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2 | mjames | 1 | /* |
2 | * Copyright (C) 2010-2018 Arm Limited or its affiliates. All rights reserved. |
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3 | * |
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4 | * SPDX-License-Identifier: Apache-2.0 |
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5 | * |
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6 | * Licensed under the Apache License, Version 2.0 (the License); you may |
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7 | * not use this file except in compliance with the License. |
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8 | * You may obtain a copy of the License at |
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9 | * |
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10 | * www.apache.org/licenses/LICENSE-2.0 |
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11 | * |
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12 | * Unless required by applicable law or agreed to in writing, software |
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13 | * distributed under the License is distributed on an AS IS BASIS, WITHOUT |
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14 | * WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. |
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15 | * See the License for the specific language governing permissions and |
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16 | * limitations under the License. |
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17 | */ |
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18 | |||
19 | /* ---------------------------------------------------------------------- |
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20 | * Project: CMSIS NN Library |
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21 | * Title: arm_convolve_HWC_q15_basic.c |
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22 | * Description: Q15 version of convolution |
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23 | * |
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24 | * $Date: 17. January 2018 |
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25 | * $Revision: V.1.0.0 |
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26 | * |
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27 | * Target Processor: Cortex-M cores |
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28 | * |
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29 | * -------------------------------------------------------------------- */ |
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30 | |||
31 | #include "arm_math.h" |
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32 | #include "arm_nnfunctions.h" |
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33 | |||
34 | /** |
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35 | * @ingroup groupNN |
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36 | */ |
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37 | |||
38 | /** |
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39 | * @addtogroup NNConv |
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40 | * @{ |
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41 | */ |
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42 | |||
43 | /** |
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44 | * @brief Basic Q15 convolution function |
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45 | * @param[in] Im_in pointer to input tensor |
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46 | * @param[in] dim_im_in input tensor dimention |
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47 | * @param[in] ch_im_in number of input tensor channels |
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48 | * @param[in] wt pointer to kernel weights |
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49 | * @param[in] ch_im_out number of filters, i.e., output tensor channels |
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50 | * @param[in] dim_kernel filter kernel size |
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51 | * @param[in] padding padding sizes |
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52 | * @param[in] stride convolution stride |
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53 | * @param[in] bias pointer to bias |
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54 | * @param[in] bias_shift amount of left-shift for bias |
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55 | * @param[in] out_shift amount of right-shift for output |
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56 | * @param[in,out] Im_out pointer to output tensor |
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57 | * @param[in] dim_im_out output tensor dimension |
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58 | * @param[in,out] bufferA pointer to buffer space for input |
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59 | * @param[in,out] bufferB pointer to buffer space for output |
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60 | * @return The function returns <code>ARM_MATH_SUCCESS</code> |
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61 | * |
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62 | * @details |
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63 | * |
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64 | * <b>Buffer size:</b> |
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65 | * |
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66 | * bufferA size: ch_im_in*dim_kernel*dim_kernel |
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67 | * |
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68 | * bufferB size: 0 |
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69 | * |
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70 | * This basic version is designed to work for any input tensor and weight |
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71 | * dimension. |
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72 | */ |
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73 | |||
74 | arm_status |
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75 | arm_convolve_HWC_q15_basic(const q15_t * Im_in, |
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76 | const uint16_t dim_im_in, |
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77 | const uint16_t ch_im_in, |
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78 | const q15_t * wt, |
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79 | const uint16_t ch_im_out, |
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80 | const uint16_t dim_kernel, |
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81 | const uint16_t padding, |
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82 | const uint16_t stride, |
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83 | const q15_t * bias, |
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84 | const uint16_t bias_shift, |
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85 | const uint16_t out_shift, |
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86 | q15_t * Im_out, |
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87 | const uint16_t dim_im_out, |
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88 | q15_t * bufferA, |
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89 | q7_t * bufferB) |
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90 | { |
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91 | |||
92 | #if defined (ARM_MATH_DSP) |
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93 | /* Run the following code for Cortex-M4 and Cortex-M7 */ |
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94 | |||
95 | int16_t i_out_y, i_out_x, i_ker_y, i_ker_x; |
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96 | |||
97 | uint16_t im2col_out_pixel_index = 0; |
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98 | q15_t *pBuffer = bufferA; |
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99 | q15_t *pOut = Im_out; |
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100 | q15_t *im_buffer = bufferA; |
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101 | const q15_t *pA; |
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102 | int i; |
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103 | |||
104 | /* This part implements the im2col function */ |
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105 | for (i_out_y = 0; i_out_y < dim_im_out; i_out_y++) |
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106 | { |
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107 | for (i_out_x = 0; i_out_x < dim_im_out; i_out_x++) |
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108 | { |
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109 | for (i_ker_y = i_out_y * stride - padding; i_ker_y < i_out_y * stride - padding + dim_kernel; i_ker_y++) |
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110 | { |
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111 | for (i_ker_x = i_out_x * stride - padding; i_ker_x < i_out_x * stride - padding + dim_kernel; i_ker_x++) |
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112 | { |
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113 | if (i_ker_y < 0 || i_ker_y >= dim_im_in || i_ker_x < 0 || i_ker_x >= dim_im_in) |
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114 | { |
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115 | /* Filling 0 for out-of-bound paddings */ |
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116 | /* arm_fill_q15(0, pBuffer, ch_im_in); */ |
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117 | memset(pBuffer, 0, sizeof(q15_t)*ch_im_in); |
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118 | } else |
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119 | { |
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120 | /* arm_copy_q15((q15_t *) Im_in + (i_ker_y * dim_im_in + i_ker_x) * ch_im_in, pBuffer, ch_im_in); */ |
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121 | memcpy(pBuffer, (q15_t *) Im_in + (i_ker_y * dim_im_in + i_ker_x) * ch_im_in, sizeof(q15_t)*ch_im_in); |
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122 | } |
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123 | pBuffer += ch_im_in; |
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124 | } |
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125 | } |
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126 | |||
127 | pA = wt; |
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128 | for (i = 0; i < ch_im_out; i++) |
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129 | { |
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130 | q31_t sum = ((q31_t)bias[i] << bias_shift) + NN_ROUND(out_shift); |
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131 | q15_t *pB = im_buffer; |
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132 | uint16_t colCnt = ch_im_in * dim_kernel * dim_kernel >> 2; |
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133 | while (colCnt) |
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134 | { |
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135 | q31_t inA1 = *__SIMD32(pA)++; |
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136 | q31_t inB1 = *__SIMD32(pB)++; |
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137 | q31_t inA2 = *__SIMD32(pA)++; |
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138 | q31_t inB2 = *__SIMD32(pB)++; |
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139 | |||
140 | sum = __SMLAD(inA1, inB1, sum); |
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141 | sum = __SMLAD(inA2, inB2, sum); |
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142 | |||
143 | colCnt--; |
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144 | } |
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145 | colCnt = ch_im_in * dim_kernel * dim_kernel & 0x3; |
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146 | while (colCnt) |
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147 | { |
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148 | q15_t inA1 = *pA++; |
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149 | q15_t inB1 = *pB++; |
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150 | sum += inA1 * inB1; |
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151 | colCnt--; |
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152 | } |
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153 | *pOut = (q15_t) __SSAT((sum >> out_shift), 16); |
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154 | pOut++; |
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155 | } |
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156 | |||
157 | /* counter reset */ |
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158 | pBuffer = im_buffer; |
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159 | im2col_out_pixel_index++; |
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160 | } |
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161 | } |
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162 | |||
163 | #else |
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164 | /* Run the following code as reference implementation for Cortex-M0 and Cortex-M3 */ |
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165 | uint16_t i, j, k, l, m, n; |
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166 | int conv_out; |
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167 | signed char in_row, in_col; |
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168 | |||
169 | for (i = 0; i < ch_im_out; i++) |
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170 | { |
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171 | for (j = 0; j < dim_im_out; j++) |
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172 | { |
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173 | for (k = 0; k < dim_im_out; k++) |
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174 | { |
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175 | conv_out = ((q31_t)bias[i] << bias_shift) + NN_ROUND(out_shift); |
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176 | for (m = 0; m < dim_kernel; m++) |
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177 | { |
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178 | for (n = 0; n < dim_kernel; n++) |
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179 | { |
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180 | in_row = stride * j + m - padding; |
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181 | in_col = stride * k + n - padding; |
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182 | if (in_row >= 0 && in_col >= 0 && in_row < dim_im_in && in_col < dim_im_in) |
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183 | { |
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184 | for (l = 0; l < ch_im_in; l++) |
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185 | { |
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186 | conv_out += |
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187 | Im_in[(in_row * dim_im_in + in_col) * ch_im_in + |
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188 | l] * wt[i * ch_im_in * dim_kernel * dim_kernel + (m * dim_kernel + |
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189 | n) * ch_im_in + l]; |
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190 | } |
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191 | } |
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192 | } |
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193 | } |
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194 | Im_out[i + (j * dim_im_out + k) * ch_im_out] = (q15_t) __SSAT((conv_out >> out_shift), 16); |
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195 | } |
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196 | } |
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197 | } |
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198 | |||
199 | #endif /* ARM_MATH_DSP */ |
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200 | |||
201 | /* Return to application */ |
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202 | return ARM_MATH_SUCCESS; |
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203 | } |
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204 | |||
205 | /** |
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206 | * @} end of NNConv group |
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207 | */ |