mirror of https://github.com/alibaba/MNN.git
				
				
				
			
		
			
				
	
	
		
			142 lines
		
	
	
		
			7.1 KiB
		
	
	
	
		
			C++
		
	
	
	
			
		
		
	
	
			142 lines
		
	
	
		
			7.1 KiB
		
	
	
	
		
			C++
		
	
	
	
| //
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| //  GeometryConv3D.cpp
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| //  MNN
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| //
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| //  Created by MNN on 2020/7/30.
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| //  Copyright © 2018, Alibaba Group Holding Limited
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| //
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| #include "ConvertUtils.hpp"
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| #include "GeometryConvUtils.hpp"
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| #include "geometry/GeometryComputer.hpp"
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| #include "core/OpCommonUtils.hpp"
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| #include "geometry/GeometryComputerUtils.hpp"
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| 
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| namespace MNN {
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| 
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| class GeometryConv3D : public GeometryComputer {
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| public:
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|     virtual bool onCompute(const Op* op, const std::vector<Tensor*>& inputs, const std::vector<Tensor*>& outputs, Context& context, CommandBuffer& res) const override {
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|         auto input      = inputs[0];
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|         auto output = outputs[0];
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|         MNN_ASSERT(TensorUtils::getDescribe(input)->dimensionFormat != MNN_DATA_FORMAT_NHWC);
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|         MNN_ASSERT(TensorUtils::getDescribe(output)->dimensionFormat != MNN_DATA_FORMAT_NHWC);
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|         auto biasData = op->main_as_Convolution3D()->bias();
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|         auto weightData = op->main_as_Convolution3D()->weight();
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|         auto common     = op->main_as_Convolution3D()->common();
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|         auto kernels = common->kernels();
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|         auto strides = common->strides();
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|         auto pads = common->pads();
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|         auto dialtes = common->dilates();
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|         const int kernelDepth = kernels->Get(0), kernelHeight = kernels->Get(1), kernelWidth = kernels->Get(2);
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|         const int strideDepth = strides->Get(0), strideHeight = strides->Get(1), strideWidth = strides->Get(2);
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|         const int dialteDepth = dialtes->Get(0), dialteHeight = dialtes->Get(1), dialteWidth = dialtes->Get(2);
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|         const int padDepth = pads->Get(0), padHeight = pads->Get(1), padWidth = pads->Get(2);
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|         const int outputDepth = output->length(2), outputHeight = output->length(3), outputWidth = output->length(4);
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|         const int inputDepth = input->length(2), inputHeight = input->length(3), inputWidth = input->length(4);
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|         const int inputChannel = input->length(1), batch = input->length(0), outputChannel = output->length(1);
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| 
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|         auto weightTensor = context.allocConst(op, {static_cast<int>(weightData->size())}, halide_type_of<float>());
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|         ::memcpy(weightTensor.get()->host<float>(), weightData->data(), weightData->size()*sizeof(float));
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|         auto weight = weightTensor.get();
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|         auto biasTensor = context.allocConst(op, {outputChannel}, halide_type_of<float>());
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|         ::memcpy(biasTensor.get()->host<float>(), biasData->data(), biasData->size()*sizeof(float));
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|         auto bias = biasTensor.get();
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| 
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|         Tensor* A = nullptr;
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|         Tensor* B = nullptr;
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|         {
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|             // B: Input Im2Col, n, ic, id, ih, iw -> ic*kd*kh*kw*n*od*oh*ow
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|             std::shared_ptr<Tensor> im2Col(new Tensor);
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|             GeometryConvUtils::im2Col3d(im2Col.get(), input, inputChannel, kernelDepth, kernelHeight, kernelWidth,
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|             batch, outputDepth, outputHeight, outputWidth, inputDepth, inputHeight, inputWidth,
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|             strideDepth, strideHeight, strideWidth, dialteDepth, dialteHeight, dialteWidth, padDepth, padHeight, padWidth);
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|             B = im2Col.get();
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|             res.extras.emplace_back(im2Col);
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|         }
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|         {
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|             // A: Weight oc, ic, kd, kh, kw -> oc, ic*kd*kh*kw
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|             std::shared_ptr<Tensor> kernel(new Tensor);
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|             A                           = kernel.get();
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|             kernel->buffer().type       = halide_type_of<float>();
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|             kernel->buffer().dimensions = 2;
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|             kernel->setLength(0, outputChannel);
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|             kernel->setLength(1, inputChannel*kernelDepth*kernelHeight*kernelWidth);
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|             auto des             = TensorUtils::getDescribe(kernel.get());
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|             des->dimensionFormat = MNN_DATA_FORMAT_NCHW;
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|             GeometryComputerUtils::makeRawAddressRef(kernel.get(), weight, 0, inputChannel*kernelDepth*kernelHeight*kernelWidth * outputChannel);
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|             res.extras.emplace_back(std::move(kernel));
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|         }
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|         {
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|             // C = MatMul(B, A)
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|             std::shared_ptr<Tensor> C(new Tensor);
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|             C->buffer().type       = halide_type_of<float>();
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|             C->buffer().dimensions = 2;
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|             C->setLength(0, batch * outputDepth * outputHeight * outputWidth);
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|             C->setLength(1, outputChannel);
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|             TensorUtils::getDescribe(C.get())->dimensionFormat = MNN_DATA_FORMAT_NCHW;
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|             res.command.emplace_back(GeometryComputerUtils::makeMatMul(B, A, C.get(), bias, true, true));
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|             res.extras.emplace_back(C);
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|             // Activation
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|             float minValue = 0.0f, maxValue = 0.0f;
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|             bool needPostTreat = false;
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|             if (common->relu()) {
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|                 needPostTreat = true;
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|                 minValue      = 0.0f;
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|                 maxValue      = std::numeric_limits<float>().max();
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|             }
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|             if (common->relu6()) {
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|                 needPostTreat = true;
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|                 minValue      = 0.0f;
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|                 maxValue      = 6.0f;
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|             }
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|             if (needPostTreat) {
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|                 flatbuffers::FlatBufferBuilder builder;
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|                 builder.Finish(GeometryConvUtils::makeRelu6(builder, minValue, maxValue));
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|                 std::shared_ptr<Tensor> C2(new Tensor);
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|                 C2->buffer().type       = halide_type_of<float>();
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|                 C2->buffer().dimensions = 2;
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|                 C2->setLength(0, batch * outputDepth * outputHeight * outputWidth);
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|                 C2->setLength(1, outputChannel);
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|                 TensorUtils::getDescribe(C2.get())->dimensionFormat = MNN_DATA_FORMAT_NCHW;
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|                 auto cmd = GeometryComputerUtils::makeCommand(builder, {C.get()}, {C2.get()});
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|                 res.command.emplace_back(cmd);
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|                 res.extras.emplace_back(C2);
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|                 C = C2;
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|             }
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|             // Transpose
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|             // Batch, od, oh, ow, oc -> batch, oc, od, oh, ow
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|             TensorUtils::setLinearLayout(C.get());
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|             if (outputDepth * outputWidth * outputHeight == 1) {
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|                 GeometryComputerUtils::makeRawAddressRef(outputs[0], C.get(), 0, batch * outputChannel);
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|             } else {
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|                 auto kernelDiffDes        = TensorUtils::getDescribe(outputs[0]);
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|                 kernelDiffDes->memoryType = Tensor::InsideDescribe::MEMORY_VIRTUAL;
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|                 kernelDiffDes->regions.resize(1);
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|                 auto& desReg         = kernelDiffDes->regions[0];
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|                 desReg.size[0]       = batch;
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|                 desReg.size[1]       = outputChannel;
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|                 desReg.size[2]       = outputDepth * outputHeight * outputWidth;
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|                 desReg.dst.offset    = 0;
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|                 desReg.dst.stride[0] = outputChannel * outputDepth * outputHeight * outputWidth;
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|                 desReg.dst.stride[1] = outputDepth * outputHeight * outputWidth;
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|                 desReg.dst.stride[2] = 1;
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|                 desReg.src.offset    = 0;
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|                 desReg.src.stride[0] = outputChannel * outputDepth * outputHeight * outputWidth;
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|                 desReg.src.stride[1] = 1;
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|                 desReg.src.stride[2] = outputChannel;
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|                 desReg.origin        = C.get();
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|             }
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|         }
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|         return true;
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|     }
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| };
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| 
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| static void _create() {
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|     std::shared_ptr<GeometryComputer> comp(new GeometryConv3D);
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|     GeometryComputer::registerGeometryComputer(comp, {OpType_Convolution3D});
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| }
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| 
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| REGISTER_GEOMETRY(GeometryConv3D, _create);
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| 
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| } // namespace MNN
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