Example #1
0
bool MyFusion::train (ssi_size_t n_models,
	IModel **models,
	ISamples &samples) {

	if (samples.getSize () == 0) {
		ssi_wrn ("empty sample list");
		return false;
	}

	if (isTrained ()) {
		ssi_wrn ("already trained");
		return false;
	}

	ssi_size_t n_streams = samples.getStreamSize ();

	if (n_streams != n_models) {
		ssi_err ("#models (%u) differs from #streams (%u)", n_models, n_streams);
	}

	for (ssi_size_t n_model = 0; n_model < n_models; n_model++) {
		if (!models[n_model]->isTrained ()) {
			models[n_model]->train (samples, n_model);
		}
	}

	_is_trained = true;

	return true;
}
Example #2
0
bool MajorityVoting::train (ssi_size_t n_models,
	IModel **models,
	ISamples &samples) {

	if (samples.getSize () == 0) {
		ssi_wrn ("empty sample list");
		return false;
	}

	if (samples.getStreamSize () != n_models) {
		ssi_wrn ("#models (%u) differs from #streams (%u)", n_models, samples.getStreamSize ());
		return false;
	}

	if (isTrained ()) {
		ssi_wrn ("already trained");
		return false;
	} 

	_n_streams = samples.getStreamSize ();
	_n_classes = samples.getClassSize ();
	_n_models  = n_models;

	if (samples.hasMissingData ()) {
		ISMissingData samples_h (&samples);
		for (ssi_size_t n_model = 0; n_model < n_models; n_model++) {
			if (!models[n_model]->isTrained ()) {
				samples_h.setStream (n_model);
				models[n_model]->train (samples_h, n_model);
			}
		}
	}
	else{
		for (ssi_size_t n_model = 0; n_model < n_models; n_model++) {
			if (!models[n_model]->isTrained ()) { models[n_model]->train (samples, n_model); }
		}		
	}
	
	return true;
}
Example #3
0
bool SimpleFusion::train (ssi_size_t n_models,
	IModel **models,
	ISamples &samples) {

	if (samples.getSize () == 0) {
		ssi_wrn ("empty sample list");
		return false;
	}

	if (isTrained ()) {
		ssi_wrn ("already trained");
		return false;
	}

	ssi_size_t n_streams = samples.getStreamSize ();

	if (n_streams != 1 && n_streams != n_models) {
		ssi_err ("#models (%u) differs from #streams (%u)", n_models, n_streams);
	}

	if (samples.hasMissingData ()) {
		ISMissingData samples_h (&samples);
		for (ssi_size_t n_model = 0; n_model < n_models; n_model++) {
			if (!models[n_model]->isTrained ()) {
				samples_h.setStream(n_streams == 1 ? 0 : n_model);
				models[n_model]->train (samples_h, n_model);
			}
		}
	} else {
		for (ssi_size_t n_model = 0; n_model < n_models; n_model++) {
			if (!models[n_model]->isTrained ()) {		
				models[n_model]->train(samples, n_streams == 1 ? 0 : n_model);
			}
		}
	}

	_is_trained = true;

	return true;
}
Example #4
0
bool FileSamplesOut::open (ISamples &data,
	const ssi_char_t *path,
	File::TYPE type, 
	File::VERSION version) {

	ssi_msg (SSI_LOG_LEVEL_DETAIL, "open files '%s'", path);	

	_version = version;

	if (_version < File::V2) {
		ssi_wrn ("version < V2 not supported");
		return false;
	}

	if (_file_info || _file_data) {
		ssi_wrn ("samples already open");
		return false;
	}

	_n_users = data.getUserSize ();
	_users = new ssi_char_t *[_n_users];
	_n_per_user = new ssi_size_t[_n_users];
	for (ssi_size_t i = 0; i < _n_users; i++) {
		_users[i] = ssi_strcpy (data.getUserName (i));
		_n_per_user[i] = 0;
	}
	_n_classes = data.getClassSize ();
	_classes = new ssi_char_t *[_n_classes];
	_n_per_class = new ssi_size_t[_n_classes];
	for (ssi_size_t i = 0; i < _n_classes; i++) {
		_classes[i] = ssi_strcpy (data.getClassName (i));
		_n_per_class[i] = 0;
	}
	
	_n_streams = data.getStreamSize ();
	_streams = new ssi_stream_t[_n_streams];
	for (ssi_size_t i = 0; i < _n_streams; i++) {
		ssi_stream_t s = data.getStream (i);
		ssi_stream_init (_streams[i], 0, s.dim, s.byte, s.type, s.sr, 0);
	}

	_has_missing_data = false;

	if (path == 0 || path[0] == '\0') {
		_console = true;
	}

	if (_console) {
		
		_file_data = File::CreateAndOpen (type, File::WRITE, "");
		if (!_file_data) {
			ssi_wrn ("could not open console");
			return false;
		}

	} else {

		FilePath fp (path);
		ssi_char_t *path_info = 0;
		if (strcmp (fp.getExtension (), SSI_FILE_TYPE_SAMPLES) != 0) {
			path_info = ssi_strcat (path, SSI_FILE_TYPE_SAMPLES);
		} else {
			path_info = ssi_strcpy (path);
		}	
		_path = ssi_strcpy (path_info);

		_file_info = File::CreateAndOpen (File::ASCII, File::WRITE, path_info);
		if (!_file_info) {
			ssi_wrn ("could not open info file '%s'", path_info);
			return false;
		}

		ssi_sprint (_string, "<?xml version=\"1.0\" ?>\n<samples ssi-v=\"%d\">", version);
		_file_info->writeLine (_string);
	
		ssi_char_t *path_data = ssi_strcat (path_info, "~");			
		_file_data = File::CreateAndOpen (type, File::WRITE, path_data);
		if (!_file_data) {
			ssi_wrn ("could not open data file '%s'", path_data);
			return false;
		}

		if (_version == File::V3) {

			_file_streams = new FileStreamOut[_n_streams];
			ssi_char_t string[SSI_MAX_CHAR];
			for (ssi_size_t i = 0; i < _n_streams; i++) {
				ssi_sprint (string, "%s.#%u", path_info, i);
				_file_streams[i].open (_streams[i], string, type);				
			}

		}

		delete[] path_info;
		delete[] path_data;

	}

	return true;
};
Example #5
0
bool FeatureFusion::train (ssi_size_t n_models,
	IModel **models,
	ISamples &samples) {

	if (samples.getSize () == 0) {
		ssi_wrn ("empty sample list");
		return false;
	}

	if (isTrained ()) {
		ssi_wrn ("already trained");
		return false;
	}

	_n_streams = samples.getStreamSize ();
	_n_classes = samples.getClassSize ();
	_n_models  = n_models;

	//initialize weights
	ssi_real_t **weights = new ssi_real_t*[n_models];
	for (ssi_size_t n_model = 0; n_model < n_models; n_model++) {
		weights[n_model] = new ssi_real_t[_n_classes+1];		
	}

	if (samples.hasMissingData ()) {

		_handle_md = true;

		ISMissingData samples_h (&samples);
		Evaluation eval;
		
		if (ssi_log_level >= SSI_LOG_LEVEL_DEBUG) {
			ssi_print("\nMissing data detected.\n");
		}
		
		//models[0] is featfuse_model, followed by singlechannel_models
		ISMergeDim ffusionSamples (&samples);
		ISMissingData ffusionSamples_h (&ffusionSamples);
		ffusionSamples_h.setStream(0);
		if (!models[0]->isTrained ()) { models[0]->train (ffusionSamples_h, 0); }

		if (ssi_log_level >= SSI_LOG_LEVEL_DEBUG) {
			eval.eval (*models[0], ffusionSamples_h, 0);
			eval.print();
		}
		//dummy weights for fused model
		for (ssi_size_t n_class = 0; n_class < _n_classes; n_class++) {
			weights[0][n_class] = 0.0f;
		}		
		weights[0][_n_classes] = 0.0f;	
		
		for (ssi_size_t n_model = 1; n_model < n_models; n_model++) {
			
			if (!models[n_model]->isTrained ()) {
				samples_h.setStream (n_model - 1);
				models[n_model]->train (samples_h, n_model - 1);
			}

			eval.eval (*models[n_model], samples_h, n_model - 1);

			if (ssi_log_level >= SSI_LOG_LEVEL_DEBUG) {
				eval.print();
			}

			for (ssi_size_t n_class = 0; n_class < _n_classes; n_class++) {
				weights[n_model][n_class] = eval.get_class_prob (n_class);
			}		
			weights[n_model][_n_classes] = eval.get_classwise_prob ();	
		}

		//calculate fillers
		_filler = new ssi_size_t[_n_streams];
		for (ssi_size_t n_fill = 0; n_fill < _n_streams; n_fill++) {
			_filler[n_fill] = 1;
			ssi_real_t filler_weight = weights[1][_n_classes];
			for (ssi_size_t n_model = 2; n_model < n_models; n_model++) {
				if (filler_weight < weights[n_model][_n_classes]) {
					_filler[n_fill] = n_model;
					filler_weight = weights[n_model][_n_classes];
				}
			}
			weights[_filler[n_fill]][_n_classes] = 0.0f;
		}
		if (ssi_log_level >= SSI_LOG_LEVEL_DEBUG) {
			ssi_print("\nfiller:\n");
			for (ssi_size_t n_model = 0; n_model < _n_streams; n_model++) {
				ssi_print("%d ", _filler[n_model]);
			}ssi_print("\n");
		}
	
	}
	else{

		_handle_md = false;

		if (ssi_log_level >= SSI_LOG_LEVEL_DEBUG) {
			ssi_print("\nNo missing data detected.\n");
		}
		ISMergeDim ffusionSamples (&samples);
		if (!models[0]->isTrained ()) { models[0]->train (ffusionSamples, 0); }
		//dummy
		_filler = new ssi_size_t[_n_streams];
		for (ssi_size_t n_fill = 0; n_fill < _n_streams; n_fill++) {
			_filler[n_fill] = 0;
		}
	}

	if (weights) {
		for (ssi_size_t n_model = 0; n_model < _n_models; n_model++) {
			delete[] weights[n_model];
		}
		delete[] weights;
		weights = 0;
	}

	return true;
}
bool WeightedMajorityVoting::train (ssi_size_t n_models,
	IModel **models,
	ISamples &samples) {

	if (samples.getSize () == 0) {
		ssi_wrn ("empty sample list");
		return false;
	}

	if (samples.getStreamSize () != n_models) {
		ssi_wrn ("#models (%u) differs from #streams (%u)", n_models, samples.getStreamSize ());
		return false;
	}

	if (isTrained ()) {
		ssi_wrn ("already trained");
		return false;
	}  

	_n_streams = samples.getStreamSize ();
	_n_classes = samples.getClassSize ();
	_n_models  = n_models;

	_weights = new ssi_real_t*[n_models];
	for (ssi_size_t n_model = 0; n_model < n_models; n_model++) {
		_weights[n_model] = new ssi_real_t[_n_classes+1];		
	}

	if (samples.hasMissingData ()) {
		ISMissingData samples_h (&samples);
		Evaluation eval;
		for (ssi_size_t n_model = 0; n_model < n_models; n_model++) {
			if (!models[n_model]->isTrained ()) {
				samples_h.setStream (n_model);
				models[n_model]->train (samples_h, n_model);
			}
			eval.eval (*models[n_model], samples_h, n_model);
			for (ssi_size_t n_class = 0; n_class < _n_classes; n_class++) {
				_weights[n_model][n_class] = eval.get_class_prob (n_class);
			}		
			_weights[n_model][_n_classes] = eval.get_classwise_prob ();	
		}
	}
	else{
		Evaluation eval;
		for (ssi_size_t n_model = 0; n_model < n_models; n_model++) {
			if (!models[n_model]->isTrained ()) { models[n_model]->train (samples, n_model); }
			eval.eval (*models[n_model], samples, n_model);
			for (ssi_size_t n_class = 0; n_class < _n_classes; n_class++) {
				_weights[n_model][n_class] = eval.get_class_prob (n_class);
			}		
			_weights[n_model][_n_classes] = eval.get_classwise_prob ();
		}		
	}

	if (ssi_log_level >= SSI_LOG_LEVEL_DEBUG) {
		ssi_print("\nClassifier Weights: \n");
		for (ssi_size_t n_model = 0; n_model < n_models; n_model++) {
			for (ssi_size_t n_class = 0; n_class < _n_classes; n_class++) {
				ssi_print ("%f ", _weights[n_model][n_class]);
			}
			ssi_print ("%f\n", _weights[n_model][_n_classes]);
		}
	}

	return true;
}