A bundled STM32F10x Std Periph and CMSIS library
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  1. /* ----------------------------------------------------------------------------
  2. * Copyright (C) 2010-2014 ARM Limited. All rights reserved.
  3. *
  4. * $Date: 12. March 2014
  5. * $Revision: V1.4.4
  6. *
  7. * Project: CMSIS DSP Library
  8. * Title: arm_conv_f32.c
  9. *
  10. * Description: Convolution of floating-point sequences.
  11. *
  12. * Target Processor: Cortex-M4/Cortex-M3/Cortex-M0
  13. *
  14. * Redistribution and use in source and binary forms, with or without
  15. * modification, are permitted provided that the following conditions
  16. * are met:
  17. * - Redistributions of source code must retain the above copyright
  18. * notice, this list of conditions and the following disclaimer.
  19. * - Redistributions in binary form must reproduce the above copyright
  20. * notice, this list of conditions and the following disclaimer in
  21. * the documentation and/or other materials provided with the
  22. * distribution.
  23. * - Neither the name of ARM LIMITED nor the names of its contributors
  24. * may be used to endorse or promote products derived from this
  25. * software without specific prior written permission.
  26. *
  27. * THIS SOFTWARE IS PROVIDED BY THE COPYRIGHT HOLDERS AND CONTRIBUTORS
  28. * "AS IS" AND ANY EXPRESS OR IMPLIED WARRANTIES, INCLUDING, BUT NOT
  29. * LIMITED TO, THE IMPLIED WARRANTIES OF MERCHANTABILITY AND FITNESS
  30. * FOR A PARTICULAR PURPOSE ARE DISCLAIMED. IN NO EVENT SHALL THE
  31. * COPYRIGHT OWNER OR CONTRIBUTORS BE LIABLE FOR ANY DIRECT, INDIRECT,
  32. * INCIDENTAL, SPECIAL, EXEMPLARY, OR CONSEQUENTIAL DAMAGES (INCLUDING,
  33. * BUT NOT LIMITED TO, PROCUREMENT OF SUBSTITUTE GOODS OR SERVICES;
  34. * LOSS OF USE, DATA, OR PROFITS; OR BUSINESS INTERRUPTION) HOWEVER
  35. * CAUSED AND ON ANY THEORY OF LIABILITY, WHETHER IN CONTRACT, STRICT
  36. * LIABILITY, OR TORT (INCLUDING NEGLIGENCE OR OTHERWISE) ARISING IN
  37. * ANY WAY OUT OF THE USE OF THIS SOFTWARE, EVEN IF ADVISED OF THE
  38. * POSSIBILITY OF SUCH DAMAGE.
  39. * -------------------------------------------------------------------------- */
  40. #include "arm_math.h"
  41. /**
  42. * @ingroup groupFilters
  43. */
  44. /**
  45. * @defgroup Conv Convolution
  46. *
  47. * Convolution is a mathematical operation that operates on two finite length vectors to generate a finite length output vector.
  48. * Convolution is similar to correlation and is frequently used in filtering and data analysis.
  49. * The CMSIS DSP library contains functions for convolving Q7, Q15, Q31, and floating-point data types.
  50. * The library also provides fast versions of the Q15 and Q31 functions on Cortex-M4 and Cortex-M3.
  51. *
  52. * \par Algorithm
  53. * Let <code>a[n]</code> and <code>b[n]</code> be sequences of length <code>srcALen</code> and <code>srcBLen</code> samples respectively.
  54. * Then the convolution
  55. *
  56. * <pre>
  57. * c[n] = a[n] * b[n]
  58. * </pre>
  59. *
  60. * \par
  61. * is defined as
  62. * \image html ConvolutionEquation.gif
  63. * \par
  64. * Note that <code>c[n]</code> is of length <code>srcALen + srcBLen - 1</code> and is defined over the interval <code>n=0, 1, 2, ..., srcALen + srcBLen - 2</code>.
  65. * <code>pSrcA</code> points to the first input vector of length <code>srcALen</code> and
  66. * <code>pSrcB</code> points to the second input vector of length <code>srcBLen</code>.
  67. * The output result is written to <code>pDst</code> and the calling function must allocate <code>srcALen+srcBLen-1</code> words for the result.
  68. *
  69. * \par
  70. * Conceptually, when two signals <code>a[n]</code> and <code>b[n]</code> are convolved,
  71. * the signal <code>b[n]</code> slides over <code>a[n]</code>.
  72. * For each offset \c n, the overlapping portions of a[n] and b[n] are multiplied and summed together.
  73. *
  74. * \par
  75. * Note that convolution is a commutative operation:
  76. *
  77. * <pre>
  78. * a[n] * b[n] = b[n] * a[n].
  79. * </pre>
  80. *
  81. * \par
  82. * This means that switching the A and B arguments to the convolution functions has no effect.
  83. *
  84. * <b>Fixed-Point Behavior</b>
  85. *
  86. * \par
  87. * Convolution requires summing up a large number of intermediate products.
  88. * As such, the Q7, Q15, and Q31 functions run a risk of overflow and saturation.
  89. * Refer to the function specific documentation below for further details of the particular algorithm used.
  90. *
  91. *
  92. * <b>Fast Versions</b>
  93. *
  94. * \par
  95. * Fast versions are supported for Q31 and Q15. Cycles for Fast versions are less compared to Q31 and Q15 of conv and the design requires
  96. * the input signals should be scaled down to avoid intermediate overflows.
  97. *
  98. *
  99. * <b>Opt Versions</b>
  100. *
  101. * \par
  102. * Opt versions are supported for Q15 and Q7. Design uses internal scratch buffer for getting good optimisation.
  103. * These versions are optimised in cycles and consumes more memory(Scratch memory) compared to Q15 and Q7 versions
  104. */
  105. /**
  106. * @addtogroup Conv
  107. * @{
  108. */
  109. /**
  110. * @brief Convolution of floating-point sequences.
  111. * @param[in] *pSrcA points to the first input sequence.
  112. * @param[in] srcALen length of the first input sequence.
  113. * @param[in] *pSrcB points to the second input sequence.
  114. * @param[in] srcBLen length of the second input sequence.
  115. * @param[out] *pDst points to the location where the output result is written. Length srcALen+srcBLen-1.
  116. * @return none.
  117. */
  118. void arm_conv_f32(
  119. float32_t * pSrcA,
  120. uint32_t srcALen,
  121. float32_t * pSrcB,
  122. uint32_t srcBLen,
  123. float32_t * pDst)
  124. {
  125. #ifndef ARM_MATH_CM0_FAMILY
  126. /* Run the below code for Cortex-M4 and Cortex-M3 */
  127. float32_t *pIn1; /* inputA pointer */
  128. float32_t *pIn2; /* inputB pointer */
  129. float32_t *pOut = pDst; /* output pointer */
  130. float32_t *px; /* Intermediate inputA pointer */
  131. float32_t *py; /* Intermediate inputB pointer */
  132. float32_t *pSrc1, *pSrc2; /* Intermediate pointers */
  133. float32_t sum, acc0, acc1, acc2, acc3; /* Accumulator */
  134. float32_t x0, x1, x2, x3, c0; /* Temporary variables to hold state and coefficient values */
  135. uint32_t j, k, count, blkCnt, blockSize1, blockSize2, blockSize3; /* loop counters */
  136. /* The algorithm implementation is based on the lengths of the inputs. */
  137. /* srcB is always made to slide across srcA. */
  138. /* So srcBLen is always considered as shorter or equal to srcALen */
  139. if(srcALen >= srcBLen)
  140. {
  141. /* Initialization of inputA pointer */
  142. pIn1 = pSrcA;
  143. /* Initialization of inputB pointer */
  144. pIn2 = pSrcB;
  145. }
  146. else
  147. {
  148. /* Initialization of inputA pointer */
  149. pIn1 = pSrcB;
  150. /* Initialization of inputB pointer */
  151. pIn2 = pSrcA;
  152. /* srcBLen is always considered as shorter or equal to srcALen */
  153. j = srcBLen;
  154. srcBLen = srcALen;
  155. srcALen = j;
  156. }
  157. /* conv(x,y) at n = x[n] * y[0] + x[n-1] * y[1] + x[n-2] * y[2] + ...+ x[n-N+1] * y[N -1] */
  158. /* The function is internally
  159. * divided into three stages according to the number of multiplications that has to be
  160. * taken place between inputA samples and inputB samples. In the first stage of the
  161. * algorithm, the multiplications increase by one for every iteration.
  162. * In the second stage of the algorithm, srcBLen number of multiplications are done.
  163. * In the third stage of the algorithm, the multiplications decrease by one
  164. * for every iteration. */
  165. /* The algorithm is implemented in three stages.
  166. The loop counters of each stage is initiated here. */
  167. blockSize1 = srcBLen - 1u;
  168. blockSize2 = srcALen - (srcBLen - 1u);
  169. blockSize3 = blockSize1;
  170. /* --------------------------
  171. * initializations of stage1
  172. * -------------------------*/
  173. /* sum = x[0] * y[0]
  174. * sum = x[0] * y[1] + x[1] * y[0]
  175. * ....
  176. * sum = x[0] * y[srcBlen - 1] + x[1] * y[srcBlen - 2] +...+ x[srcBLen - 1] * y[0]
  177. */
  178. /* In this stage the MAC operations are increased by 1 for every iteration.
  179. The count variable holds the number of MAC operations performed */
  180. count = 1u;
  181. /* Working pointer of inputA */
  182. px = pIn1;
  183. /* Working pointer of inputB */
  184. py = pIn2;
  185. /* ------------------------
  186. * Stage1 process
  187. * ----------------------*/
  188. /* The first stage starts here */
  189. while(blockSize1 > 0u)
  190. {
  191. /* Accumulator is made zero for every iteration */
  192. sum = 0.0f;
  193. /* Apply loop unrolling and compute 4 MACs simultaneously. */
  194. k = count >> 2u;
  195. /* First part of the processing with loop unrolling. Compute 4 MACs at a time.
  196. ** a second loop below computes MACs for the remaining 1 to 3 samples. */
  197. while(k > 0u)
  198. {
  199. /* x[0] * y[srcBLen - 1] */
  200. sum += *px++ * *py--;
  201. /* x[1] * y[srcBLen - 2] */
  202. sum += *px++ * *py--;
  203. /* x[2] * y[srcBLen - 3] */
  204. sum += *px++ * *py--;
  205. /* x[3] * y[srcBLen - 4] */
  206. sum += *px++ * *py--;
  207. /* Decrement the loop counter */
  208. k--;
  209. }
  210. /* If the count is not a multiple of 4, compute any remaining MACs here.
  211. ** No loop unrolling is used. */
  212. k = count % 0x4u;
  213. while(k > 0u)
  214. {
  215. /* Perform the multiply-accumulate */
  216. sum += *px++ * *py--;
  217. /* Decrement the loop counter */
  218. k--;
  219. }
  220. /* Store the result in the accumulator in the destination buffer. */
  221. *pOut++ = sum;
  222. /* Update the inputA and inputB pointers for next MAC calculation */
  223. py = pIn2 + count;
  224. px = pIn1;
  225. /* Increment the MAC count */
  226. count++;
  227. /* Decrement the loop counter */
  228. blockSize1--;
  229. }
  230. /* --------------------------
  231. * Initializations of stage2
  232. * ------------------------*/
  233. /* sum = x[0] * y[srcBLen-1] + x[1] * y[srcBLen-2] +...+ x[srcBLen-1] * y[0]
  234. * sum = x[1] * y[srcBLen-1] + x[2] * y[srcBLen-2] +...+ x[srcBLen] * y[0]
  235. * ....
  236. * sum = x[srcALen-srcBLen-2] * y[srcBLen-1] + x[srcALen] * y[srcBLen-2] +...+ x[srcALen-1] * y[0]
  237. */
  238. /* Working pointer of inputA */
  239. px = pIn1;
  240. /* Working pointer of inputB */
  241. pSrc2 = pIn2 + (srcBLen - 1u);
  242. py = pSrc2;
  243. /* count is index by which the pointer pIn1 to be incremented */
  244. count = 0u;
  245. /* -------------------
  246. * Stage2 process
  247. * ------------------*/
  248. /* Stage2 depends on srcBLen as in this stage srcBLen number of MACS are performed.
  249. * So, to loop unroll over blockSize2,
  250. * srcBLen should be greater than or equal to 4 */
  251. if(srcBLen >= 4u)
  252. {
  253. /* Loop unroll over blockSize2, by 4 */
  254. blkCnt = blockSize2 >> 2u;
  255. while(blkCnt > 0u)
  256. {
  257. /* Set all accumulators to zero */
  258. acc0 = 0.0f;
  259. acc1 = 0.0f;
  260. acc2 = 0.0f;
  261. acc3 = 0.0f;
  262. /* read x[0], x[1], x[2] samples */
  263. x0 = *(px++);
  264. x1 = *(px++);
  265. x2 = *(px++);
  266. /* Apply loop unrolling and compute 4 MACs simultaneously. */
  267. k = srcBLen >> 2u;
  268. /* First part of the processing with loop unrolling. Compute 4 MACs at a time.
  269. ** a second loop below computes MACs for the remaining 1 to 3 samples. */
  270. do
  271. {
  272. /* Read y[srcBLen - 1] sample */
  273. c0 = *(py--);
  274. /* Read x[3] sample */
  275. x3 = *(px);
  276. /* Perform the multiply-accumulate */
  277. /* acc0 += x[0] * y[srcBLen - 1] */
  278. acc0 += x0 * c0;
  279. /* acc1 += x[1] * y[srcBLen - 1] */
  280. acc1 += x1 * c0;
  281. /* acc2 += x[2] * y[srcBLen - 1] */
  282. acc2 += x2 * c0;
  283. /* acc3 += x[3] * y[srcBLen - 1] */
  284. acc3 += x3 * c0;
  285. /* Read y[srcBLen - 2] sample */
  286. c0 = *(py--);
  287. /* Read x[4] sample */
  288. x0 = *(px + 1u);
  289. /* Perform the multiply-accumulate */
  290. /* acc0 += x[1] * y[srcBLen - 2] */
  291. acc0 += x1 * c0;
  292. /* acc1 += x[2] * y[srcBLen - 2] */
  293. acc1 += x2 * c0;
  294. /* acc2 += x[3] * y[srcBLen - 2] */
  295. acc2 += x3 * c0;
  296. /* acc3 += x[4] * y[srcBLen - 2] */
  297. acc3 += x0 * c0;
  298. /* Read y[srcBLen - 3] sample */
  299. c0 = *(py--);
  300. /* Read x[5] sample */
  301. x1 = *(px + 2u);
  302. /* Perform the multiply-accumulates */
  303. /* acc0 += x[2] * y[srcBLen - 3] */
  304. acc0 += x2 * c0;
  305. /* acc1 += x[3] * y[srcBLen - 2] */
  306. acc1 += x3 * c0;
  307. /* acc2 += x[4] * y[srcBLen - 2] */
  308. acc2 += x0 * c0;
  309. /* acc3 += x[5] * y[srcBLen - 2] */
  310. acc3 += x1 * c0;
  311. /* Read y[srcBLen - 4] sample */
  312. c0 = *(py--);
  313. /* Read x[6] sample */
  314. x2 = *(px + 3u);
  315. px += 4u;
  316. /* Perform the multiply-accumulates */
  317. /* acc0 += x[3] * y[srcBLen - 4] */
  318. acc0 += x3 * c0;
  319. /* acc1 += x[4] * y[srcBLen - 4] */
  320. acc1 += x0 * c0;
  321. /* acc2 += x[5] * y[srcBLen - 4] */
  322. acc2 += x1 * c0;
  323. /* acc3 += x[6] * y[srcBLen - 4] */
  324. acc3 += x2 * c0;
  325. } while(--k);
  326. /* If the srcBLen is not a multiple of 4, compute any remaining MACs here.
  327. ** No loop unrolling is used. */
  328. k = srcBLen % 0x4u;
  329. while(k > 0u)
  330. {
  331. /* Read y[srcBLen - 5] sample */
  332. c0 = *(py--);
  333. /* Read x[7] sample */
  334. x3 = *(px++);
  335. /* Perform the multiply-accumulates */
  336. /* acc0 += x[4] * y[srcBLen - 5] */
  337. acc0 += x0 * c0;
  338. /* acc1 += x[5] * y[srcBLen - 5] */
  339. acc1 += x1 * c0;
  340. /* acc2 += x[6] * y[srcBLen - 5] */
  341. acc2 += x2 * c0;
  342. /* acc3 += x[7] * y[srcBLen - 5] */
  343. acc3 += x3 * c0;
  344. /* Reuse the present samples for the next MAC */
  345. x0 = x1;
  346. x1 = x2;
  347. x2 = x3;
  348. /* Decrement the loop counter */
  349. k--;
  350. }
  351. /* Store the result in the accumulator in the destination buffer. */
  352. *pOut++ = acc0;
  353. *pOut++ = acc1;
  354. *pOut++ = acc2;
  355. *pOut++ = acc3;
  356. /* Increment the pointer pIn1 index, count by 4 */
  357. count += 4u;
  358. /* Update the inputA and inputB pointers for next MAC calculation */
  359. px = pIn1 + count;
  360. py = pSrc2;
  361. /* Decrement the loop counter */
  362. blkCnt--;
  363. }
  364. /* If the blockSize2 is not a multiple of 4, compute any remaining output samples here.
  365. ** No loop unrolling is used. */
  366. blkCnt = blockSize2 % 0x4u;
  367. while(blkCnt > 0u)
  368. {
  369. /* Accumulator is made zero for every iteration */
  370. sum = 0.0f;
  371. /* Apply loop unrolling and compute 4 MACs simultaneously. */
  372. k = srcBLen >> 2u;
  373. /* First part of the processing with loop unrolling. Compute 4 MACs at a time.
  374. ** a second loop below computes MACs for the remaining 1 to 3 samples. */
  375. while(k > 0u)
  376. {
  377. /* Perform the multiply-accumulates */
  378. sum += *px++ * *py--;
  379. sum += *px++ * *py--;
  380. sum += *px++ * *py--;
  381. sum += *px++ * *py--;
  382. /* Decrement the loop counter */
  383. k--;
  384. }
  385. /* If the srcBLen is not a multiple of 4, compute any remaining MACs here.
  386. ** No loop unrolling is used. */
  387. k = srcBLen % 0x4u;
  388. while(k > 0u)
  389. {
  390. /* Perform the multiply-accumulate */
  391. sum += *px++ * *py--;
  392. /* Decrement the loop counter */
  393. k--;
  394. }
  395. /* Store the result in the accumulator in the destination buffer. */
  396. *pOut++ = sum;
  397. /* Increment the MAC count */
  398. count++;
  399. /* Update the inputA and inputB pointers for next MAC calculation */
  400. px = pIn1 + count;
  401. py = pSrc2;
  402. /* Decrement the loop counter */
  403. blkCnt--;
  404. }
  405. }
  406. else
  407. {
  408. /* If the srcBLen is not a multiple of 4,
  409. * the blockSize2 loop cannot be unrolled by 4 */
  410. blkCnt = blockSize2;
  411. while(blkCnt > 0u)
  412. {
  413. /* Accumulator is made zero for every iteration */
  414. sum = 0.0f;
  415. /* srcBLen number of MACS should be performed */
  416. k = srcBLen;
  417. while(k > 0u)
  418. {
  419. /* Perform the multiply-accumulate */
  420. sum += *px++ * *py--;
  421. /* Decrement the loop counter */
  422. k--;
  423. }
  424. /* Store the result in the accumulator in the destination buffer. */
  425. *pOut++ = sum;
  426. /* Increment the MAC count */
  427. count++;
  428. /* Update the inputA and inputB pointers for next MAC calculation */
  429. px = pIn1 + count;
  430. py = pSrc2;
  431. /* Decrement the loop counter */
  432. blkCnt--;
  433. }
  434. }
  435. /* --------------------------
  436. * Initializations of stage3
  437. * -------------------------*/
  438. /* sum += x[srcALen-srcBLen+1] * y[srcBLen-1] + x[srcALen-srcBLen+2] * y[srcBLen-2] +...+ x[srcALen-1] * y[1]
  439. * sum += x[srcALen-srcBLen+2] * y[srcBLen-1] + x[srcALen-srcBLen+3] * y[srcBLen-2] +...+ x[srcALen-1] * y[2]
  440. * ....
  441. * sum += x[srcALen-2] * y[srcBLen-1] + x[srcALen-1] * y[srcBLen-2]
  442. * sum += x[srcALen-1] * y[srcBLen-1]
  443. */
  444. /* In this stage the MAC operations are decreased by 1 for every iteration.
  445. The blockSize3 variable holds the number of MAC operations performed */
  446. /* Working pointer of inputA */
  447. pSrc1 = (pIn1 + srcALen) - (srcBLen - 1u);
  448. px = pSrc1;
  449. /* Working pointer of inputB */
  450. pSrc2 = pIn2 + (srcBLen - 1u);
  451. py = pSrc2;
  452. /* -------------------
  453. * Stage3 process
  454. * ------------------*/
  455. while(blockSize3 > 0u)
  456. {
  457. /* Accumulator is made zero for every iteration */
  458. sum = 0.0f;
  459. /* Apply loop unrolling and compute 4 MACs simultaneously. */
  460. k = blockSize3 >> 2u;
  461. /* First part of the processing with loop unrolling. Compute 4 MACs at a time.
  462. ** a second loop below computes MACs for the remaining 1 to 3 samples. */
  463. while(k > 0u)
  464. {
  465. /* sum += x[srcALen - srcBLen + 1] * y[srcBLen - 1] */
  466. sum += *px++ * *py--;
  467. /* sum += x[srcALen - srcBLen + 2] * y[srcBLen - 2] */
  468. sum += *px++ * *py--;
  469. /* sum += x[srcALen - srcBLen + 3] * y[srcBLen - 3] */
  470. sum += *px++ * *py--;
  471. /* sum += x[srcALen - srcBLen + 4] * y[srcBLen - 4] */
  472. sum += *px++ * *py--;
  473. /* Decrement the loop counter */
  474. k--;
  475. }
  476. /* If the blockSize3 is not a multiple of 4, compute any remaining MACs here.
  477. ** No loop unrolling is used. */
  478. k = blockSize3 % 0x4u;
  479. while(k > 0u)
  480. {
  481. /* Perform the multiply-accumulates */
  482. /* sum += x[srcALen-1] * y[srcBLen-1] */
  483. sum += *px++ * *py--;
  484. /* Decrement the loop counter */
  485. k--;
  486. }
  487. /* Store the result in the accumulator in the destination buffer. */
  488. *pOut++ = sum;
  489. /* Update the inputA and inputB pointers for next MAC calculation */
  490. px = ++pSrc1;
  491. py = pSrc2;
  492. /* Decrement the loop counter */
  493. blockSize3--;
  494. }
  495. #else
  496. /* Run the below code for Cortex-M0 */
  497. float32_t *pIn1 = pSrcA; /* inputA pointer */
  498. float32_t *pIn2 = pSrcB; /* inputB pointer */
  499. float32_t sum; /* Accumulator */
  500. uint32_t i, j; /* loop counters */
  501. /* Loop to calculate convolution for output length number of times */
  502. for (i = 0u; i < ((srcALen + srcBLen) - 1u); i++)
  503. {
  504. /* Initialize sum with zero to carry out MAC operations */
  505. sum = 0.0f;
  506. /* Loop to perform MAC operations according to convolution equation */
  507. for (j = 0u; j <= i; j++)
  508. {
  509. /* Check the array limitations */
  510. if((((i - j) < srcBLen) && (j < srcALen)))
  511. {
  512. /* z[i] += x[i-j] * y[j] */
  513. sum += pIn1[j] * pIn2[i - j];
  514. }
  515. }
  516. /* Store the output in the destination buffer */
  517. pDst[i] = sum;
  518. }
  519. #endif /* #ifndef ARM_MATH_CM0_FAMILY */
  520. }
  521. /**
  522. * @} end of Conv group
  523. */