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test_convolution.cpp 8.6 kB

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  1. // Tencent is pleased to support the open source community by making ncnn available.
  2. //
  3. // Copyright (C) 2019 THL A29 Limited, a Tencent company. All rights reserved.
  4. //
  5. // Licensed under the BSD 3-Clause License (the "License"); you may not use this file except
  6. // in compliance with the License. You may obtain a copy of the License at
  7. //
  8. // https://opensource.org/licenses/BSD-3-Clause
  9. //
  10. // Unless required by applicable law or agreed to in writing, software distributed
  11. // under the License is distributed on an "AS IS" BASIS, WITHOUT WARRANTIES OR
  12. // CONDITIONS OF ANY KIND, either express or implied. See the License for the
  13. // specific language governing permissions and limitations under the License.
  14. #include "testutil.h"
  15. #include "layer/convolution.h"
  16. static int test_convolution(int w, int h, int c, int outch, int kernel, int dilation, int stride, int pad, int bias, bool use_packing_layout)
  17. {
  18. ncnn::Mat a = RandomMat(w, h, c);
  19. ncnn::ParamDict pd;
  20. pd.set(0, outch);// num_output
  21. pd.set(1, kernel);// kernel_w
  22. pd.set(2, dilation);// dilation_w
  23. pd.set(3, stride);// stride_w
  24. pd.set(4, pad);// pad_w
  25. pd.set(5, bias);// bias_term
  26. pd.set(6, outch*c*kernel*kernel);
  27. std::vector<ncnn::Mat> weights(bias ? 2 : 1);
  28. weights[0] = RandomMat(outch*c*kernel*kernel);
  29. if (bias)
  30. weights[1] = RandomMat(outch);
  31. ncnn::ModelBinFromMatArray mb(weights.data());
  32. ncnn::Option opt;
  33. opt.num_threads = 1;
  34. opt.use_vulkan_compute = true;
  35. opt.use_int8_inference = false;
  36. opt.use_fp16_packed = false;
  37. opt.use_fp16_storage = false;
  38. opt.use_fp16_arithmetic = false;
  39. opt.use_int8_storage = false;
  40. opt.use_int8_arithmetic = false;
  41. opt.use_packing_layout = use_packing_layout;
  42. int ret = test_layer<ncnn::Convolution>("Convolution", pd, mb, opt, a);
  43. if (ret != 0)
  44. {
  45. fprintf(stderr, "test_convolution failed w=%d h=%d c=%d outch=%d kernel=%d dilation=%d stride=%d pad=%d bias=%d use_packing_layout=%d\n", w, h, c, outch, kernel, dilation, stride, pad, bias, use_packing_layout);
  46. }
  47. return ret;
  48. }
  49. static int test_convolution_0()
  50. {
  51. static const int kdsp[24][4] = {
  52. {1, 1, 1, 0},
  53. {1, 1, 2, 0},
  54. {2, 1, 1, 1},
  55. {2, 1, 2, 1},
  56. {2, 2, 1, 1},
  57. {2, 2, 2, 1},
  58. {3, 1, 1, 1},
  59. {3, 1, 2, 1},
  60. {3, 2, 1, 1},
  61. {3, 2, 2, 1},
  62. {4, 1, 1, 2},
  63. {4, 1, 2, 2},
  64. {4, 2, 1, 2},
  65. {4, 2, 2, 2},
  66. {5, 1, 1, 2},
  67. {5, 1, 2, 2},
  68. {5, 2, 1, 2},
  69. {5, 2, 2, 2},
  70. {7, 1, 1, 3},
  71. {7, 1, 2, 3},
  72. {7, 1, 3, 3},
  73. {7, 2, 1, 3},
  74. {7, 2, 2, 3},
  75. {7, 2, 3, 3},
  76. };
  77. for (int i=0; i<24; i++)
  78. {
  79. int ret = 0
  80. || test_convolution(13, 11, 1, 1, kdsp[i][0], kdsp[i][1], kdsp[i][2], kdsp[i][3], 1, false)
  81. || test_convolution(13, 11, 2, 2, kdsp[i][0], kdsp[i][1], kdsp[i][2], kdsp[i][3], 1, false)
  82. || test_convolution(13, 11, 3, 3, kdsp[i][0], kdsp[i][1], kdsp[i][2], kdsp[i][3], 1, false)
  83. || test_convolution(13, 11, 4, 4, kdsp[i][0], kdsp[i][1], kdsp[i][2], kdsp[i][3], 1, false)
  84. || test_convolution(13, 11, 7, 7, kdsp[i][0], kdsp[i][1], kdsp[i][2], kdsp[i][3], 1, false)
  85. || test_convolution(13, 11, 8, 8, kdsp[i][0], kdsp[i][1], kdsp[i][2], kdsp[i][3], 1, false)
  86. || test_convolution(13, 11, 15, 15, kdsp[i][0], kdsp[i][1], kdsp[i][2], kdsp[i][3], 1, false)
  87. || test_convolution(13, 11, 16, 16, kdsp[i][0], kdsp[i][1], kdsp[i][2], kdsp[i][3], 1, false)
  88. || test_convolution(13, 11, 1, 1, kdsp[i][0], kdsp[i][1], kdsp[i][2], kdsp[i][3], 1, true)
  89. || test_convolution(13, 11, 2, 2, kdsp[i][0], kdsp[i][1], kdsp[i][2], kdsp[i][3], 1, true)
  90. || test_convolution(13, 11, 3, 3, kdsp[i][0], kdsp[i][1], kdsp[i][2], kdsp[i][3], 1, true)
  91. || test_convolution(13, 11, 3, 12, kdsp[i][0], kdsp[i][1], kdsp[i][2], kdsp[i][3], 1, true)
  92. || test_convolution(13, 11, 4, 4, kdsp[i][0], kdsp[i][1], kdsp[i][2], kdsp[i][3], 1, true)
  93. || test_convolution(13, 11, 8, 3, kdsp[i][0], kdsp[i][1], kdsp[i][2], kdsp[i][3], 1, true)
  94. || test_convolution(13, 11, 8, 8, kdsp[i][0], kdsp[i][1], kdsp[i][2], kdsp[i][3], 1, true)
  95. || test_convolution(13, 11, 16, 4, kdsp[i][0], kdsp[i][1], kdsp[i][2], kdsp[i][3], 1, true)
  96. || test_convolution(13, 11, 16, 16, kdsp[i][0], kdsp[i][1], kdsp[i][2], kdsp[i][3], 1, true)
  97. ;
  98. if (ret != 0)
  99. return -1;
  100. }
  101. return 0;
  102. }
  103. static int test_convolution_int8(int w, int h, int c, int outch, int kernel, int dilation, int stride, int pad, int bias)
  104. {
  105. ncnn::Mat a = RandomMat(w, h, c);
  106. ncnn::ParamDict pd;
  107. pd.set(0, outch);// num_output
  108. pd.set(1, kernel);// kernel_w
  109. pd.set(2, dilation);// dilation_w
  110. pd.set(3, stride);// stride_w
  111. pd.set(4, pad);// pad_w
  112. pd.set(5, bias);// bias_term
  113. pd.set(6, outch*c*kernel*kernel);
  114. pd.set(8, 1);// int8_scale_term
  115. std::vector<ncnn::Mat> weights(bias ? 4 : 3);
  116. weights[0] = RandomMat(outch*c*kernel*kernel);
  117. if (bias)
  118. {
  119. weights[1] = RandomMat(outch);
  120. weights[2] = RandomMat(outch);
  121. weights[3] = RandomMat(1);
  122. }
  123. else
  124. {
  125. weights[1] = RandomMat(outch);
  126. weights[2] = RandomMat(1);
  127. }
  128. ncnn::ModelBinFromMatArray mb(weights.data());
  129. ncnn::Option opt;
  130. opt.num_threads = 1;
  131. opt.use_vulkan_compute = false;
  132. opt.use_int8_inference = true;
  133. opt.use_fp16_packed = false;
  134. opt.use_fp16_storage = false;
  135. opt.use_fp16_arithmetic = false;
  136. opt.use_int8_storage = false;
  137. opt.use_int8_arithmetic = false;
  138. opt.use_packing_layout = false;
  139. int ret = test_layer<ncnn::Convolution>("Convolution", pd, mb, opt, a);
  140. if (ret != 0)
  141. {
  142. fprintf(stderr, "test_convolution_int8 failed w=%d h=%d c=%d outch=%d kernel=%d dilation=%d stride=%d pad=%d bias=%d\n", w, h, c, outch, kernel, dilation, stride, pad, bias);
  143. }
  144. return 0;
  145. }
  146. static int test_convolution_1()
  147. {
  148. static const int kdsp[24][4] = {
  149. {1, 1, 1, 0},
  150. {1, 1, 2, 0},
  151. {2, 1, 1, 1},
  152. {2, 1, 2, 1},
  153. {2, 2, 1, 1},
  154. {2, 2, 2, 1},
  155. {3, 1, 1, 1},
  156. {3, 1, 2, 1},
  157. {3, 2, 1, 1},
  158. {3, 2, 2, 1},
  159. {4, 1, 1, 2},
  160. {4, 1, 2, 2},
  161. {4, 2, 1, 2},
  162. {4, 2, 2, 2},
  163. {5, 1, 1, 2},
  164. {5, 1, 2, 2},
  165. {5, 2, 1, 2},
  166. {5, 2, 2, 2},
  167. {7, 1, 1, 3},
  168. {7, 1, 2, 3},
  169. {7, 1, 3, 3},
  170. {7, 2, 1, 3},
  171. {7, 2, 2, 3},
  172. {7, 2, 3, 3},
  173. };
  174. for (int i=0; i<24; i++)
  175. {
  176. int ret = 0
  177. || test_convolution_int8(13, 11, 1, 1, kdsp[i][0], kdsp[i][1], kdsp[i][2], kdsp[i][3], 1)
  178. || test_convolution_int8(13, 11, 2, 2, kdsp[i][0], kdsp[i][1], kdsp[i][2], kdsp[i][3], 1)
  179. || test_convolution_int8(13, 11, 3, 3, kdsp[i][0], kdsp[i][1], kdsp[i][2], kdsp[i][3], 1)
  180. || test_convolution_int8(13, 11, 4, 4, kdsp[i][0], kdsp[i][1], kdsp[i][2], kdsp[i][3], 1)
  181. || test_convolution_int8(13, 11, 7, 7, kdsp[i][0], kdsp[i][1], kdsp[i][2], kdsp[i][3], 1)
  182. || test_convolution_int8(13, 11, 8, 8, kdsp[i][0], kdsp[i][1], kdsp[i][2], kdsp[i][3], 1)
  183. || test_convolution_int8(13, 11, 15, 15, kdsp[i][0], kdsp[i][1], kdsp[i][2], kdsp[i][3], 1)
  184. || test_convolution_int8(13, 11, 16, 16, kdsp[i][0], kdsp[i][1], kdsp[i][2], kdsp[i][3], 1)
  185. || test_convolution_int8(13, 11, 1, 1, kdsp[i][0], kdsp[i][1], kdsp[i][2], kdsp[i][3], 1)
  186. || test_convolution_int8(13, 11, 2, 2, kdsp[i][0], kdsp[i][1], kdsp[i][2], kdsp[i][3], 1)
  187. || test_convolution_int8(13, 11, 3, 3, kdsp[i][0], kdsp[i][1], kdsp[i][2], kdsp[i][3], 1)
  188. || test_convolution_int8(13, 11, 3, 12, kdsp[i][0], kdsp[i][1], kdsp[i][2], kdsp[i][3], 1)
  189. || test_convolution_int8(13, 11, 4, 4, kdsp[i][0], kdsp[i][1], kdsp[i][2], kdsp[i][3], 1)
  190. || test_convolution_int8(13, 11, 8, 3, kdsp[i][0], kdsp[i][1], kdsp[i][2], kdsp[i][3], 1)
  191. || test_convolution_int8(13, 11, 8, 8, kdsp[i][0], kdsp[i][1], kdsp[i][2], kdsp[i][3], 1)
  192. || test_convolution_int8(13, 11, 16, 4, kdsp[i][0], kdsp[i][1], kdsp[i][2], kdsp[i][3], 1)
  193. || test_convolution_int8(13, 11, 16, 16, kdsp[i][0], kdsp[i][1], kdsp[i][2], kdsp[i][3], 1)
  194. ;
  195. if (ret != 0)
  196. return -1;
  197. }
  198. return 0;
  199. }
  200. int main()
  201. {
  202. SRAND(7767517);
  203. return test_convolution_0() || test_convolution_1();
  204. }