[4cb5496] | 1 | /* |
---|
| 2 | Copyright (C) 2018 Paul Brossier <piem@aubio.org> |
---|
| 3 | |
---|
| 4 | This file is part of aubio. |
---|
| 5 | |
---|
| 6 | aubio is free software: you can redistribute it and/or modify |
---|
| 7 | it under the terms of the GNU General Public License as published by |
---|
| 8 | the Free Software Foundation, either version 3 of the License, or |
---|
| 9 | (at your option) any later version. |
---|
| 10 | |
---|
| 11 | aubio is distributed in the hope that it will be useful, |
---|
| 12 | but WITHOUT ANY WARRANTY; without even the implied warranty of |
---|
| 13 | MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE. See the |
---|
| 14 | GNU General Public License for more details. |
---|
| 15 | |
---|
| 16 | You should have received a copy of the GNU General Public License |
---|
| 17 | along with aubio. If not, see <http://www.gnu.org/licenses/>. |
---|
| 18 | |
---|
| 19 | */ |
---|
| 20 | |
---|
| 21 | |
---|
| 22 | #include "aubio_priv.h" |
---|
| 23 | #include "fmat.h" |
---|
| 24 | #include "tensor.h" |
---|
| 25 | #include "conv1d.h" |
---|
| 26 | |
---|
| 27 | typedef enum |
---|
| 28 | { |
---|
| 29 | PAD_SAME = 0, |
---|
| 30 | PAD_VALID = 1, |
---|
| 31 | PAD_CAUSAL = 2, // TODO (1d only, for dilated convolution) |
---|
| 32 | } aubio_conv1d_padding_type; |
---|
| 33 | |
---|
| 34 | struct _aubio_conv1d_t { |
---|
| 35 | // define internals here |
---|
| 36 | uint_t n_filters; |
---|
| 37 | uint_t kernel_shape; // kernel sizes |
---|
| 38 | uint_t stride_shape; // stride sizes |
---|
| 39 | |
---|
| 40 | aubio_conv1d_padding_type padding_mode; |
---|
| 41 | |
---|
| 42 | // these will be set after calling get_output_shape |
---|
| 43 | aubio_tensor_t *kernel; |
---|
| 44 | fvec_t *bias; |
---|
| 45 | uint_t output_shape[2]; // shape of output |
---|
| 46 | uint_t padding_start; // {top, left} padding |
---|
| 47 | }; |
---|
| 48 | |
---|
| 49 | static void aubio_conv1d_debug(aubio_conv1d_t *c, aubio_tensor_t *input_tensor); |
---|
| 50 | |
---|
| 51 | aubio_conv1d_t *new_aubio_conv1d(uint_t n_filters, uint_t kernel_shape[1]) |
---|
| 52 | { |
---|
| 53 | aubio_conv1d_t *c = AUBIO_NEW(aubio_conv1d_t); |
---|
| 54 | |
---|
| 55 | // validate input parameters |
---|
| 56 | AUBIO_GOTO_FAILURE((sint_t)n_filters >= 1); |
---|
| 57 | AUBIO_GOTO_FAILURE((sint_t)kernel_shape[0] >= 1); |
---|
| 58 | |
---|
| 59 | // set internal variables |
---|
| 60 | c->n_filters = n_filters; |
---|
| 61 | c->kernel_shape = kernel_shape[0]; |
---|
| 62 | |
---|
| 63 | // default to padding_mode="valid" |
---|
| 64 | c->padding_mode = PAD_VALID; |
---|
| 65 | // set default stride_shape to (1) |
---|
| 66 | uint_t stride_shape[1] = {1}; |
---|
| 67 | aubio_conv1d_set_stride(c, stride_shape); |
---|
| 68 | |
---|
| 69 | return c; |
---|
| 70 | |
---|
| 71 | failure: |
---|
| 72 | del_aubio_conv1d(c); |
---|
| 73 | return NULL; |
---|
| 74 | } |
---|
| 75 | |
---|
| 76 | void del_aubio_conv1d(aubio_conv1d_t *c) |
---|
| 77 | { |
---|
| 78 | AUBIO_ASSERT(c); |
---|
| 79 | // destroy internals here |
---|
| 80 | if (c->kernel) { |
---|
| 81 | del_aubio_tensor(c->kernel); |
---|
| 82 | } |
---|
| 83 | if (c->bias) |
---|
| 84 | del_fvec(c->bias); |
---|
| 85 | AUBIO_FREE(c); |
---|
| 86 | } |
---|
| 87 | |
---|
| 88 | |
---|
| 89 | uint_t aubio_conv1d_set_stride(aubio_conv1d_t *c, uint_t stride[1]) |
---|
| 90 | { |
---|
| 91 | if ((sint_t)stride[0] < 1) return AUBIO_FAIL; |
---|
| 92 | c->stride_shape = stride[0]; |
---|
| 93 | return AUBIO_OK; |
---|
| 94 | } |
---|
| 95 | |
---|
| 96 | uint_t aubio_conv1d_get_stride(aubio_conv1d_t *c) |
---|
| 97 | { |
---|
| 98 | return c->stride_shape; |
---|
| 99 | } |
---|
| 100 | |
---|
| 101 | uint_t aubio_conv1d_get_output_shape(aubio_conv1d_t *c, |
---|
| 102 | aubio_tensor_t *input_tensor, |
---|
| 103 | uint_t *shape) |
---|
| 104 | { |
---|
| 105 | uint_t output_shape[2] = {0, c->n_filters}; |
---|
| 106 | uint_t padding_start = 0; |
---|
| 107 | |
---|
| 108 | // check input parameters |
---|
| 109 | AUBIO_ASSERT(input_tensor); |
---|
| 110 | AUBIO_ASSERT(shape); |
---|
| 111 | |
---|
| 112 | // reset output array |
---|
| 113 | shape[0] = 0; |
---|
| 114 | shape[1] = 0; |
---|
| 115 | |
---|
| 116 | switch (c->padding_mode) { |
---|
| 117 | case PAD_SAME: |
---|
| 118 | // compute output shape |
---|
[f4c5a95] | 119 | output_shape[0] = (uint_t)CEIL(input_tensor->shape[0] |
---|
[4cb5496] | 120 | / (smpl_t)c->stride_shape); |
---|
| 121 | |
---|
| 122 | uint_t padding_shape; // total amount of padding |
---|
| 123 | padding_shape = (output_shape[0] - 1) * c->stride_shape + |
---|
[f4c5a95] | 124 | c->kernel_shape - input_tensor->shape[0]; |
---|
[4cb5496] | 125 | |
---|
| 126 | padding_start = FLOOR(padding_shape / 2); |
---|
| 127 | break; |
---|
| 128 | case PAD_VALID: |
---|
[f4c5a95] | 129 | output_shape[0] = (input_tensor->shape[0] - c->kernel_shape + 1) |
---|
[4cb5496] | 130 | / c->stride_shape; |
---|
| 131 | |
---|
| 132 | padding_start = 0; |
---|
| 133 | break; |
---|
| 134 | case PAD_CAUSAL: |
---|
| 135 | // TODO |
---|
| 136 | return AUBIO_FAIL; |
---|
| 137 | default: |
---|
| 138 | return AUBIO_FAIL; |
---|
| 139 | } |
---|
| 140 | |
---|
[f4c5a95] | 141 | uint_t kernel_shape[3]; |
---|
| 142 | kernel_shape[0] = c->kernel_shape; // filter length |
---|
| 143 | kernel_shape[1] = input_tensor->shape[1]; // channels |
---|
| 144 | kernel_shape[2] = c->n_filters; // outputs |
---|
[4cb5496] | 145 | |
---|
| 146 | if (c->kernel) del_aubio_tensor(c->kernel); |
---|
| 147 | if (c->bias) del_fvec(c->bias); |
---|
| 148 | |
---|
[f4c5a95] | 149 | c->kernel = new_aubio_tensor(3, kernel_shape); |
---|
[4cb5496] | 150 | if (!c->kernel) return AUBIO_FAIL; |
---|
| 151 | c->bias = new_fvec(c->n_filters); |
---|
| 152 | |
---|
| 153 | // set internals upon success |
---|
| 154 | c->output_shape[0] = output_shape[0]; |
---|
| 155 | c->output_shape[1] = output_shape[1]; |
---|
| 156 | |
---|
| 157 | c->padding_start = padding_start; |
---|
| 158 | |
---|
| 159 | // set output |
---|
| 160 | shape[0] = output_shape[0]; |
---|
| 161 | shape[1] = output_shape[1]; |
---|
| 162 | |
---|
| 163 | aubio_conv1d_debug(c, input_tensor); |
---|
| 164 | |
---|
| 165 | return AUBIO_OK; |
---|
| 166 | } |
---|
| 167 | |
---|
| 168 | void aubio_conv1d_debug(aubio_conv1d_t *c, aubio_tensor_t *input_tensor) |
---|
| 169 | { |
---|
| 170 | // print some info |
---|
| 171 | AUBIO_ASSERT(c); |
---|
[f4c5a95] | 172 | uint_t n_params = (c->kernel->shape[0] * c->kernel->shape[2] + 1) |
---|
| 173 | * c->kernel->shape[1] * c->kernel->shape[3]; |
---|
[4cb5496] | 174 | AUBIO_DBG("conv1d: input (%d, %d) ¤ conv1d (%d, %d, %d)" |
---|
| 175 | " : (%d, %d)" |
---|
| 176 | " (%d params, stride (%d), pad_start [%d])\n", |
---|
[f4c5a95] | 177 | input_tensor->shape[0], input_tensor->shape[1], |
---|
| 178 | c->kernel->shape[0], c->kernel->shape[1], c->kernel->shape[2], |
---|
[4cb5496] | 179 | c->output_shape[0], c->output_shape[1], |
---|
| 180 | n_params, |
---|
| 181 | c->stride_shape, |
---|
| 182 | -c->padding_start); |
---|
| 183 | } |
---|
| 184 | |
---|
| 185 | uint_t aubio_conv1d_check_output_shape(aubio_conv1d_t *c, |
---|
| 186 | aubio_tensor_t *input_tensor, |
---|
| 187 | aubio_tensor_t *activations) |
---|
| 188 | { |
---|
| 189 | // fetch output_shape if it hasn't been done before |
---|
| 190 | if (c->output_shape[0] == 0 || |
---|
| 191 | c->output_shape[1] == 0) { |
---|
| 192 | if (!aubio_conv1d_get_output_shape(c, input_tensor, c->output_shape)) { |
---|
| 193 | return AUBIO_FAIL; |
---|
| 194 | } |
---|
| 195 | } |
---|
| 196 | |
---|
| 197 | // check we have as many filters as expected activation outputs |
---|
[f4c5a95] | 198 | if (activations->shape[1] != c->n_filters) return AUBIO_FAIL; |
---|
| 199 | if (activations->shape[1] != c->kernel->shape[2]) return AUBIO_FAIL; |
---|
| 200 | if (input_tensor->shape[1] != c->kernel->shape[1]) return AUBIO_FAIL; |
---|
[4cb5496] | 201 | |
---|
| 202 | // check tensor activations has the expected sizes |
---|
[f4c5a95] | 203 | if (c->output_shape[0] != activations->shape[0]) return AUBIO_FAIL; |
---|
| 204 | if (c->output_shape[1] != activations->shape[1]) return AUBIO_FAIL; |
---|
[4cb5496] | 205 | return AUBIO_OK; |
---|
| 206 | } |
---|
| 207 | |
---|
| 208 | void aubio_conv1d_do(aubio_conv1d_t *c, aubio_tensor_t *input_tensor, |
---|
| 209 | aubio_tensor_t *activations) |
---|
| 210 | { |
---|
| 211 | uint_t i, j, k, a; |
---|
| 212 | uint_t stride_a, kk; |
---|
| 213 | sint_t x; |
---|
| 214 | smpl_t s, w, bias, acc; |
---|
| 215 | |
---|
| 216 | AUBIO_ASSERT(c && input_tensor && activations); |
---|
| 217 | // check we have the correct output activation sizes |
---|
| 218 | if (aubio_conv1d_check_output_shape(c, input_tensor, activations)) |
---|
| 219 | { |
---|
| 220 | AUBIO_ERR("conv1d: check_output_shape failed\n"); |
---|
| 221 | return; |
---|
| 222 | } |
---|
| 223 | |
---|
| 224 | // for each kernel filter k |
---|
[f4c5a95] | 225 | for (i = 0; i < activations->shape[1]; i++) { |
---|
[4cb5496] | 226 | // get bias |
---|
| 227 | bias = c->bias->data[i]; |
---|
| 228 | stride_a = 0; // k * c->stride_shape |
---|
| 229 | // for each output |
---|
[f4c5a95] | 230 | for (j = 0; j < activations->shape[0]; j++) { |
---|
[4cb5496] | 231 | // reset output |
---|
| 232 | acc = 0; |
---|
| 233 | // compute convolution for one kernel |
---|
| 234 | for (a = 0; a < c->kernel_shape; a++) { |
---|
| 235 | x = stride_a + a - c->padding_start; |
---|
[f4c5a95] | 236 | if ((x > -1) && (x < (sint_t)input_tensor->shape[0])) { |
---|
[4cb5496] | 237 | kk = 0; |
---|
| 238 | // for each input channel |
---|
[f4c5a95] | 239 | for (k = 0; k < input_tensor->shape[1]; k++) { |
---|
[4cb5496] | 240 | // get kernel weight |
---|
| 241 | w = c->kernel->data[a][kk + i]; |
---|
| 242 | // get input sample |
---|
| 243 | s = input_tensor->data[x][k]; |
---|
| 244 | acc += w * s; |
---|
[f4c5a95] | 245 | kk += c->kernel->shape[2]; |
---|
[4cb5496] | 246 | } |
---|
| 247 | } |
---|
| 248 | } |
---|
| 249 | stride_a += c->stride_shape; |
---|
| 250 | // apply bias |
---|
| 251 | acc += bias; |
---|
| 252 | // compute RELU |
---|
| 253 | activations->data[j][i] = MAX(acc, 0); |
---|
| 254 | } |
---|
| 255 | } |
---|
| 256 | } |
---|
| 257 | |
---|
| 258 | uint_t aubio_conv1d_set_padding_mode(aubio_conv1d_t *c, |
---|
| 259 | const char_t *padding_mode) |
---|
| 260 | { |
---|
| 261 | AUBIO_ASSERT(c && padding_mode); |
---|
| 262 | if (strncmp(padding_mode, "same", PATH_MAX) == 0) { |
---|
| 263 | c->padding_mode = PAD_SAME; |
---|
| 264 | } else if (strncmp(padding_mode, "valid", PATH_MAX) == 0) { |
---|
| 265 | c->padding_mode = PAD_VALID; |
---|
| 266 | } else { |
---|
| 267 | return AUBIO_FAIL; |
---|
| 268 | } |
---|
| 269 | return AUBIO_OK; |
---|
| 270 | } |
---|
| 271 | |
---|
| 272 | aubio_tensor_t *aubio_conv1d_get_kernel(aubio_conv1d_t* c) |
---|
| 273 | { |
---|
| 274 | AUBIO_ASSERT(c && c->kernel); |
---|
| 275 | return c->kernel; |
---|
| 276 | } |
---|
| 277 | |
---|
| 278 | fvec_t *aubio_conv1d_get_bias(aubio_conv1d_t* c) |
---|
| 279 | { |
---|
| 280 | AUBIO_ASSERT(c && c->bias); |
---|
| 281 | return c->bias; |
---|
| 282 | } |
---|