/* * SPDX-FileCopyrightText: Copyright (c) 1993-2025 NVIDIA CORPORATION & AFFILIATES. All rights reserved. * SPDX-License-Identifier: Apache-2.0 * * Licensed under the Apache License, Version 2.0 (the "License"); * you may not use this file except in compliance with the License. * You may obtain a copy of the License at * * http://www.apache.org/licenses/LICENSE-2.0 * * Unless required by applicable law or agreed to in writing, software * distributed under the License is distributed on an "AS IS" BASIS, * WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. * See the License for the specific language governing permissions and * limitations under the License. */ #include "batchedNMSPlugin.h" #include #include #include #include #include #include namespace nvinfer1::plugin { #define NVBUG_3321606_WAR 1 namespace { char const* const kNMS_PLUGIN_VERSION{"1"}; char const* const kNMS_PLUGIN_NAMES[] = {"BatchedNMS_TRT", "BatchedNMSDynamic_TRT"}; } // namespace template <> void write(char*& buffer, NMSParameters const& val) { auto* param = reinterpret_cast(buffer); std::memset(param, 0, sizeof(NMSParameters)); param->shareLocation = val.shareLocation; param->backgroundLabelId = val.backgroundLabelId; param->numClasses = val.numClasses; param->topK = val.topK; param->keepTopK = val.keepTopK; param->scoreThreshold = val.scoreThreshold; param->iouThreshold = val.iouThreshold; param->isNormalized = val.isNormalized; buffer += sizeof(NMSParameters); } static inline pluginStatus_t checkParams(NMSParameters const& param) { // NMS plugin supports maximum thread blocksize of 512 and upto 8 blocks at once. constexpr int32_t maxTopK{512 * 8}; if (param.topK > maxTopK) { plugin::gLogError << "Invalid parameter: NMS topK (" << param.topK << ") exceeds limit (" << maxTopK << ")" << std::endl; return STATUS_BAD_PARAM; } return STATUS_SUCCESS; } BatchedNMSPlugin::BatchedNMSPlugin(NMSParameters params) : param(params) { gLogWarning << "BatchedNMSPlugin is deprecated since TensorRT 9.0. Use INetworkDefinition::addNMS() to add an " "INMSLayer OR use EfficientNMS plugin." << std::endl; mPluginStatus = checkParams(param); PLUGIN_VALIDATE(mPluginStatus == STATUS_SUCCESS); } BatchedNMSPlugin::BatchedNMSPlugin(void const* data, size_t length) { char const *d = reinterpret_cast(data), *a = d; param = read(d); mBoxesSize = read(d); mScoresSize = read(d); mNumPriors = read(d); mClipBoxes = read(d); mPrecision = read(d); mScoreBits = read(d); mCaffeSemantics = read(d); PLUGIN_VALIDATE(d == a + length); mPluginStatus = checkParams(param); PLUGIN_VALIDATE(mPluginStatus == STATUS_SUCCESS); } BatchedNMSDynamicPlugin::BatchedNMSDynamicPlugin(NMSParameters params) : param(params) { mPluginStatus = checkParams(param); PLUGIN_VALIDATE(mPluginStatus == STATUS_SUCCESS); } BatchedNMSDynamicPlugin::BatchedNMSDynamicPlugin(void const* data, size_t length) { char const *d = reinterpret_cast(data), *a = d; param = read(d); mBoxesSize = read(d); mScoresSize = read(d); mNumPriors = read(d); mClipBoxes = read(d); mPrecision = read(d); mScoreBits = read(d); mCaffeSemantics = read(d); PLUGIN_VALIDATE(d == a + length); mPluginStatus = checkParams(param); PLUGIN_VALIDATE(mPluginStatus == STATUS_SUCCESS); } int32_t BatchedNMSPlugin::getNbOutputs() const noexcept { return 4; } int32_t BatchedNMSDynamicPlugin::getNbOutputs() const noexcept { return 4; } int32_t BatchedNMSPlugin::initialize() noexcept { return STATUS_SUCCESS; } int32_t BatchedNMSDynamicPlugin::initialize() noexcept { return STATUS_SUCCESS; } void BatchedNMSPlugin::terminate() noexcept {} void BatchedNMSDynamicPlugin::terminate() noexcept {} Dims BatchedNMSPlugin::getOutputDimensions(int32_t index, Dims const* inputs, int32_t nbInputDims) noexcept { try { PLUGIN_ASSERT(nbInputDims == 2); PLUGIN_ASSERT(index >= 0 && index < this->getNbOutputs()); PLUGIN_ASSERT(inputs[0].nbDims == 3); PLUGIN_ASSERT(inputs[1].nbDims == 2 || (inputs[1].nbDims == 3 && inputs[1].d[2] == 1)); // mBoxesSize: number of box coordinates for one sample mBoxesSize = inputs[0].d[0] * inputs[0].d[1] * inputs[0].d[2]; // mScoresSize: number of scores for one sample mScoresSize = inputs[1].d[0] * inputs[1].d[1]; // num_detections if (index == 0) { Dims dim0{}; dim0.nbDims = 0; return dim0; } // nmsed_boxes if (index == 1) { return Dims{2, {param.keepTopK, 4}}; } // nmsed_scores or nmsed_classes Dims dim1{}; dim1.nbDims = 1; dim1.d[0] = param.keepTopK; return dim1; } catch (std::exception const& e) { caughtError(e); } return Dims{}; } DimsExprs BatchedNMSDynamicPlugin::getOutputDimensions( int32_t outputIndex, DimsExprs const* inputs, int32_t nbInputs, IExprBuilder& exprBuilder) noexcept { try { PLUGIN_ASSERT(nbInputs == 2); PLUGIN_ASSERT(outputIndex >= 0 && outputIndex < this->getNbOutputs()); // Shape of boxes input should be // Constant shape: [batch_size, num_boxes, num_classes, 4] or [batch_size, num_boxes, 1, 4] // shareLocation == 0 or 1 // or // Dynamic shape: some dimension values may be -1 PLUGIN_ASSERT(inputs[0].nbDims == 4); // Shape of scores input should be // Constant shape: [batch_size, num_boxes, num_classes] or [batch_size, num_boxes, num_classes, 1] // or // Dynamic shape: some dimension values may be -1 PLUGIN_ASSERT(inputs[1].nbDims == 3 || inputs[1].nbDims == 4); DimsExprs out_dim; // num_detections if (outputIndex == 0) { out_dim.nbDims = 2; out_dim.d[0] = inputs[0].d[0]; out_dim.d[1] = exprBuilder.constant(1); } // nmsed_boxes else if (outputIndex == 1) { out_dim.nbDims = 3; out_dim.d[0] = inputs[0].d[0]; out_dim.d[1] = exprBuilder.constant(param.keepTopK); out_dim.d[2] = exprBuilder.constant(4); } // nmsed_scores, outputIndex == 2 // nmsed_classes else { out_dim.nbDims = 2; out_dim.d[0] = inputs[0].d[0]; out_dim.d[1] = exprBuilder.constant(param.keepTopK); } return out_dim; } catch (std::exception const& e) { caughtError(e); } return DimsExprs{}; } size_t BatchedNMSPlugin::getWorkspaceSize(int32_t maxBatchSize) const noexcept { return detectionInferenceWorkspaceSize(param.shareLocation, maxBatchSize, mBoxesSize, mScoresSize, param.numClasses, mNumPriors, param.topK, mPrecision, mPrecision); } size_t BatchedNMSDynamicPlugin::getWorkspaceSize( PluginTensorDesc const* inputs, int32_t nbInputs, PluginTensorDesc const* outputs, int32_t nbOutputs) const noexcept { int32_t batchSize = inputs[0].dims.d[0]; int32_t boxesSize = inputs[0].dims.d[1] * inputs[0].dims.d[2] * inputs[0].dims.d[3]; int32_t scoreSize = inputs[1].dims.d[1] * inputs[1].dims.d[2]; int32_t numPriors = inputs[0].dims.d[1]; return detectionInferenceWorkspaceSize(param.shareLocation, batchSize, boxesSize, scoreSize, param.numClasses, numPriors, param.topK, mPrecision, mPrecision); } int32_t BatchedNMSPlugin::enqueue( int32_t batchSize, void const* const* inputs, void* const* outputs, void* workspace, cudaStream_t stream) noexcept { try { void const* const locData = inputs[0]; void const* const confData = inputs[1]; if (mPluginStatus != STATUS_SUCCESS) { return -1; } void* keepCount = outputs[0]; void* nmsedBoxes = outputs[1]; void* nmsedScores = outputs[2]; void* nmsedClasses = outputs[3]; pluginStatus_t status = nmsInference(stream, batchSize, mBoxesSize, mScoresSize, param.shareLocation, param.backgroundLabelId, mNumPriors, param.numClasses, param.topK, param.keepTopK, param.scoreThreshold, param.iouThreshold, mPrecision, locData, mPrecision, confData, keepCount, nmsedBoxes, nmsedScores, nmsedClasses, workspace, param.isNormalized, false, mClipBoxes, mScoreBits, mCaffeSemantics); return status == STATUS_SUCCESS ? 0 : -1; } catch (std::exception const& e) { caughtError(e); } return -1; } int32_t BatchedNMSDynamicPlugin::enqueue(PluginTensorDesc const* inputDesc, PluginTensorDesc const* /* outputDesc */, void const* const* inputs, void* const* outputs, void* workspace, cudaStream_t stream) noexcept { try { PLUGIN_VALIDATE(inputDesc != nullptr && inputs != nullptr && outputs != nullptr && workspace != nullptr); void const* const locData = inputs[0]; void const* const confData = inputs[1]; if (mPluginStatus != STATUS_SUCCESS) { return -1; } void* keepCount = outputs[0]; void* nmsedBoxes = outputs[1]; void* nmsedScores = outputs[2]; void* nmsedClasses = outputs[3]; pluginStatus_t status = nmsInference(stream, inputDesc[0].dims.d[0], mBoxesSize, mScoresSize, param.shareLocation, param.backgroundLabelId, mNumPriors, param.numClasses, param.topK, param.keepTopK, param.scoreThreshold, param.iouThreshold, mPrecision, locData, mPrecision, confData, keepCount, nmsedBoxes, nmsedScores, nmsedClasses, workspace, param.isNormalized, false, mClipBoxes, mScoreBits, mCaffeSemantics); return status; } catch (std::exception const& e) { caughtError(e); } return -1; } size_t BatchedNMSPlugin::getSerializationSize() const noexcept { // NMSParameters, mBoxesSize,mScoresSize,mNumPriors return sizeof(NMSParameters) + sizeof(int32_t) * 3 + sizeof(bool) * 2 + sizeof(DataType) + sizeof(int32_t); } void BatchedNMSPlugin::serialize(void* buffer) const noexcept { char *d = reinterpret_cast(buffer), *a = d; write(d, param); write(d, mBoxesSize); write(d, mScoresSize); write(d, mNumPriors); write(d, mClipBoxes); write(d, mPrecision); write(d, mScoreBits); write(d, mCaffeSemantics); PLUGIN_ASSERT(d == a + getSerializationSize()); } size_t BatchedNMSDynamicPlugin::getSerializationSize() const noexcept { // NMSParameters, mBoxesSize,mScoresSize,mNumPriors return sizeof(NMSParameters) + sizeof(int32_t) * 3 + sizeof(bool) * 2 + sizeof(DataType) + sizeof(int32_t); } void BatchedNMSDynamicPlugin::serialize(void* buffer) const noexcept { char *d = reinterpret_cast(buffer), *a = d; write(d, param); write(d, mBoxesSize); write(d, mScoresSize); write(d, mNumPriors); write(d, mClipBoxes); write(d, mPrecision); write(d, mScoreBits); write(d, mCaffeSemantics); PLUGIN_ASSERT(d == a + getSerializationSize()); } void BatchedNMSPlugin::configurePlugin(Dims const* inputDims, int32_t nbInputs, Dims const* outputDims, int32_t nbOutputs, DataType const* inputTypes, DataType const* outputTypes, bool const* inputIsBroadcast, bool const* outputIsBroadcast, nvinfer1::PluginFormat format, int32_t maxBatchSize) noexcept { try { PLUGIN_ASSERT(nbInputs == 2); PLUGIN_ASSERT(nbOutputs == 4); PLUGIN_ASSERT(inputDims[0].nbDims == 3); PLUGIN_ASSERT(inputDims[1].nbDims == 2 || (inputDims[1].nbDims == 3 && inputDims[1].d[2] == 1)); PLUGIN_ASSERT(std::none_of(inputIsBroadcast, inputIsBroadcast + nbInputs, [](bool b) { return b; })); PLUGIN_ASSERT(std::none_of(outputIsBroadcast, outputIsBroadcast + nbInputs, [](bool b) { return b; })); mBoxesSize = inputDims[0].d[0] * inputDims[0].d[1] * inputDims[0].d[2]; mScoresSize = inputDims[1].d[0] * inputDims[1].d[1]; // num_boxes mNumPriors = inputDims[0].d[0]; const int32_t numLocClasses = param.shareLocation ? 1 : param.numClasses; // Third dimension of boxes must be either 1 or num_classes PLUGIN_ASSERT(inputDims[0].d[1] == numLocClasses); PLUGIN_ASSERT(inputDims[0].d[2] == 4); mPrecision = inputTypes[0]; } catch (std::exception const& e) { caughtError(e); } } void BatchedNMSDynamicPlugin::configurePlugin( DynamicPluginTensorDesc const* in, int32_t nbInputs, DynamicPluginTensorDesc const* out, int32_t nbOutputs) noexcept { try { PLUGIN_ASSERT(nbInputs == 2); PLUGIN_ASSERT(nbOutputs == 4); // Shape of boxes input should be // Constant shape: [batch_size, num_boxes, num_classes, 4] or [batch_size, num_boxes, 1, 4] // shareLocation == 0 or 1 const int32_t numLocClasses = param.shareLocation ? 1 : param.numClasses; PLUGIN_ASSERT(in[0].desc.dims.nbDims == 4); PLUGIN_ASSERT(in[0].desc.dims.d[2] == numLocClasses); PLUGIN_ASSERT(in[0].desc.dims.d[3] == 4); // Shape of scores input should be // Constant shape: [batch_size, num_boxes, num_classes] or [batch_size, num_boxes, num_classes, 1] PLUGIN_ASSERT(in[1].desc.dims.nbDims == 3 || (in[1].desc.dims.nbDims == 4 && in[1].desc.dims.d[3] == 1)); mBoxesSize = in[0].desc.dims.d[1] * in[0].desc.dims.d[2] * in[0].desc.dims.d[3]; mScoresSize = in[1].desc.dims.d[1] * in[1].desc.dims.d[2]; // num_boxes mNumPriors = in[0].desc.dims.d[1]; mPrecision = in[0].desc.type; } catch (std::exception const& e) { caughtError(e); } } bool BatchedNMSPlugin::supportsFormat(DataType type, PluginFormat format) const noexcept { #if NVBUG_3321606_WAR return ((type == DataType::kFLOAT || type == DataType::kINT32) && format == PluginFormat::kLINEAR); #else return ((type == DataType::kHALF || type == DataType::kFLOAT || type == DataType::kINT32) && format == PluginFormat::kLINEAR); #endif // NVBUG_3321606_WAR } bool BatchedNMSDynamicPlugin::supportsFormatCombination( int32_t pos, PluginTensorDesc const* inOut, int32_t nbInputs, int32_t nbOutputs) noexcept { PLUGIN_ASSERT(nbInputs <= 2 && nbInputs >= 0); PLUGIN_ASSERT(nbOutputs <= 4 && nbOutputs >= 0); PLUGIN_ASSERT(pos < 6 && pos >= 0); auto const* in = inOut; auto const* out = inOut + nbInputs; bool const consistentFloatPrecision = in[0].type == in[pos].type; switch (pos) { case 0: return (in[0].type == DataType::kHALF || in[0].type == DataType::kFLOAT) && in[0].format == PluginFormat::kLINEAR && consistentFloatPrecision; case 1: return (in[1].type == DataType::kHALF || in[1].type == DataType::kFLOAT) && in[1].format == PluginFormat::kLINEAR && consistentFloatPrecision; case 2: return out[0].type == DataType::kINT32 && out[0].format == PluginFormat::kLINEAR; case 3: return (out[1].type == DataType::kHALF || out[1].type == DataType::kFLOAT) && out[1].format == PluginFormat::kLINEAR && consistentFloatPrecision; case 4: return (out[2].type == DataType::kHALF || out[2].type == DataType::kFLOAT) && out[2].format == PluginFormat::kLINEAR && consistentFloatPrecision; case 5: return (out[3].type == DataType::kHALF || out[3].type == DataType::kFLOAT) && out[3].format == PluginFormat::kLINEAR && consistentFloatPrecision; } return false; } char const* BatchedNMSPlugin::getPluginType() const noexcept { return kNMS_PLUGIN_NAMES[0]; } char const* BatchedNMSDynamicPlugin::getPluginType() const noexcept { return kNMS_PLUGIN_NAMES[1]; } char const* BatchedNMSPlugin::getPluginVersion() const noexcept { return kNMS_PLUGIN_VERSION; } char const* BatchedNMSDynamicPlugin::getPluginVersion() const noexcept { return kNMS_PLUGIN_VERSION; } void BatchedNMSPlugin::destroy() noexcept { delete this; } void BatchedNMSDynamicPlugin::destroy() noexcept { delete this; } IPluginV2Ext* BatchedNMSPlugin::clone() const noexcept { try { auto* plugin = new BatchedNMSPlugin(param); plugin->mBoxesSize = mBoxesSize; plugin->mScoresSize = mScoresSize; plugin->mNumPriors = mNumPriors; plugin->setPluginNamespace(mNamespace.c_str()); plugin->setClipParam(mClipBoxes); plugin->mPrecision = mPrecision; plugin->setScoreBits(mScoreBits); plugin->setCaffeSemantics(mCaffeSemantics); return plugin; } catch (std::exception const& e) { caughtError(e); } return nullptr; } IPluginV2DynamicExt* BatchedNMSDynamicPlugin::clone() const noexcept { try { auto* plugin = new BatchedNMSDynamicPlugin(param); plugin->mBoxesSize = mBoxesSize; plugin->mScoresSize = mScoresSize; plugin->mNumPriors = mNumPriors; plugin->setPluginNamespace(mNamespace.c_str()); plugin->setClipParam(mClipBoxes); plugin->mPrecision = mPrecision; plugin->setScoreBits(mScoreBits); plugin->setCaffeSemantics(mCaffeSemantics); return plugin; } catch (std::exception const& e) { caughtError(e); } return nullptr; } void BatchedNMSPlugin::setPluginNamespace(char const* pluginNamespace) noexcept { try { mNamespace = pluginNamespace; } catch (std::exception const& e) { caughtError(e); } } char const* BatchedNMSPlugin::getPluginNamespace() const noexcept { return mNamespace.c_str(); } void BatchedNMSDynamicPlugin::setPluginNamespace(char const* pluginNamespace) noexcept { try { mNamespace = pluginNamespace; } catch (std::exception const& e) { caughtError(e); } } char const* BatchedNMSDynamicPlugin::getPluginNamespace() const noexcept { return mNamespace.c_str(); } nvinfer1::DataType BatchedNMSPlugin::getOutputDataType( int32_t index, nvinfer1::DataType const* inputTypes, int32_t nbInputs) const noexcept { if (index == 0) { return nvinfer1::DataType::kINT32; } return inputTypes[0]; } nvinfer1::DataType BatchedNMSDynamicPlugin::getOutputDataType( int32_t index, nvinfer1::DataType const* inputTypes, int32_t nbInputs) const noexcept { if (index == 0) { return nvinfer1::DataType::kINT32; } return inputTypes[0]; } void BatchedNMSPlugin::setClipParam(bool clip) noexcept { mClipBoxes = clip; } void BatchedNMSDynamicPlugin::setClipParam(bool clip) noexcept { mClipBoxes = clip; } void BatchedNMSPlugin::setScoreBits(int32_t scoreBits) noexcept { mScoreBits = scoreBits; } void BatchedNMSDynamicPlugin::setScoreBits(int32_t scoreBits) noexcept { mScoreBits = scoreBits; } void BatchedNMSPlugin::setCaffeSemantics(bool caffeSemantics) noexcept { mCaffeSemantics = caffeSemantics; } void BatchedNMSDynamicPlugin::setCaffeSemantics(bool caffeSemantics) noexcept { mCaffeSemantics = caffeSemantics; } bool BatchedNMSPlugin::isOutputBroadcastAcrossBatch( int32_t outputIndex, bool const* inputIsBroadcasted, int32_t nbInputs) const noexcept { return false; } bool BatchedNMSPlugin::canBroadcastInputAcrossBatch(int32_t inputIndex) const noexcept { return false; } BatchedNMSBasePluginCreator::BatchedNMSBasePluginCreator() { mPluginAttributes.clear(); mPluginAttributes.emplace_back(PluginField("shareLocation", nullptr, PluginFieldType::kINT32, 1)); mPluginAttributes.emplace_back(PluginField("backgroundLabelId", nullptr, PluginFieldType::kINT32, 1)); mPluginAttributes.emplace_back(PluginField("numClasses", nullptr, PluginFieldType::kINT32, 1)); mPluginAttributes.emplace_back(PluginField("topK", nullptr, PluginFieldType::kINT32, 1)); mPluginAttributes.emplace_back(PluginField("keepTopK", nullptr, PluginFieldType::kINT32, 1)); mPluginAttributes.emplace_back(PluginField("scoreThreshold", nullptr, PluginFieldType::kFLOAT32, 1)); mPluginAttributes.emplace_back(PluginField("iouThreshold", nullptr, PluginFieldType::kFLOAT32, 1)); mPluginAttributes.emplace_back(PluginField("isNormalized", nullptr, PluginFieldType::kINT32, 1)); mPluginAttributes.emplace_back(PluginField("clipBoxes", nullptr, PluginFieldType::kINT32, 1)); mPluginAttributes.emplace_back(PluginField("scoreBits", nullptr, PluginFieldType::kINT32, 1)); mPluginAttributes.emplace_back(PluginField("caffeSemantics", nullptr, PluginFieldType::kINT32, 1)); mFC.nbFields = mPluginAttributes.size(); mFC.fields = mPluginAttributes.data(); } char const* BatchedNMSPluginCreator::getPluginName() const noexcept { return kNMS_PLUGIN_NAMES[0]; } char const* BatchedNMSDynamicPluginCreator::getPluginName() const noexcept { return kNMS_PLUGIN_NAMES[1]; } char const* BatchedNMSBasePluginCreator::getPluginVersion() const noexcept { return kNMS_PLUGIN_VERSION; } PluginFieldCollection const* BatchedNMSBasePluginCreator::getFieldNames() noexcept { return &mFC; } IPluginV2Ext* BatchedNMSPluginCreator::createPlugin(char const* name, PluginFieldCollection const* fc) noexcept { try { gLogWarning << "BatchedNMSPlugin is deprecated since TensorRT 9.0. Use INetworkDefinition::addNMS() to add an " "INMSLayer OR use EfficientNMS plugin." << std::endl; NMSParameters params; PluginField const* fields = fc->fields; bool clipBoxes = true; int32_t scoreBits = 16; bool caffeSemantics = true; std::set requiredFields{ "shareLocation", "backgroundLabelId", "numClasses", "topK", "keepTopK", "scoreThreshold", "iouThreshold", }; plugin::validateRequiredAttributesExist(requiredFields, fc); for (int32_t i = 0; i < fc->nbFields; ++i) { char const* attrName = fields[i].name; if (!strcmp(attrName, "shareLocation")) { params.shareLocation = *(static_cast(fields[i].data)); } else if (!strcmp(attrName, "backgroundLabelId")) { PLUGIN_VALIDATE(fields[i].type == PluginFieldType::kINT32); params.backgroundLabelId = *(static_cast(fields[i].data)); } else if (!strcmp(attrName, "numClasses")) { PLUGIN_VALIDATE(fields[i].type == PluginFieldType::kINT32); params.numClasses = *(static_cast(fields[i].data)); } else if (!strcmp(attrName, "topK")) { PLUGIN_VALIDATE(fields[i].type == PluginFieldType::kINT32); params.topK = *(static_cast(fields[i].data)); } else if (!strcmp(attrName, "keepTopK")) { PLUGIN_VALIDATE(fields[i].type == PluginFieldType::kINT32); params.keepTopK = *(static_cast(fields[i].data)); } else if (!strcmp(attrName, "scoreThreshold")) { PLUGIN_VALIDATE(fields[i].type == PluginFieldType::kFLOAT32); params.scoreThreshold = *(static_cast(fields[i].data)); } else if (!strcmp(attrName, "iouThreshold")) { PLUGIN_VALIDATE(fields[i].type == PluginFieldType::kFLOAT32); params.iouThreshold = *(static_cast(fields[i].data)); } else if (!strcmp(attrName, "isNormalized")) { params.isNormalized = *(static_cast(fields[i].data)); } else if (!strcmp(attrName, "clipBoxes")) { clipBoxes = *(static_cast(fields[i].data)); } else if (!strcmp(attrName, "scoreBits")) { scoreBits = *(static_cast(fields[i].data)); } else if (!strcmp(attrName, "caffeSemantics")) { PLUGIN_VALIDATE(fields[i].type == PluginFieldType::kINT32); caffeSemantics = *(static_cast(fields[i].data)); } } auto* plugin = new BatchedNMSPlugin(params); plugin->setClipParam(clipBoxes); plugin->setScoreBits(scoreBits); plugin->setCaffeSemantics(caffeSemantics); plugin->setPluginNamespace(mNamespace.c_str()); return plugin; } catch (std::exception const& e) { caughtError(e); } return nullptr; } IPluginV2DynamicExt* BatchedNMSDynamicPluginCreator::createPlugin( char const* name, PluginFieldCollection const* fc) noexcept { try { gLogWarning << "BatchedNMSPlugin is deprecated since TensorRT 9.0. Use INetworkDefinition::addNMS() to add an " "INMSLayer OR use EfficientNMS plugin." << std::endl; NMSParameters params; PluginField const* fields = fc->fields; bool clipBoxes = true; int32_t scoreBits = 16; bool caffeSemantics = true; std::set requiredFields{ "shareLocation", "backgroundLabelId", "numClasses", "topK", "keepTopK", "scoreThreshold", "iouThreshold", }; plugin::validateRequiredAttributesExist(requiredFields, fc); for (int32_t i = 0; i < fc->nbFields; ++i) { char const* attrName = fields[i].name; if (!strcmp(attrName, "shareLocation")) { params.shareLocation = *(static_cast(fields[i].data)); } else if (!strcmp(attrName, "backgroundLabelId")) { PLUGIN_VALIDATE(fields[i].type == PluginFieldType::kINT32); params.backgroundLabelId = *(static_cast(fields[i].data)); } else if (!strcmp(attrName, "numClasses")) { PLUGIN_VALIDATE(fields[i].type == PluginFieldType::kINT32); params.numClasses = *(static_cast(fields[i].data)); } else if (!strcmp(attrName, "topK")) { PLUGIN_VALIDATE(fields[i].type == PluginFieldType::kINT32); params.topK = *(static_cast(fields[i].data)); } else if (!strcmp(attrName, "keepTopK")) { PLUGIN_VALIDATE(fields[i].type == PluginFieldType::kINT32); params.keepTopK = *(static_cast(fields[i].data)); } else if (!strcmp(attrName, "scoreThreshold")) { PLUGIN_VALIDATE(fields[i].type == PluginFieldType::kFLOAT32); params.scoreThreshold = *(static_cast(fields[i].data)); } else if (!strcmp(attrName, "iouThreshold")) { PLUGIN_VALIDATE(fields[i].type == PluginFieldType::kFLOAT32); params.iouThreshold = *(static_cast(fields[i].data)); } else if (!strcmp(attrName, "isNormalized")) { params.isNormalized = *(static_cast(fields[i].data)); } else if (!strcmp(attrName, "clipBoxes")) { clipBoxes = *(static_cast(fields[i].data)); } else if (!strcmp(attrName, "scoreBits")) { scoreBits = *(static_cast(fields[i].data)); } else if (!strcmp(attrName, "caffeSemantics")) { PLUGIN_VALIDATE(fields[i].type == PluginFieldType::kINT32); caffeSemantics = *(static_cast(fields[i].data)); } } auto* plugin = new BatchedNMSDynamicPlugin(params); plugin->setClipParam(clipBoxes); plugin->setScoreBits(scoreBits); plugin->setCaffeSemantics(caffeSemantics); plugin->setPluginNamespace(mNamespace.c_str()); return plugin; } catch (std::exception const& e) { caughtError(e); } return nullptr; } IPluginV2Ext* BatchedNMSPluginCreator::deserializePlugin( char const* name, void const* serialData, size_t serialLength) noexcept { try { gLogWarning << "BatchedNMSPlugin is deprecated since TensorRT 9.0. Use INetworkDefinition::addNMS() to add an " "INMSLayer OR use EfficientNMS plugin." << std::endl; // This object will be deleted when the network is destroyed, which will // call NMS::destroy() auto* plugin = new BatchedNMSPlugin(serialData, serialLength); plugin->setPluginNamespace(mNamespace.c_str()); return plugin; } catch (std::exception const& e) { caughtError(e); } return nullptr; } IPluginV2DynamicExt* BatchedNMSDynamicPluginCreator::deserializePlugin( char const* name, void const* serialData, size_t serialLength) noexcept { try { gLogWarning << "BatchedNMSPlugin is deprecated since TensorRT 9.0. Use INetworkDefinition::addNMS() to add an " "INMSLayer OR use EfficientNMS plugin." << std::endl; // This object will be deleted when the network is destroyed, which will // call NMS::destroy() auto* plugin = new BatchedNMSDynamicPlugin(serialData, serialLength); plugin->setPluginNamespace(mNamespace.c_str()); return plugin; } catch (std::exception const& e) { caughtError(e); } return nullptr; } } // namespace nvinfer1::plugin