Merge pull request #12705 from berak:imread_document_grayscale
[platform/upstream/opencv.git] / modules / dnn / src / layers / max_unpooling_layer.cpp
1 // This file is part of OpenCV project.
2 // It is subject to the license terms in the LICENSE file found in the top-level directory
3 // of this distribution and at http://opencv.org/license.html.
4
5 // Copyright (C) 2016, Intel Corporation, all rights reserved.
6 // Third party copyrights are property of their respective owners.
7
8 /*
9 Implementation of Batch Normalization layer.
10 */
11
12 #include "../precomp.hpp"
13 #include "layers_common.hpp"
14 #include "../op_halide.hpp"
15 #include <opencv2/dnn/shape_utils.hpp>
16
17 #include <iostream>
18
19 namespace cv
20 {
21 namespace dnn
22 {
23
24 class MaxUnpoolLayerImpl CV_FINAL : public MaxUnpoolLayer
25 {
26 public:
27     MaxUnpoolLayerImpl(const LayerParams& params)
28     {
29         setParamsFrom(params);
30         poolKernel = Size(params.get<int>("pool_k_w"), params.get<int>("pool_k_h"));
31         poolPad = Size(params.get<int>("pool_pad_w"), params.get<int>("pool_pad_h"));
32         poolStride = Size(params.get<int>("pool_stride_w"), params.get<int>("pool_stride_h"));
33     }
34
35     virtual bool supportBackend(int backendId) CV_OVERRIDE
36     {
37         return backendId == DNN_BACKEND_OPENCV ||
38                backendId == DNN_BACKEND_HALIDE && haveHalide() &&
39                !poolPad.width && !poolPad.height;
40     }
41
42     bool getMemoryShapes(const std::vector<MatShape> &inputs,
43                          const int requiredOutputs,
44                          std::vector<MatShape> &outputs,
45                          std::vector<MatShape> &internals) const CV_OVERRIDE
46     {
47         CV_Assert(inputs.size() == 2);
48         CV_Assert(total(inputs[0]) == total(inputs[1]));
49
50         MatShape outShape = inputs[0];
51         outShape[2] = (outShape[2] - 1) * poolStride.height + poolKernel.height - 2 * poolPad.height;
52         outShape[3] = (outShape[3] - 1) * poolStride.width + poolKernel.width - 2 * poolPad.width;
53
54         outputs.clear();
55         outputs.push_back(outShape);
56
57         return false;
58     }
59
60     void forward(InputArrayOfArrays inputs_arr, OutputArrayOfArrays outputs_arr, OutputArrayOfArrays internals_arr) CV_OVERRIDE
61     {
62         CV_TRACE_FUNCTION();
63         CV_TRACE_ARG_VALUE(name, "name", name.c_str());
64
65         if (inputs_arr.depth() == CV_16S)
66         {
67             forward_fallback(inputs_arr, outputs_arr, internals_arr);
68             return;
69         }
70
71         std::vector<Mat> inputs, outputs;
72         inputs_arr.getMatVector(inputs);
73         outputs_arr.getMatVector(outputs);
74
75         CV_Assert(inputs.size() == 2);
76         Mat& input = inputs[0];
77         Mat& indices = inputs[1];
78
79         CV_Assert(input.total() == indices.total());
80         CV_Assert(input.size[0] == 1);
81         CV_Assert(input.isContinuous());
82
83         for(int i_n = 0; i_n < outputs.size(); i_n++)
84         {
85             Mat& outBlob = outputs[i_n];
86             outBlob.setTo(0);
87             CV_Assert(input.size[1] == outBlob.size[1]);
88             int outPlaneTotal = outBlob.size[2]*outBlob.size[3];
89
90             for (int i_c = 0; i_c < input.size[1]; i_c++)
91             {
92                 Mat outPlane = getPlane(outBlob, 0, i_c);
93                 int wh_area = input.size[2]*input.size[3];
94                 const float* inptr = input.ptr<float>(0, i_c);
95                 const float* idxptr = indices.ptr<float>(0, i_c);
96                 float* outptr = outPlane.ptr<float>();
97
98                 for(int i_wh = 0; i_wh < wh_area; i_wh++)
99                 {
100                     int index = idxptr[i_wh];
101                     if (!(0 <= index && index < outPlaneTotal))
102                     {
103                         std::cerr
104                             << "i_n=" << i_n << std::endl
105                             << "i_c=" << i_c << std::endl
106                             << "i_wh=" << i_wh << std::endl
107                             << "index=" << index << std::endl
108                             << "maxval=" << inptr[i_wh] << std::endl
109                             << "outPlaneTotal=" << outPlaneTotal << std::endl
110                             << "input.size=" << input.size << std::endl
111                             << "indices.size=" << indices.size << std::endl
112                             << "outBlob=" << outBlob.size << std::endl
113                             ;
114                         CV_Assert(0 <= index && index < outPlaneTotal);
115                     }
116                     outptr[index] = inptr[i_wh];
117                 }
118             }
119         }
120     }
121
122     virtual Ptr<BackendNode> initHalide(const std::vector<Ptr<BackendWrapper> > &input) CV_OVERRIDE
123     {
124 #ifdef HAVE_HALIDE
125         // Meaningless operation if false because if kernel > stride
126         // it is not deterministic and if kernel < stride we just
127         // skip a part of input data (you'd better change your model).
128         if (poolKernel.width != poolStride.width ||
129             poolKernel.height != poolStride.height)
130             CV_Error(cv::Error::StsNotImplemented,
131                      "Halide backend for maximum unpooling "
132                      "is not support cases when kernel != stride");
133
134         Halide::Var x("x"), y("y"), c("c"), n("n");
135         Halide::Func top = (name.empty() ? Halide::Func() : Halide::Func(name));
136         Halide::Buffer<float> inputBuffer = halideBuffer(input[0]);
137         Halide::Buffer<float> indices = halideBuffer(input[1]);
138
139         Halide::Expr pooledX = x / poolKernel.width;
140         Halide::Expr pooledY = y / poolKernel.height;
141
142         const int outW = inputBuffer.width() * poolKernel.width;
143         top(x, y, c, n) = select(y * outW + x == indices(pooledX, pooledY, c, n),
144                                  inputBuffer(pooledX, pooledY, c, n), 0.0f);
145         return Ptr<BackendNode>(new HalideBackendNode(top));
146 #endif  // HAVE_HALIDE
147         return Ptr<BackendNode>();
148     }
149 };
150
151 Ptr<MaxUnpoolLayer> MaxUnpoolLayer::create(const LayerParams& params)
152 {
153     return Ptr<MaxUnpoolLayer>(new MaxUnpoolLayerImpl(params));
154 }
155
156 }
157 }