From 6b612f5fa1fee9528f2f87491fe7edb3887d9817 Mon Sep 17 00:00:00 2001 From: Michele Di Giorgio Date: Thu, 5 Sep 2019 12:30:22 +0100 Subject: COMPMID-2310: CLGenerateProposalsLayer: support for QASYMM8 Change-Id: I48b77e09857cd43f9498d28e8f4bf346e3d7110d Signed-off-by: Michele Di Giorgio Reviewed-on: https://review.mlplatform.org/c/1969 Reviewed-by: Pablo Marquez Comments-Addressed: Arm Jenkins Tested-by: Arm Jenkins --- .../CL/functions/CLGenerateProposalsLayer.cpp | 161 ++++++++++++++++----- 1 file changed, 127 insertions(+), 34 deletions(-) (limited to 'src/runtime/CL/functions/CLGenerateProposalsLayer.cpp') diff --git a/src/runtime/CL/functions/CLGenerateProposalsLayer.cpp b/src/runtime/CL/functions/CLGenerateProposalsLayer.cpp index 94aa5e7198..c9eb8abc29 100644 --- a/src/runtime/CL/functions/CLGenerateProposalsLayer.cpp +++ b/src/runtime/CL/functions/CLGenerateProposalsLayer.cpp @@ -30,7 +30,7 @@ namespace arm_compute { CLGenerateProposalsLayer::CLGenerateProposalsLayer(std::shared_ptr memory_manager) - : _memory_group(std::move(memory_manager)), + : _memory_group(memory_manager), _permute_deltas_kernel(), _flatten_deltas_kernel(), _permute_scores_kernel(), @@ -38,17 +38,25 @@ CLGenerateProposalsLayer::CLGenerateProposalsLayer(std::shared_ptrinfo(), deltas->info(), anchors->info(), proposals->info(), scores_out->info(), num_valid_proposals->info(), info)); - _is_nhwc = scores->info()->data_layout() == DataLayout::NHWC; - const DataType data_type = deltas->info()->data_type(); - const int num_anchors = scores->info()->dimension(get_data_layout_dimension_index(scores->info()->data_layout(), DataLayoutDimension::CHANNEL)); - const int feat_width = scores->info()->dimension(get_data_layout_dimension_index(scores->info()->data_layout(), DataLayoutDimension::WIDTH)); - const int feat_height = scores->info()->dimension(get_data_layout_dimension_index(scores->info()->data_layout(), DataLayoutDimension::HEIGHT)); - const int total_num_anchors = num_anchors * feat_width * feat_height; - const int pre_nms_topN = info.pre_nms_topN(); - const int post_nms_topN = info.post_nms_topN(); - const size_t values_per_roi = info.values_per_roi(); + _is_nhwc = scores->info()->data_layout() == DataLayout::NHWC; + const DataType scores_data_type = scores->info()->data_type(); + _is_qasymm8 = scores_data_type == DataType::QASYMM8; + const int num_anchors = scores->info()->dimension(get_data_layout_dimension_index(scores->info()->data_layout(), DataLayoutDimension::CHANNEL)); + const int feat_width = scores->info()->dimension(get_data_layout_dimension_index(scores->info()->data_layout(), DataLayoutDimension::WIDTH)); + const int feat_height = scores->info()->dimension(get_data_layout_dimension_index(scores->info()->data_layout(), DataLayoutDimension::HEIGHT)); + const int total_num_anchors = num_anchors * feat_width * feat_height; + const int pre_nms_topN = info.pre_nms_topN(); + const int post_nms_topN = info.post_nms_topN(); + const size_t values_per_roi = info.values_per_roi(); + + const QuantizationInfo scores_qinfo = scores->info()->quantization_info(); + const DataType rois_data_type = (_is_qasymm8) ? DataType::QASYMM16 : scores_data_type; + const QuantizationInfo rois_qinfo = (_is_qasymm8) ? QuantizationInfo(0.125f, 0) : scores->info()->quantization_info(); // Compute all the anchors _memory_group.manage(&_all_anchors); _compute_anchors_kernel.configure(anchors, &_all_anchors, ComputeAnchorsInfo(feat_width, feat_height, info.spatial_scale())); const TensorShape flatten_shape_deltas(values_per_roi, total_num_anchors); - _deltas_flattened.allocator()->init(TensorInfo(flatten_shape_deltas, 1, data_type)); + _deltas_flattened.allocator()->init(TensorInfo(flatten_shape_deltas, 1, scores_data_type, deltas->info()->quantization_info())); // Permute and reshape deltas + _memory_group.manage(&_deltas_flattened); if(!_is_nhwc) { _memory_group.manage(&_deltas_permuted); - _memory_group.manage(&_deltas_flattened); _permute_deltas_kernel.configure(deltas, &_deltas_permuted, PermutationVector{ 2, 0, 1 }); _flatten_deltas_kernel.configure(&_deltas_permuted, &_deltas_flattened); _deltas_permuted.allocator()->allocate(); } else { - _memory_group.manage(&_deltas_flattened); _flatten_deltas_kernel.configure(deltas, &_deltas_flattened); } const TensorShape flatten_shape_scores(1, total_num_anchors); - _scores_flattened.allocator()->init(TensorInfo(flatten_shape_scores, 1, data_type)); + _scores_flattened.allocator()->init(TensorInfo(flatten_shape_scores, 1, scores_data_type, scores_qinfo)); // Permute and reshape scores + _memory_group.manage(&_scores_flattened); if(!_is_nhwc) { _memory_group.manage(&_scores_permuted); - _memory_group.manage(&_scores_flattened); _permute_scores_kernel.configure(scores, &_scores_permuted, PermutationVector{ 2, 0, 1 }); _flatten_scores_kernel.configure(&_scores_permuted, &_scores_flattened); _scores_permuted.allocator()->allocate(); } else { - _memory_group.manage(&_scores_flattened); _flatten_scores_kernel.configure(scores, &_scores_flattened); } + CLTensor *anchors_to_use = &_all_anchors; + CLTensor *deltas_to_use = &_deltas_flattened; + if(_is_qasymm8) + { + _all_anchors_f32.allocator()->init(TensorInfo(_all_anchors.info()->tensor_shape(), 1, DataType::F32)); + _deltas_flattened_f32.allocator()->init(TensorInfo(_deltas_flattened.info()->tensor_shape(), 1, DataType::F32)); + _memory_group.manage(&_all_anchors_f32); + _memory_group.manage(&_deltas_flattened_f32); + // Dequantize anchors to float + _dequantize_anchors.configure(&_all_anchors, &_all_anchors_f32); + _all_anchors.allocator()->allocate(); + anchors_to_use = &_all_anchors_f32; + // Dequantize deltas to float + _dequantize_deltas.configure(&_deltas_flattened, &_deltas_flattened_f32); + _deltas_flattened.allocator()->allocate(); + deltas_to_use = &_deltas_flattened_f32; + } // Bounding box transform _memory_group.manage(&_all_proposals); BoundingBoxTransformInfo bbox_info(info.im_width(), info.im_height(), 1.f); - _bounding_box_kernel.configure(&_all_anchors, &_all_proposals, &_deltas_flattened, bbox_info); - _deltas_flattened.allocator()->allocate(); - _all_anchors.allocator()->allocate(); + _bounding_box_kernel.configure(anchors_to_use, &_all_proposals, deltas_to_use, bbox_info); + deltas_to_use->allocator()->allocate(); + anchors_to_use->allocator()->allocate(); + _all_proposals_to_use = &_all_proposals; + if(_is_qasymm8) + { + _memory_group.manage(&_all_proposals_quantized); + // Requantize all_proposals to QASYMM16 with 0.125 scale and 0 offset + _all_proposals_quantized.allocator()->init(TensorInfo(_all_proposals.info()->tensor_shape(), 1, DataType::QASYMM16, QuantizationInfo(0.125f, 0))); + _quantize_all_proposals.configure(&_all_proposals, &_all_proposals_quantized); + _all_proposals.allocator()->allocate(); + _all_proposals_to_use = &_all_proposals_quantized; + } // The original layer implementation first selects the best pre_nms_topN anchors (thus having a lightweight sort) // that are then transformed by bbox_transform. The boxes generated are then fed into a non-sorting NMS operation. // Since we are reusing the NMS layer and we don't implement any CL/sort, we let NMS do the sorting (of all the input) @@ -127,12 +165,12 @@ void CLGenerateProposalsLayer::configure(const ICLTensor *scores, const ICLTenso _memory_group.manage(&_keeps_nms_unused); // Note that NMS needs outputs preinitialized. - auto_init_if_empty(*scores_out->info(), TensorShape(scores_nms_size), 1, data_type); - auto_init_if_empty(*_proposals_4_roi_values.info(), TensorShape(values_per_roi, scores_nms_size), 1, data_type); + auto_init_if_empty(*scores_out->info(), TensorShape(scores_nms_size), 1, scores_data_type, scores_qinfo); + auto_init_if_empty(*_proposals_4_roi_values.info(), TensorShape(values_per_roi, scores_nms_size), 1, rois_data_type, rois_qinfo); auto_init_if_empty(*num_valid_proposals->info(), TensorShape(1), 1, DataType::U32); // Initialize temporaries (unused) outputs - _classes_nms_unused.allocator()->init(TensorInfo(TensorShape(1, 1), 1, data_type)); + _classes_nms_unused.allocator()->init(TensorInfo(TensorShape(scores_nms_size), 1, scores_data_type, scores_qinfo)); _keeps_nms_unused.allocator()->init(*scores_out->info()); // Save the output (to map and unmap them at run) @@ -140,11 +178,11 @@ void CLGenerateProposalsLayer::configure(const ICLTensor *scores, const ICLTenso _num_valid_proposals = num_valid_proposals; _memory_group.manage(&_proposals_4_roi_values); - _cpp_nms_kernel.configure(&_scores_flattened, &_all_proposals, nullptr, scores_out, &_proposals_4_roi_values, &_classes_nms_unused, nullptr, &_keeps_nms_unused, num_valid_proposals, - BoxNMSLimitInfo(0.0f, info.nms_thres(), scores_nms_size, false, NMSType::LINEAR, 0.5f, 0.001f, true, min_size_scaled, info.im_width(), info.im_height())); + _cpp_nms.configure(&_scores_flattened, _all_proposals_to_use, nullptr, scores_out, &_proposals_4_roi_values, &_classes_nms_unused, nullptr, &_keeps_nms_unused, num_valid_proposals, + BoxNMSLimitInfo(0.0f, info.nms_thres(), scores_nms_size, false, NMSType::LINEAR, 0.5f, 0.001f, true, min_size_scaled, info.im_width(), info.im_height())); _keeps_nms_unused.allocator()->allocate(); _classes_nms_unused.allocator()->allocate(); - _all_proposals.allocator()->allocate(); + _all_proposals_to_use->allocator()->allocate(); _scores_flattened.allocator()->allocate(); // Add the first column that represents the batch id. This will be all zeros, as we don't support multiple images @@ -156,8 +194,10 @@ Status CLGenerateProposalsLayer::validate(const ITensorInfo *scores, const ITens const ITensorInfo *num_valid_proposals, const GenerateProposalsInfo &info) { ARM_COMPUTE_RETURN_ERROR_ON_NULLPTR(scores, deltas, anchors, proposals, scores_out, num_valid_proposals); + ARM_COMPUTE_RETURN_ERROR_ON_DATA_TYPE_CHANNEL_NOT_IN(scores, 1, DataType::QASYMM8, DataType::F16, DataType::F32); ARM_COMPUTE_RETURN_ERROR_ON_DATA_LAYOUT_NOT_IN(scores, DataLayout::NCHW, DataLayout::NHWC); ARM_COMPUTE_RETURN_ERROR_ON_MISMATCHING_DATA_LAYOUT(scores, deltas); + ARM_COMPUTE_RETURN_ERROR_ON_MISMATCHING_DATA_TYPES(scores, deltas); const int num_anchors = scores->dimension(get_data_layout_dimension_index(scores->data_layout(), DataLayoutDimension::CHANNEL)); const int feat_width = scores->dimension(get_data_layout_dimension_index(scores->data_layout(), DataLayoutDimension::WIDTH)); @@ -166,8 +206,17 @@ Status CLGenerateProposalsLayer::validate(const ITensorInfo *scores, const ITens const int total_num_anchors = num_anchors * feat_width * feat_height; const int values_per_roi = info.values_per_roi(); + const bool is_qasymm8 = scores->data_type() == DataType::QASYMM8; + ARM_COMPUTE_RETURN_ERROR_ON(num_images > 1); + if(is_qasymm8) + { + ARM_COMPUTE_RETURN_ERROR_ON_DATA_TYPE_CHANNEL_NOT_IN(anchors, 1, DataType::QSYMM16); + const UniformQuantizationInfo anchors_qinfo = anchors->quantization_info().uniform(); + ARM_COMPUTE_RETURN_ERROR_ON(anchors_qinfo.scale != 0.125f); + } + TensorInfo all_anchors_info(anchors->clone()->set_tensor_shape(TensorShape(values_per_roi, total_num_anchors)).set_is_resizable(true)); ARM_COMPUTE_RETURN_ON_ERROR(CLComputeAllAnchorsKernel::validate(anchors, &all_anchors_info, ComputeAnchorsInfo(feat_width, feat_height, info.spatial_scale()))); @@ -187,14 +236,36 @@ Status CLGenerateProposalsLayer::validate(const ITensorInfo *scores, const ITens TensorInfo deltas_flattened_info(deltas->clone()->set_tensor_shape(TensorShape(values_per_roi, total_num_anchors)).set_is_resizable(true)); ARM_COMPUTE_RETURN_ON_ERROR(CLReshapeLayerKernel::validate(&deltas_permuted_info, &deltas_flattened_info)); - TensorInfo scores_flattened_info(deltas->clone()->set_tensor_shape(TensorShape(1, total_num_anchors)).set_is_resizable(true)); + TensorInfo scores_flattened_info(scores->clone()->set_tensor_shape(TensorShape(1, total_num_anchors)).set_is_resizable(true)); TensorInfo proposals_4_roi_values(deltas->clone()->set_tensor_shape(TensorShape(values_per_roi, total_num_anchors)).set_is_resizable(true)); ARM_COMPUTE_RETURN_ON_ERROR(CLReshapeLayerKernel::validate(&scores_permuted_info, &scores_flattened_info)); - ARM_COMPUTE_RETURN_ON_ERROR(CLBoundingBoxTransformKernel::validate(&all_anchors_info, &proposals_4_roi_values, &deltas_flattened_info, BoundingBoxTransformInfo(info.im_width(), info.im_height(), - 1.f))); - ARM_COMPUTE_RETURN_ON_ERROR(CLPadLayerKernel::validate(&proposals_4_roi_values, proposals, PaddingList{ { 1, 0 } })); + TensorInfo *proposals_4_roi_values_to_use = &proposals_4_roi_values; + TensorInfo proposals_4_roi_values_quantized(deltas->clone()->set_tensor_shape(TensorShape(values_per_roi, total_num_anchors)).set_is_resizable(true)); + proposals_4_roi_values_quantized.set_data_type(DataType::QASYMM16).set_quantization_info(QuantizationInfo(0.125f, 0)); + if(is_qasymm8) + { + TensorInfo all_anchors_f32_info(anchors->clone()->set_tensor_shape(TensorShape(values_per_roi, total_num_anchors)).set_is_resizable(true).set_data_type(DataType::F32)); + ARM_COMPUTE_RETURN_ON_ERROR(CLDequantizationLayerKernel::validate(&all_anchors_info, &all_anchors_f32_info)); + + TensorInfo deltas_flattened_f32_info(deltas->clone()->set_tensor_shape(TensorShape(values_per_roi, total_num_anchors)).set_is_resizable(true).set_data_type(DataType::F32)); + ARM_COMPUTE_RETURN_ON_ERROR(CLDequantizationLayerKernel::validate(&deltas_flattened_info, &deltas_flattened_f32_info)); + + TensorInfo proposals_4_roi_values_f32(deltas->clone()->set_tensor_shape(TensorShape(values_per_roi, total_num_anchors)).set_is_resizable(true).set_data_type(DataType::F32)); + ARM_COMPUTE_RETURN_ON_ERROR(CLBoundingBoxTransformKernel::validate(&all_anchors_f32_info, &proposals_4_roi_values_f32, &deltas_flattened_f32_info, + BoundingBoxTransformInfo(info.im_width(), info.im_height(), 1.f))); + + ARM_COMPUTE_RETURN_ON_ERROR(CLQuantizationLayerKernel::validate(&proposals_4_roi_values_f32, &proposals_4_roi_values_quantized)); + proposals_4_roi_values_to_use = &proposals_4_roi_values_quantized; + } + else + { + ARM_COMPUTE_RETURN_ON_ERROR(CLBoundingBoxTransformKernel::validate(&all_anchors_info, &proposals_4_roi_values, &deltas_flattened_info, + BoundingBoxTransformInfo(info.im_width(), info.im_height(), 1.f))); + } + + ARM_COMPUTE_RETURN_ON_ERROR(CLPadLayerKernel::validate(proposals_4_roi_values_to_use, proposals, PaddingList{ { 1, 0 } })); if(num_valid_proposals->total_size() > 0) { @@ -208,7 +279,17 @@ Status CLGenerateProposalsLayer::validate(const ITensorInfo *scores, const ITens ARM_COMPUTE_RETURN_ERROR_ON(proposals->num_dimensions() > 2); ARM_COMPUTE_RETURN_ERROR_ON(proposals->dimension(0) != size_t(values_per_roi) + 1); ARM_COMPUTE_RETURN_ERROR_ON(proposals->dimension(1) != size_t(total_num_anchors)); - ARM_COMPUTE_RETURN_ERROR_ON_MISMATCHING_DATA_TYPES(proposals, deltas); + if(is_qasymm8) + { + ARM_COMPUTE_RETURN_ERROR_ON_DATA_TYPE_CHANNEL_NOT_IN(proposals, 1, DataType::QASYMM16); + const UniformQuantizationInfo proposals_qinfo = proposals->quantization_info().uniform(); + ARM_COMPUTE_RETURN_ERROR_ON(proposals_qinfo.scale != 0.125f); + ARM_COMPUTE_RETURN_ERROR_ON(proposals_qinfo.offset != 0); + } + else + { + ARM_COMPUTE_RETURN_ERROR_ON_MISMATCHING_DATA_TYPES(proposals, scores); + } } if(scores_out->total_size() > 0) @@ -225,7 +306,7 @@ void CLGenerateProposalsLayer::run_cpp_nms_kernel() { // Map inputs _scores_flattened.map(true); - _all_proposals.map(true); + _all_proposals_to_use->map(true); // Map outputs _scores_out->map(CLScheduler::get().queue(), true); @@ -235,7 +316,7 @@ void CLGenerateProposalsLayer::run_cpp_nms_kernel() _classes_nms_unused.map(true); // Run nms - CPPScheduler::get().schedule(&_cpp_nms_kernel, Window::DimX); + _cpp_nms.run(); // Unmap outputs _keeps_nms_unused.unmap(); @@ -246,7 +327,7 @@ void CLGenerateProposalsLayer::run_cpp_nms_kernel() // Unmap inputs _scores_flattened.unmap(); - _all_proposals.unmap(); + _all_proposals_to_use->unmap(); } void CLGenerateProposalsLayer::run() @@ -266,8 +347,20 @@ void CLGenerateProposalsLayer::run() CLScheduler::get().enqueue(_flatten_deltas_kernel, false); CLScheduler::get().enqueue(_flatten_scores_kernel, false); + if(_is_qasymm8) + { + CLScheduler::get().enqueue(_dequantize_anchors, false); + CLScheduler::get().enqueue(_dequantize_deltas, false); + } + // Build the boxes CLScheduler::get().enqueue(_bounding_box_kernel, false); + + if(_is_qasymm8) + { + CLScheduler::get().enqueue(_quantize_all_proposals, false); + } + // Non maxima suppression run_cpp_nms_kernel(); // Add dummy batch indexes -- cgit v1.2.1