Mercurial > hg > svcore
view transform/FeatureExtractionModelTransformer.cpp @ 527:3c5570e3d9c5
* Fix crash in SimpleSPARQLQuery
* Fix failure to add images from local files
author | Chris Cannam |
---|---|
date | Thu, 15 Jan 2009 18:20:40 +0000 |
parents | b6dc6c7f402c |
children | 55ad231c9db7 |
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/* -*- c-basic-offset: 4 indent-tabs-mode: nil -*- vi:set ts=8 sts=4 sw=4: */ /* Sonic Visualiser An audio file viewer and annotation editor. Centre for Digital Music, Queen Mary, University of London. This file copyright 2006 Chris Cannam and QMUL. This program is free software; you can redistribute it and/or modify it under the terms of the GNU General Public License as published by the Free Software Foundation; either version 2 of the License, or (at your option) any later version. See the file COPYING included with this distribution for more information. */ #include "FeatureExtractionModelTransformer.h" #include "plugin/FeatureExtractionPluginFactory.h" #include "plugin/PluginXml.h" #include <vamp-hostsdk/Plugin.h> #include "data/model/Model.h" #include "base/Window.h" #include "base/Exceptions.h" #include "data/model/SparseOneDimensionalModel.h" #include "data/model/SparseTimeValueModel.h" #include "data/model/EditableDenseThreeDimensionalModel.h" #include "data/model/DenseTimeValueModel.h" #include "data/model/NoteModel.h" #include "data/model/RegionModel.h" #include "data/model/FFTModel.h" #include "data/model/WaveFileModel.h" #include "TransformFactory.h" #include <iostream> FeatureExtractionModelTransformer::FeatureExtractionModelTransformer(Input in, const Transform &transform) : ModelTransformer(in, transform), m_plugin(0), m_descriptor(0), m_outputFeatureNo(0) { // std::cerr << "FeatureExtractionModelTransformer::FeatureExtractionModelTransformer: plugin " << pluginId.toStdString() << ", outputName " << m_transform.getOutput().toStdString() << std::endl; QString pluginId = transform.getPluginIdentifier(); FeatureExtractionPluginFactory *factory = FeatureExtractionPluginFactory::instanceFor(pluginId); if (!factory) { m_message = tr("No factory available for feature extraction plugin id \"%1\" (unknown plugin type, or internal error?)").arg(pluginId); return; } DenseTimeValueModel *input = getConformingInput(); if (!input) { m_message = tr("Input model for feature extraction plugin \"%1\" is of wrong type (internal error?)").arg(pluginId); return; } m_plugin = factory->instantiatePlugin(pluginId, input->getSampleRate()); if (!m_plugin) { m_message = tr("Failed to instantiate plugin \"%1\"").arg(pluginId); return; } TransformFactory::getInstance()->makeContextConsistentWithPlugin (m_transform, m_plugin); TransformFactory::getInstance()->setPluginParameters (m_transform, m_plugin); size_t channelCount = input->getChannelCount(); if (m_plugin->getMaxChannelCount() < channelCount) { channelCount = 1; } if (m_plugin->getMinChannelCount() > channelCount) { m_message = tr("Cannot provide enough channels to feature extraction plugin \"%1\" (plugin min is %2, max %3; input model has %4)") .arg(pluginId) .arg(m_plugin->getMinChannelCount()) .arg(m_plugin->getMaxChannelCount()) .arg(input->getChannelCount()); return; } std::cerr << "Initialising feature extraction plugin with channels = " << channelCount << ", step = " << m_transform.getStepSize() << ", block = " << m_transform.getBlockSize() << std::endl; if (!m_plugin->initialise(channelCount, m_transform.getStepSize(), m_transform.getBlockSize())) { size_t pstep = m_transform.getStepSize(); size_t pblock = m_transform.getBlockSize(); m_transform.setStepSize(0); m_transform.setBlockSize(0); TransformFactory::getInstance()->makeContextConsistentWithPlugin (m_transform, m_plugin); if (m_transform.getStepSize() != pstep || m_transform.getBlockSize() != pblock) { if (!m_plugin->initialise(channelCount, m_transform.getStepSize(), m_transform.getBlockSize())) { m_message = tr("Failed to initialise feature extraction plugin \"%1\"").arg(pluginId); return; } else { m_message = tr("Feature extraction plugin \"%1\" rejected the given step and block sizes (%2 and %3); using plugin defaults (%4 and %5) instead") .arg(pluginId) .arg(pstep) .arg(pblock) .arg(m_transform.getStepSize()) .arg(m_transform.getBlockSize()); } } else { m_message = tr("Failed to initialise feature extraction plugin \"%1\"").arg(pluginId); return; } } if (m_transform.getPluginVersion() != "") { QString pv = QString("%1").arg(m_plugin->getPluginVersion()); if (pv != m_transform.getPluginVersion()) { QString vm = tr("Transform was configured for version %1 of plugin \"%2\", but the plugin being used is version %3") .arg(m_transform.getPluginVersion()) .arg(pluginId) .arg(pv); if (m_message != "") { m_message = QString("%1; %2").arg(vm).arg(m_message); } else { m_message = vm; } } } Vamp::Plugin::OutputList outputs = m_plugin->getOutputDescriptors(); if (outputs.empty()) { m_message = tr("Plugin \"%1\" has no outputs").arg(pluginId); return; } for (size_t i = 0; i < outputs.size(); ++i) { // std::cerr << "comparing output " << i << " name \"" << outputs[i].identifier << "\" with expected \"" << m_transform.getOutput().toStdString() << "\"" << std::endl; if (m_transform.getOutput() == "" || outputs[i].identifier == m_transform.getOutput().toStdString()) { m_outputFeatureNo = i; m_descriptor = new Vamp::Plugin::OutputDescriptor(outputs[i]); break; } } if (!m_descriptor) { m_message = tr("Plugin \"%1\" has no output named \"%2\"") .arg(pluginId) .arg(m_transform.getOutput()); return; } // std::cerr << "FeatureExtractionModelTransformer: output sample type " // << m_descriptor->sampleType << std::endl; int binCount = 1; float minValue = 0.0, maxValue = 0.0; bool haveExtents = false; if (m_descriptor->hasFixedBinCount) { binCount = m_descriptor->binCount; } // std::cerr << "FeatureExtractionModelTransformer: output bin count " // << binCount << std::endl; if (binCount > 0 && m_descriptor->hasKnownExtents) { minValue = m_descriptor->minValue; maxValue = m_descriptor->maxValue; haveExtents = true; } size_t modelRate = input->getSampleRate(); size_t modelResolution = 1; switch (m_descriptor->sampleType) { case Vamp::Plugin::OutputDescriptor::VariableSampleRate: if (m_descriptor->sampleRate != 0.0) { modelResolution = size_t(modelRate / m_descriptor->sampleRate + 0.001); } break; case Vamp::Plugin::OutputDescriptor::OneSamplePerStep: modelResolution = m_transform.getStepSize(); break; case Vamp::Plugin::OutputDescriptor::FixedSampleRate: //!!! SV doesn't actually support display of models that have //!!! different underlying rates together -- so we always set //!!! the model rate to be the input model's rate, and adjust //!!! the resolution appropriately. We can't properly display //!!! data with a higher resolution than the base model at all // modelRate = size_t(m_descriptor->sampleRate + 0.001); if (m_descriptor->sampleRate > input->getSampleRate()) { modelResolution = 1; } else { modelResolution = size_t(input->getSampleRate() / m_descriptor->sampleRate); } break; } bool preDurationPlugin = (m_plugin->getVampApiVersion() < 2); if (binCount == 0 && (preDurationPlugin || !m_descriptor->hasDuration)) { // Anything with no value and no duration is an instant m_output = new SparseOneDimensionalModel(modelRate, modelResolution, false); } else if ((preDurationPlugin && binCount > 1 && (m_descriptor->sampleType == Vamp::Plugin::OutputDescriptor::VariableSampleRate)) || (!preDurationPlugin && m_descriptor->hasDuration)) { // For plugins using the old v1 API without explicit duration, // we treat anything that has multiple bins (i.e. that has the // potential to have value and duration) and a variable sample // rate as a note model, taking its values as pitch, duration // and velocity (if present) respectively. This is the same // behaviour as always applied by SV to these plugins in the // past. // For plugins with the newer API, we treat anything with // duration as either a note model with pitch and velocity, or // a region model. // How do we know whether it's an interval or note model? // What's the essential difference? Is a note model any // interval model using a Hz or "MIDI pitch" scale? There // isn't really a reliable test for "MIDI pitch"... Does a // note model always have velocity? This is a good question // to be addressed by accompanying RDF, but for the moment we // will do the following... bool isNoteModel = false; // Regions have only value (and duration -- we can't extract a // region model from an old-style plugin that doesn't support // duration) if (binCount > 1) isNoteModel = true; // Regions do not have units of Hz (a sweeping assumption!) if (m_descriptor->unit == "Hz") isNoteModel = true; // If we had a "sparse 3D model", we would have the additional // problem of determining whether to use that here (if bin // count > 1). But we don't. if (isNoteModel) { NoteModel *model; if (haveExtents) { model = new NoteModel (modelRate, modelResolution, minValue, maxValue, false); } else { model = new NoteModel (modelRate, modelResolution, false); } model->setScaleUnits(m_descriptor->unit.c_str()); m_output = model; } else { RegionModel *model; if (haveExtents) { model = new RegionModel (modelRate, modelResolution, minValue, maxValue, false); } else { model = new RegionModel (modelRate, modelResolution, false); } model->setScaleUnits(m_descriptor->unit.c_str()); m_output = model; } } else if (binCount == 1 || (m_descriptor->sampleType == Vamp::Plugin::OutputDescriptor::VariableSampleRate)) { // Anything that is not a 1D, note, or interval model and that // has only one value per result must be a sparse time value // model. // Anything that is not a 1D, note, or interval model and that // has a variable sample rate is also treated as a sparse time // value model regardless of its bin count, because we lack a // sparse 3D model. SparseTimeValueModel *model; if (haveExtents) { model = new SparseTimeValueModel (modelRate, modelResolution, minValue, maxValue, false); } else { model = new SparseTimeValueModel (modelRate, modelResolution, false); } model->setScaleUnits(outputs[m_outputFeatureNo].unit.c_str()); m_output = model; } else { // Anything that is not a 1D, note, or interval model and that // has a fixed sample rate and more than one value per result // must be a dense 3D model. EditableDenseThreeDimensionalModel *model = new EditableDenseThreeDimensionalModel (modelRate, modelResolution, binCount, false); if (!m_descriptor->binNames.empty()) { std::vector<QString> names; for (size_t i = 0; i < m_descriptor->binNames.size(); ++i) { names.push_back(m_descriptor->binNames[i].c_str()); } model->setBinNames(names); } m_output = model; } if (m_output) m_output->setSourceModel(input); } FeatureExtractionModelTransformer::~FeatureExtractionModelTransformer() { // std::cerr << "FeatureExtractionModelTransformer::~FeatureExtractionModelTransformer()" << std::endl; delete m_plugin; delete m_descriptor; } DenseTimeValueModel * FeatureExtractionModelTransformer::getConformingInput() { // std::cerr << "FeatureExtractionModelTransformer::getConformingInput: input model is " << getInputModel() << std::endl; DenseTimeValueModel *dtvm = dynamic_cast<DenseTimeValueModel *>(getInputModel()); if (!dtvm) { std::cerr << "FeatureExtractionModelTransformer::getConformingInput: WARNING: Input model is not conformable to DenseTimeValueModel" << std::endl; } return dtvm; } void FeatureExtractionModelTransformer::run() { DenseTimeValueModel *input = getConformingInput(); if (!input) return; if (!m_output) return; while (!input->isReady() && !m_abandoned) { std::cerr << "FeatureExtractionModelTransformer::run: Waiting for input model to be ready..." << std::endl; usleep(500000); } if (m_abandoned) return; size_t sampleRate = input->getSampleRate(); size_t channelCount = input->getChannelCount(); if (m_plugin->getMaxChannelCount() < channelCount) { channelCount = 1; } float **buffers = new float*[channelCount]; for (size_t ch = 0; ch < channelCount; ++ch) { buffers[ch] = new float[m_transform.getBlockSize() + 2]; } size_t stepSize = m_transform.getStepSize(); size_t blockSize = m_transform.getBlockSize(); bool frequencyDomain = (m_plugin->getInputDomain() == Vamp::Plugin::FrequencyDomain); std::vector<FFTModel *> fftModels; if (frequencyDomain) { for (size_t ch = 0; ch < channelCount; ++ch) { FFTModel *model = new FFTModel (getConformingInput(), channelCount == 1 ? m_input.getChannel() : ch, m_transform.getWindowType(), blockSize, stepSize, blockSize, false, StorageAdviser::PrecisionCritical); if (!model->isOK()) { delete model; setCompletion(100); //!!! need a better way to handle this -- previously we were using a QMessageBox but that isn't an appropriate thing to do here either throw AllocationFailed("Failed to create the FFT model for this feature extraction model transformer"); } model->resume(); fftModels.push_back(model); } } long startFrame = m_input.getModel()->getStartFrame(); long endFrame = m_input.getModel()->getEndFrame(); RealTime contextStartRT = m_transform.getStartTime(); RealTime contextDurationRT = m_transform.getDuration(); long contextStart = RealTime::realTime2Frame(contextStartRT, sampleRate); long contextDuration = RealTime::realTime2Frame(contextDurationRT, sampleRate); if (contextStart == 0 || contextStart < startFrame) { contextStart = startFrame; } if (contextDuration == 0) { contextDuration = endFrame - contextStart; } if (contextStart + contextDuration > endFrame) { contextDuration = endFrame - contextStart; } long blockFrame = contextStart; long prevCompletion = 0; setCompletion(0); while (!m_abandoned) { if (frequencyDomain) { if (blockFrame - int(blockSize)/2 > contextStart + contextDuration) break; } else { if (blockFrame >= contextStart + contextDuration) break; } // std::cerr << "FeatureExtractionModelTransformer::run: blockFrame " // << blockFrame << ", endFrame " << endFrame << ", blockSize " // << blockSize << std::endl; long completion = (((blockFrame - contextStart) / stepSize) * 99) / (contextDuration / stepSize); // channelCount is either m_input.getModel()->channelCount or 1 if (frequencyDomain) { for (size_t ch = 0; ch < channelCount; ++ch) { int column = (blockFrame - startFrame) / stepSize; for (size_t i = 0; i <= blockSize/2; ++i) { fftModels[ch]->getValuesAt (column, i, buffers[ch][i*2], buffers[ch][i*2+1]); } } } else { getFrames(channelCount, blockFrame, blockSize, buffers); } if (m_abandoned) break; Vamp::Plugin::FeatureSet features = m_plugin->process (buffers, Vamp::RealTime::frame2RealTime(blockFrame, sampleRate)); if (m_abandoned) break; for (size_t fi = 0; fi < features[m_outputFeatureNo].size(); ++fi) { Vamp::Plugin::Feature feature = features[m_outputFeatureNo][fi]; addFeature(blockFrame, feature); } if (blockFrame == contextStart || completion > prevCompletion) { setCompletion(completion); prevCompletion = completion; } blockFrame += stepSize; } if (!m_abandoned) { Vamp::Plugin::FeatureSet features = m_plugin->getRemainingFeatures(); for (size_t fi = 0; fi < features[m_outputFeatureNo].size(); ++fi) { Vamp::Plugin::Feature feature = features[m_outputFeatureNo][fi]; addFeature(blockFrame, feature); } } setCompletion(100); if (frequencyDomain) { for (size_t ch = 0; ch < channelCount; ++ch) { delete fftModels[ch]; } } } void FeatureExtractionModelTransformer::getFrames(int channelCount, long startFrame, long size, float **buffers) { long offset = 0; if (startFrame < 0) { for (int c = 0; c < channelCount; ++c) { for (int i = 0; i < size && startFrame + i < 0; ++i) { buffers[c][i] = 0.0f; } } offset = -startFrame; size -= offset; if (size <= 0) return; startFrame = 0; } DenseTimeValueModel *input = getConformingInput(); if (!input) return; long got = 0; if (channelCount == 1) { got = input->getData(m_input.getChannel(), startFrame, size, buffers[0] + offset); if (m_input.getChannel() == -1 && input->getChannelCount() > 1) { // use mean instead of sum, as plugin input float cc = float(input->getChannelCount()); for (long i = 0; i < size; ++i) { buffers[0][i + offset] /= cc; } } } else { float **writebuf = buffers; if (offset > 0) { writebuf = new float *[channelCount]; for (int i = 0; i < channelCount; ++i) { writebuf[i] = buffers[i] + offset; } } got = input->getData(0, channelCount-1, startFrame, size, writebuf); if (writebuf != buffers) delete[] writebuf; } while (got < size) { for (int c = 0; c < channelCount; ++c) { buffers[c][got + offset] = 0.0; } ++got; } } void FeatureExtractionModelTransformer::addFeature(size_t blockFrame, const Vamp::Plugin::Feature &feature) { size_t inputRate = m_input.getModel()->getSampleRate(); // std::cerr << "FeatureExtractionModelTransformer::addFeature(" // << blockFrame << ")" << std::endl; int binCount = 1; if (m_descriptor->hasFixedBinCount) { binCount = m_descriptor->binCount; } size_t frame = blockFrame; if (m_descriptor->sampleType == Vamp::Plugin::OutputDescriptor::VariableSampleRate) { if (!feature.hasTimestamp) { std::cerr << "WARNING: FeatureExtractionModelTransformer::addFeature: " << "Feature has variable sample rate but no timestamp!" << std::endl; return; } else { frame = Vamp::RealTime::realTime2Frame(feature.timestamp, inputRate); } } else if (m_descriptor->sampleType == Vamp::Plugin::OutputDescriptor::FixedSampleRate) { if (feature.hasTimestamp) { //!!! warning: sampleRate may be non-integral frame = Vamp::RealTime::realTime2Frame(feature.timestamp, //!!! see comment above when setting up modelResolution and modelRate // lrintf(m_descriptor->sampleRate)); inputRate); } else { frame = m_output->getEndFrame(); } } // Rather than repeat the complicated tests from the constructor // to determine what sort of model we must be adding the features // to, we instead test what sort of model the constructor decided // to create. if (isOutput<SparseOneDimensionalModel>()) { SparseOneDimensionalModel *model = getConformingOutput<SparseOneDimensionalModel>(); if (!model) return; model->addPoint(SparseOneDimensionalModel::Point (frame, feature.label.c_str())); } else if (isOutput<SparseTimeValueModel>()) { SparseTimeValueModel *model = getConformingOutput<SparseTimeValueModel>(); if (!model) return; for (int i = 0; i < feature.values.size(); ++i) { float value = feature.values[i]; QString label = feature.label.c_str(); if (feature.values.size() > 1) { label = QString("[%1] %2").arg(i+1).arg(label); } model->addPoint(SparseTimeValueModel::Point(frame, value, label)); } } else if (isOutput<NoteModel>() || isOutput<RegionModel>()) { int index = 0; float value = 0.0; if (feature.values.size() > index) { value = feature.values[index++]; } float duration = 1; if (feature.hasDuration) { duration = Vamp::RealTime::realTime2Frame(feature.duration, inputRate); } else { if (feature.values.size() > index) { duration = feature.values[index++]; } } if (isOutput<NoteModel>()) { float velocity = 100; if (feature.values.size() > index) { velocity = feature.values[index++]; } if (velocity < 0) velocity = 127; if (velocity > 127) velocity = 127; NoteModel *model = getConformingOutput<NoteModel>(); if (!model) return; model->addPoint(NoteModel::Point(frame, value, // value is pitch lrintf(duration), velocity / 127.f, feature.label.c_str())); } else { RegionModel *model = getConformingOutput<RegionModel>(); if (!model) return; if (feature.hasDuration && !feature.values.empty()) { for (int i = 0; i < feature.values.size(); ++i) { float value = feature.values[i]; QString label = feature.label.c_str(); if (feature.values.size() > 1) { label = QString("[%1] %2").arg(i+1).arg(label); } model->addPoint(RegionModel::Point(frame, value, lrintf(duration), label)); } } else { model->addPoint(RegionModel::Point(frame, value, lrintf(duration), feature.label.c_str())); } } } else if (isOutput<EditableDenseThreeDimensionalModel>()) { DenseThreeDimensionalModel::Column values = feature.values; EditableDenseThreeDimensionalModel *model = getConformingOutput<EditableDenseThreeDimensionalModel>(); if (!model) return; model->setColumn(frame / model->getResolution(), values); } else { std::cerr << "FeatureExtractionModelTransformer::addFeature: Unknown output model type!" << std::endl; } } void FeatureExtractionModelTransformer::setCompletion(int completion) { int binCount = 1; if (m_descriptor->hasFixedBinCount) { binCount = m_descriptor->binCount; } // std::cerr << "FeatureExtractionModelTransformer::setCompletion(" // << completion << ")" << std::endl; if (isOutput<SparseOneDimensionalModel>()) { SparseOneDimensionalModel *model = getConformingOutput<SparseOneDimensionalModel>(); if (!model) return; model->setCompletion(completion, true); } else if (isOutput<SparseTimeValueModel>()) { SparseTimeValueModel *model = getConformingOutput<SparseTimeValueModel>(); if (!model) return; model->setCompletion(completion, true); } else if (isOutput<NoteModel>()) { NoteModel *model = getConformingOutput<NoteModel>(); if (!model) return; model->setCompletion(completion, true); } else if (isOutput<RegionModel>()) { RegionModel *model = getConformingOutput<RegionModel>(); if (!model) return; model->setCompletion(completion, true); } else if (isOutput<EditableDenseThreeDimensionalModel>()) { EditableDenseThreeDimensionalModel *model = getConformingOutput<EditableDenseThreeDimensionalModel>(); if (!model) return; model->setCompletion(completion, true); //!!!m_context.updates); } }