObject(QString("Viewport"));
				viewportObject->setParameters(params);
				newCloud->addChild(viewportObject);

				m_app->addToDB(newCloud);
				newCloud->redrawDisplay();
			}
			else
			{
				m_app->dispToConsole("Not enough memory!",ccMainAppInterface::ERR_CONSOLE_MESSAGE);
			}
		}
	}

	//currently selected entities appearance may have changed!
	m_app->refreshAll();
}
Ejemplo n.º 9
0
bool ccKdTreeForFacetExtraction::FuseCells(	ccKdTree* kdTree,
											double maxError,
											CCLib::DistanceComputationTools::ERROR_MEASURES errorMeasure,
											double maxAngle_deg,
											PointCoordinateType overlapCoef/*=1*/,
											bool closestFirst/*=true*/,
											CCLib::GenericProgressCallback* progressCb/*=0*/)
{
	if (!kdTree)
		return false;

	ccGenericPointCloud* associatedGenericCloud = kdTree->associatedGenericCloud();
	if (!associatedGenericCloud || !associatedGenericCloud->isA(CC_TYPES::POINT_CLOUD) || maxError < 0.0)
		return false;

	//get leaves
	std::vector<ccKdTree::Leaf*> leaves;
	if (!kdTree->getLeaves(leaves) || leaves.empty())
		return false;

	//progress notification
	CCLib::NormalizedProgress nProgress(progressCb, static_cast<unsigned>(leaves.size()));
	if (progressCb)
	{
		progressCb->update(0);
		if (progressCb->textCanBeEdited())
		{
			progressCb->setMethodTitle("Fuse Kd-tree cells");
			progressCb->setInfo(qPrintable(QString("Cells: %1\nMax error: %2").arg(leaves.size()).arg(maxError)));
		}
		progressCb->start();
	}

	ccPointCloud* pc = static_cast<ccPointCloud*>(associatedGenericCloud);

	//sort cells based on their population size (we start by the biggest ones)
	SortAlgo(leaves.begin(), leaves.end(), DescendingLeafSizeComparison);

	//set all 'userData' to -1 (i.e. unfused cells)
	{
		for (size_t i=0; i<leaves.size(); ++i)
		{
			leaves[i]->userData = -1;
			//check by the way that the plane normal is unit!
			assert(static_cast<double>(fabs(CCVector3(leaves[i]->planeEq).norm2()) - 1.0) < 1.0e-6);
		}
	}

	// cosine of the max angle between fused 'planes'
	const double c_minCosNormAngle = cos(maxAngle_deg * CC_DEG_TO_RAD);

	//fuse all cells, starting from the ones with the best error
	const int unvisitedNeighborValue = -1;
	bool cancelled = false;
	int macroIndex = 1; //starts at 1 (0 is reserved for cells already above the max error)
	{
		for (size_t i=0; i<leaves.size(); ++i)
		{
			ccKdTree::Leaf* currentCell = leaves[i];
			if (currentCell->error >= maxError)
				currentCell->userData = 0; //0 = special group for cells already above the user defined threshold!

			//already fused?
			if (currentCell->userData != -1)
			{
				if (progressCb && !nProgress.oneStep()) //process canceled by user
				{
					cancelled = true;
					break;
				}
				continue;
			}

			//we create a new "macro cell" index
			currentCell->userData = macroIndex++;

			//we init the current set of 'fused' points with the cell's points
			CCLib::ReferenceCloud* currentPointSet = currentCell->points;
			//get current fused set centroid and normal
			CCVector3 currentCentroid = *CCLib::Neighbourhood(currentPointSet).getGravityCenter();
			CCVector3 currentNormal(currentCell->planeEq);

			//visited neighbors
			ccKdTree::LeafSet visitedNeighbors;
			//set of candidates
			std::list<Candidate> candidates;

			//we are going to iteratively look for neighbor cells that could be fused to this one
			ccKdTree::LeafVector cellsToTest;
			cellsToTest.push_back(currentCell);

			if (progressCb && !nProgress.oneStep()) //process canceled by user
			{
				cancelled = true;
				break;
			}

			while (!cellsToTest.empty() || !candidates.empty())
			{
				//get all neighbors around the 'waiting' cell(s)
				if (!cellsToTest.empty())
				{
					ccKdTree::LeafSet neighbors;
					while (!cellsToTest.empty())
					{
						if (!kdTree->getNeighborLeaves(cellsToTest.back(), neighbors, &unvisitedNeighborValue)) //we only consider unvisited cells!
						{
							//an error occurred
							return false;
						}
						cellsToTest.pop_back();
					}

					//add those (new) neighbors to the 'visitedNeighbors' set
					//and to the candidates set by the way if they are not yet there
					for (ccKdTree::LeafSet::iterator it=neighbors.begin(); it != neighbors.end(); ++it)
					{
						ccKdTree::Leaf* neighbor = *it;
						std::pair<ccKdTree::LeafSet::iterator,bool> ret = visitedNeighbors.insert(neighbor);
						//neighbour not already in the set?
						if (ret.second)
						{
							//we create the corresponding candidate
							try
							{
								candidates.push_back(Candidate(neighbor));
							}
							catch (const std::bad_alloc&)
							{
								//not enough memory!
								ccLog::Warning("[ccKdTreeForFacetExtraction] Not enough memory!");
								return false;
							}
						}
					}
				}

				//is there remaining candidates?
				if (!candidates.empty())
				{
					//update the set of candidates
					if (closestFirst && candidates.size() > 1)
					{
						for (std::list<Candidate>::iterator it = candidates.begin(); it !=candidates.end(); ++it)
							it->dist = (it->centroid-currentCentroid).norm2();

						//sort candidates by their distance
						candidates.sort(CandidateDistAscendingComparison);
					}
					
					//we will keep track of the best fused 'couple' at each pass
					std::list<Candidate>::iterator bestIt = candidates.end();
					CCLib::ReferenceCloud* bestFused = 0;
					CCVector3 bestNormal(0,0,0);
					double bestError = -1.0;

					unsigned skipCount = 0;
					for (std::list<Candidate>::iterator it = candidates.begin(); it != candidates.end(); /*++it*/)
					{
						assert(it->leaf && it->leaf->points);
						assert(currentPointSet->getAssociatedCloud() == it->leaf->points->getAssociatedCloud());

						//if the leaf orientation is too different
						if (fabs(CCVector3(it->leaf->planeEq).dot(currentNormal)) < c_minCosNormAngle)
						{
							it = candidates.erase(it);
							//++it;
							//++skipCount;
							continue;
						}

						//compute the minimum distance between the candidate centroid and the 'currentPointSet'
						PointCoordinateType minDistToMainSet = 0.0;
						{
							for (unsigned j=0; j<currentPointSet->size(); ++j)
							{
								const CCVector3* P = currentPointSet->getPoint(j);
								PointCoordinateType d2 = (*P-it->centroid).norm2();
								if (d2 < minDistToMainSet || j == 0)
									minDistToMainSet = d2;
							}
							minDistToMainSet = sqrt(minDistToMainSet);
						}
						
						//if the leaf is too far
						if (it->radius < minDistToMainSet / overlapCoef)
						{
							++it;
							++skipCount;
							continue;
						}

						//fuse the main set with the current candidate
						CCLib::ReferenceCloud* fused = new CCLib::ReferenceCloud(*currentPointSet);
						if (!fused->add(*(it->leaf->points)))
						{
							//not enough memory!
							ccLog::Warning("[ccKdTreeForFacetExtraction] Not enough memory!");
							delete fused;
							if (currentPointSet != currentCell->points)
								delete currentPointSet;
							return false;
						}

						//fit a plane and estimate the resulting error
						double error = -1.0;
						const PointCoordinateType* planeEquation = CCLib::Neighbourhood(fused).getLSPlane();
						if (planeEquation)
							error = CCLib::DistanceComputationTools::ComputeCloud2PlaneDistance(fused, planeEquation, errorMeasure);

						if (error < 0.0 || error > maxError)
						{
							//candidate is rejected
							it = candidates.erase(it);
						}
						else
						{
							//otherwise we keep track of the best one!
							if (bestError < 0.0 || error < bestError)
							{
								bestIt = it;
								bestError = error;
								if (bestFused)
									delete bestFused;
								bestFused = fused;
								bestNormal = CCVector3(planeEquation);
								fused = 0;
								
								if (closestFirst)
									break; //if we have found a good candidate, we stop here (closest first ;)
							}
							++it;
						}

						if (fused)
						{
							delete fused;
							fused = 0;
						}
					}

					//we have a (best) candidate for this pass?
					if (bestIt != candidates.end())
					{
						assert(bestFused && bestError >= 0.0);
						if (currentPointSet != currentCell->points)
							delete currentPointSet;
						currentPointSet = bestFused;
						{
							//update infos
							CCLib::Neighbourhood N(currentPointSet);
							//currentCentroid = *N.getGravityCenter(); //if we update it, the search will naturally shift along one dimension!
							//currentNormal = bestNormal; //same thing here for normals
						}

						bestIt->leaf->userData = currentCell->userData;
						//bestIt->leaf->userData = macroIndex++; //FIXME TEST

						//we will test this cell's neighbors as well
						cellsToTest.push_back(bestIt->leaf);

						if (progressCb && !nProgress.oneStep()) //process canceled by user
						{
							//premature end!
							candidates.clear();
							cellsToTest.clear();
							cancelled = true;
							break;
						}
						QApplication::processEvents();

						//we also remove it from the candidates list
						candidates.erase(bestIt);
					}

					if (skipCount == candidates.size() && cellsToTest.empty())
					{
						//only far leaves remain...
						candidates.clear();
					}

				}
			
			} //no more candidates or cells to test

			//end of the fusion process for the current leaf
			if (currentPointSet != currentCell->points)
				delete currentPointSet;
			currentPointSet = 0;

			if (cancelled)
				break;
		}
	}

	//convert fused indexes to SF
	if (!cancelled)
	{
		pc->enableScalarField();

		for (size_t i=0; i<leaves.size(); ++i)
		{
			CCLib::ReferenceCloud* subset = leaves[i]->points;
			if (subset)
			{
				ScalarType scalar = (ScalarType)leaves[i]->userData;
				if (leaves[i]->userData <= 0) //for unfused cells, we create new individual groups
					scalar = static_cast<ScalarType>(macroIndex++);
					//scalar = NAN_VALUE; //FIXME TEST
				for (unsigned j=0; j<subset->size(); ++j)
					subset->setPointScalarValue(j,scalar);
			}
		}

		//pc->setCurrentDisplayedScalarField(sfIdx);
	}

	return !cancelled;
}
Ejemplo n.º 10
0
ccHObject* qFacets::createFacets(	ccPointCloud* cloud,
								CCLib::ReferenceCloudContainer& components,
								unsigned minPointsPerComponent,
								double maxEdgeLength,
								bool randomColors,
								bool& error)
{
	if (!cloud)
		return 0;

	//we create a new group to store all input CCs as 'facets'
	ccHObject* ccGroup = new ccHObject(cloud->getName()+QString(" [facets]"));
	ccGroup->setDisplay(cloud->getDisplay());
	ccGroup->setVisible(true);

	bool cloudHasNormal = cloud->hasNormals();

	//number of input components
	size_t componentCount = components.size();

	//progress notification
	ccProgressDialog pDlg(true,m_app->getMainWindow());
	pDlg.setMethodTitle("Facets creation");
	pDlg.setInfo(qPrintable(QString("Components: %1").arg(componentCount)));
	pDlg.setMaximum(static_cast<int>(componentCount));
	pDlg.show();
	QApplication::processEvents();

	//for each component
	error = false;
	while (!components.empty())
	{
		CCLib::ReferenceCloud* compIndexes = components.back();
		components.pop_back();

		//if it has enough points
		if (compIndexes && compIndexes->size() >= minPointsPerComponent)
		{
			ccPointCloud* facetCloud = cloud->partialClone(compIndexes);
			if (!facetCloud)
			{
				//not enough  memory!
				error = true;
				delete facetCloud;
				facetCloud = 0;
			}
			else
			{
				ccFacet* facet = ccFacet::Create(facetCloud,static_cast<PointCoordinateType>(maxEdgeLength),true);
				if (facet)
				{
					QString facetName = QString("facet %1 (rms=%2)").arg(ccGroup->getChildrenNumber()).arg(facet->getRMS());
					facet->setName(facetName);
					if (facet->getPolygon())
					{
						facet->getPolygon()->enableStippling(false);
						facet->getPolygon()->showNormals(false);
					}
					if (facet->getContour())
					{
						facet->getContour()->setGlobalScale(facetCloud->getGlobalScale());
						facet->getContour()->setGlobalShift(facetCloud->getGlobalShift());
					}

					//check the facet normal sign
					if (cloudHasNormal)
					{
						CCVector3 N = ccOctree::ComputeAverageNorm(compIndexes,cloud);

						if (N.dot(facet->getNormal()) < 0)
							facet->invertNormal();
					}

#ifdef _DEBUG
					facet->showNormalVector(true);
#endif

					//shall we colorize it with a random color?
					ccColor::Rgb col, darkCol;
					if (randomColors)
					{
						col = ccColor::Generator::Random();
						assert(c_darkColorRatio <= 1.0);
						darkCol.r = static_cast<ColorCompType>(static_cast<double>(col.r) * c_darkColorRatio);
						darkCol.g = static_cast<ColorCompType>(static_cast<double>(col.g) * c_darkColorRatio);
						darkCol.b = static_cast<ColorCompType>(static_cast<double>(col.b) * c_darkColorRatio);
					}
					else
					{
						//use normal-based HSV coloring
						CCVector3 N = facet->getNormal();
						PointCoordinateType dip, dipDir;
						ccNormalVectors::ConvertNormalToDipAndDipDir(N, dip, dipDir);
						FacetsClassifier::GenerateSubfamilyColor(col,dip,dipDir,0,1,&darkCol);
					}
					facet->setColor(col);
					if (facet->getContour())
					{
						facet->getContour()->setColor(darkCol);
						facet->getContour()->setWidth(2);
					}
					ccGroup->addChild(facet);
				}
			}

			if (compIndexes)
				delete compIndexes;
			compIndexes = 0;
		}

		pDlg.setValue(static_cast<int>(componentCount-components.size()));
		//QApplication::processEvents();
	}

	if (ccGroup->getChildrenNumber() == 0)
	{
		delete ccGroup;
		ccGroup = 0;
	}

	return ccGroup;
}