Exemplo n.º 1
0
  /// Robust fitting of the HOMOGRAPHY matrix
  bool Robust_estimation(
    const sfm::SfM_Data * sfm_data,
    const shared_ptr<sfm::Regions_Provider> & regions_provider,
    const Pair pairIndex,
    const matching::IndMatches & vec_PutativeMatches,
    matching::IndMatches & geometric_inliers)
  {
    using namespace openMVG;
    using namespace openMVG::robust;
    geometric_inliers.clear();

    // Get back corresponding view index
    const IndexT iIndex = pairIndex.first;
    const IndexT jIndex = pairIndex.second;

    //--
    // Get corresponding point regions arrays
    //--

    Mat xI,xJ;
    MatchesPairToMat(pairIndex, vec_PutativeMatches, sfm_data, regions_provider, xI, xJ);

    //--
    // Robust estimation
    //--

    // Define the AContrario adapted Homography matrix solver
    typedef ACKernelAdaptor<
      openMVG::homography::kernel::FourPointSolver,
      openMVG::homography::kernel::AsymmetricError,
      UnnormalizerI,
      Mat3>
      KernelType;

    KernelType kernel(
      xI, sfm_data->GetViews().at(iIndex)->ui_width, sfm_data->GetViews().at(iIndex)->ui_height,
      xJ, sfm_data->GetViews().at(jIndex)->ui_width, sfm_data->GetViews().at(jIndex)->ui_height,
      false); // configure as point to point error model.

    // Robustly estimate the Homography matrix with A Contrario ransac
    const double upper_bound_precision = Square(m_dPrecision);
    std::vector<size_t> vec_inliers;
    const std::pair<double,double> ACRansacOut =
      ACRANSAC(kernel, vec_inliers, m_stIteration, &m_H, upper_bound_precision);

    if (vec_inliers.size() > KernelType::MINIMUM_SAMPLES *2.5)  {
      m_dPrecision_robust = ACRansacOut.first;
      // update geometric_inliers
      geometric_inliers.reserve(vec_inliers.size());
      for ( const size_t & index : vec_inliers)  {
        geometric_inliers.push_back( vec_PutativeMatches[index] );
      }
      return true;
    }
    else  {
      vec_inliers.clear();
      return false;
    }
    return true;
  }
Exemplo n.º 2
0
  bool Robust_estimation(
    const sfm::SfM_Data * sfm_data,
    const std::shared_ptr<Regions_or_Features_ProviderT> & regions_provider,
    const Pair pairIndex,
    const matching::IndMatches & vec_PutativeMatches,
    matching::IndMatches & geometric_inliers)
  {
    using namespace openMVG;
    using namespace openMVG::robust;
    geometric_inliers.clear();

    // Get back corresponding view index
    const IndexT iIndex = pairIndex.first;
    const IndexT jIndex = pairIndex.second;

    //--
    // Reject pair with missing Intrinsic information
    //--

    const sfm::View * view_I = sfm_data->views.at(iIndex).get();
    const sfm::View * view_J = sfm_data->views.at(jIndex).get();

     // Check that valid cameras can be retrieved for the pair of views
    const cameras::IntrinsicBase * cam_I =
      sfm_data->GetIntrinsics().count(view_I->id_intrinsic) ?
        sfm_data->GetIntrinsics().at(view_I->id_intrinsic).get() : nullptr;
    const cameras::IntrinsicBase * cam_J =
      sfm_data->GetIntrinsics().count(view_J->id_intrinsic) ?
        sfm_data->GetIntrinsics().at(view_J->id_intrinsic).get() : nullptr;

    if (!cam_I || !cam_J)
      return false;
    if ( !isPinhole(cam_I->getType()) || !isPinhole(cam_J->getType()))
      return false;

    //--
    // Get corresponding point regions arrays
    //--

    Mat xI,xJ;
    MatchesPairToMat(pairIndex, vec_PutativeMatches, sfm_data, regions_provider, xI, xJ);

    //--
    // Robust estimation
    //--

    // Define the AContrario adapted Essential matrix solver
    typedef ACKernelAdaptorEssential<
        openMVG::essential::kernel::FivePointKernel,
        openMVG::fundamental::kernel::EpipolarDistanceError,
        UnnormalizerT,
        Mat3>
        KernelType;

    const cameras::Pinhole_Intrinsic * ptrPinhole_I = (const cameras::Pinhole_Intrinsic*)(cam_I);
    const cameras::Pinhole_Intrinsic * ptrPinhole_J = (const cameras::Pinhole_Intrinsic*)(cam_J);

    KernelType kernel(
      xI, sfm_data->GetViews().at(iIndex)->ui_width, sfm_data->GetViews().at(iIndex)->ui_height,
      xJ, sfm_data->GetViews().at(jIndex)->ui_width, sfm_data->GetViews().at(jIndex)->ui_height,
      ptrPinhole_I->K(), ptrPinhole_J->K());

    // Robustly estimate the Essential matrix with A Contrario ransac
    const double upper_bound_precision = Square(m_dPrecision);
    std::vector<size_t> vec_inliers;
    const std::pair<double,double> ACRansacOut =
      ACRANSAC(kernel, vec_inliers, m_stIteration, &m_E, upper_bound_precision);

    if (vec_inliers.size() > KernelType::MINIMUM_SAMPLES *2.5)  {
      m_dPrecision_robust = ACRansacOut.first;
      // update geometric_inliers
      geometric_inliers.reserve(vec_inliers.size());
      for ( const size_t & index : vec_inliers)  {
        geometric_inliers.push_back( vec_PutativeMatches[index] );
      }
      return true;
    }
    else  {
      vec_inliers.clear();
      return false;
    }
  }