arm_convolve_HWC_q7_basic.c 8.1 KB

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  1. /*
  2. * Copyright (C) 2010-2018 Arm Limited or its affiliates. All rights reserved.
  3. *
  4. * SPDX-License-Identifier: Apache-2.0
  5. *
  6. * Licensed under the Apache License, Version 2.0 (the License); you may
  7. * not use this file except in compliance with the License.
  8. * You may obtain a copy of the License at
  9. *
  10. * www.apache.org/licenses/LICENSE-2.0
  11. *
  12. * Unless required by applicable law or agreed to in writing, software
  13. * distributed under the License is distributed on an AS IS BASIS, WITHOUT
  14. * WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
  15. * See the License for the specific language governing permissions and
  16. * limitations under the License.
  17. */
  18. /* ----------------------------------------------------------------------
  19. * Project: CMSIS NN Library
  20. * Title: arm_convolve_HWC_q7_basic.c
  21. * Description: Q7 version of convolution
  22. *
  23. * $Date: 17. January 2018
  24. * $Revision: V.1.0.0
  25. *
  26. * Target Processor: Cortex-M cores
  27. *
  28. * -------------------------------------------------------------------- */
  29. #include "arm_math.h"
  30. #include "arm_nnfunctions.h"
  31. /**
  32. * @ingroup groupNN
  33. */
  34. /**
  35. * @addtogroup NNConv
  36. * @{
  37. */
  38. /**
  39. * @brief Basic Q7 convolution function
  40. * @param[in] Im_in pointer to input tensor
  41. * @param[in] dim_im_in input tensor dimention
  42. * @param[in] ch_im_in number of input tensor channels
  43. * @param[in] wt pointer to kernel weights
  44. * @param[in] ch_im_out number of filters, i.e., output tensor channels
  45. * @param[in] dim_kernel filter kernel size
  46. * @param[in] padding padding sizes
  47. * @param[in] stride convolution stride
  48. * @param[in] bias pointer to bias
  49. * @param[in] bias_shift amount of left-shift for bias
  50. * @param[in] out_shift amount of right-shift for output
  51. * @param[in,out] Im_out pointer to output tensor
  52. * @param[in] dim_im_out output tensor dimension
  53. * @param[in,out] bufferA pointer to buffer space for input
  54. * @param[in,out] bufferB pointer to buffer space for output
  55. * @return The function returns <code>ARM_MATH_SUCCESS</code>
  56. *
  57. * @details
  58. *
  59. * <b>Buffer size:</b>
  60. *
  61. * bufferA size: 2*ch_im_in*dim_kernel*dim_kernel
  62. *
  63. * bufferB size: 0
  64. *
  65. * This basic version is designed to work for any input tensor and weight
  66. * dimension.
  67. */
  68. arm_status
  69. arm_convolve_HWC_q7_basic(const q7_t * Im_in,
  70. const uint16_t dim_im_in,
  71. const uint16_t ch_im_in,
  72. const q7_t * wt,
  73. const uint16_t ch_im_out,
  74. const uint16_t dim_kernel,
  75. const uint16_t padding,
  76. const uint16_t stride,
  77. const q7_t * bias,
  78. const uint16_t bias_shift,
  79. const uint16_t out_shift,
  80. q7_t * Im_out,
  81. const uint16_t dim_im_out,
  82. q15_t * bufferA,
  83. q7_t * bufferB)
  84. {
  85. (void)bufferB;
  86. #if defined (ARM_MATH_DSP)
  87. /* Run the following code for Cortex-M4 and Cortex-M7 */
  88. int16_t i_out_y, i_out_x, i_ker_y, i_ker_x;
  89. /*
  90. * Here we use bufferA as q15_t internally as computation are done with q15_t level
  91. * im2col are done to output in q15_t format from q7_t input
  92. */
  93. q15_t *pBuffer = bufferA;
  94. q7_t *pOut = Im_out;
  95. /* This part implements the im2col function */
  96. for (i_out_y = 0; i_out_y < dim_im_out; i_out_y++)
  97. {
  98. for (i_out_x = 0; i_out_x < dim_im_out; i_out_x++)
  99. {
  100. for (i_ker_y = i_out_y * stride - padding; i_ker_y < i_out_y * stride - padding + dim_kernel; i_ker_y++)
  101. {
  102. for (i_ker_x = i_out_x * stride - padding; i_ker_x < i_out_x * stride - padding + dim_kernel; i_ker_x++)
  103. {
  104. if (i_ker_y < 0 || i_ker_y >= dim_im_in || i_ker_x < 0 || i_ker_x >= dim_im_in)
  105. {
  106. /* Filling 0 for out-of-bound paddings */
  107. /* arm_fill_q15(0, pBuffer, ch_im_in); */
  108. memset(pBuffer, 0, sizeof(q15_t)*ch_im_in);
  109. } else
  110. {
  111. /* Copying the pixel data to column */
  112. arm_q7_to_q15_no_shift((q7_t *)
  113. Im_in + (i_ker_y * dim_im_in + i_ker_x) * ch_im_in, pBuffer, ch_im_in);
  114. }
  115. pBuffer += ch_im_in;
  116. }
  117. }
  118. /* Computation is filed for every 2 columns */
  119. if (pBuffer == bufferA + 2 * ch_im_in * dim_kernel * dim_kernel)
  120. {
  121. pOut =
  122. arm_nn_mat_mult_kernel_q7_q15(wt, bufferA,
  123. ch_im_out,
  124. ch_im_in *
  125. dim_kernel * dim_kernel, bias_shift, out_shift, bias, pOut);
  126. /* counter reset */
  127. pBuffer = bufferA;
  128. }
  129. }
  130. }
  131. /* left-over because odd number of output pixels */
  132. if (pBuffer != bufferA)
  133. {
  134. const q7_t *pA = wt;
  135. int i;
  136. for (i = 0; i < ch_im_out; i++)
  137. {
  138. /* Load the accumulator with bias first */
  139. q31_t sum = ((q31_t)bias[i] << bias_shift) + NN_ROUND(out_shift);
  140. /* Point to the beging of the im2col buffer */
  141. const q15_t *pB = bufferA;
  142. /* Each time it process 4 entries */
  143. uint16_t colCnt = ch_im_in * dim_kernel * dim_kernel >> 2;
  144. while (colCnt)
  145. {
  146. q31_t inA1, inA2;
  147. q31_t inB1, inB2;
  148. pA = read_and_pad(pA, &inA1, &inA2);
  149. inB1 = arm_nn_read_q15x2_ia(&pB);
  150. sum = __SMLAD(inA1, inB1, sum);
  151. inB2 = arm_nn_read_q15x2_ia(&pB);
  152. sum = __SMLAD(inA2, inB2, sum);
  153. colCnt--;
  154. }
  155. colCnt = ch_im_in * dim_kernel * dim_kernel & 0x3;
  156. while (colCnt)
  157. {
  158. q7_t inA1 = *pA++;
  159. q15_t inB1 = *pB++;
  160. sum += inA1 * inB1;
  161. colCnt--;
  162. }
  163. *pOut++ = (q7_t) __SSAT((sum >> out_shift), 8);
  164. }
  165. }
  166. #else
  167. /* Run the following code as reference implementation for Cortex-M0 and Cortex-M3 */
  168. uint16_t i, j, k, l, m, n;
  169. int conv_out;
  170. signed char in_row, in_col;
  171. for (i = 0; i < ch_im_out; i++)
  172. {
  173. for (j = 0; j < dim_im_out; j++)
  174. {
  175. for (k = 0; k < dim_im_out; k++)
  176. {
  177. conv_out = ((q31_t)bias[i] << bias_shift) + NN_ROUND(out_shift);
  178. for (m = 0; m < dim_kernel; m++)
  179. {
  180. for (n = 0; n < dim_kernel; n++)
  181. {
  182. // if-for implementation
  183. in_row = stride * j + m - padding;
  184. in_col = stride * k + n - padding;
  185. if (in_row >= 0 && in_col >= 0 && in_row < dim_im_in && in_col < dim_im_in)
  186. {
  187. for (l = 0; l < ch_im_in; l++)
  188. {
  189. conv_out +=
  190. Im_in[(in_row * dim_im_in + in_col) * ch_im_in +
  191. l] * wt[i * ch_im_in * dim_kernel * dim_kernel + (m * dim_kernel +
  192. n) * ch_im_in + l];
  193. }
  194. }
  195. }
  196. }
  197. Im_out[i + (j * dim_im_out + k) * ch_im_out] = (q7_t) __SSAT((conv_out >> out_shift), 8);
  198. }
  199. }
  200. }
  201. #endif /* ARM_MATH_DSP */
  202. /* Return to application */
  203. return ARM_MATH_SUCCESS;
  204. }
  205. /**
  206. * @} end of NNConv group
  207. */