V4.0.1 of the ARM CMSIS DSP libraries. Note that arm_bitreversal2.s, arm_cfft_f32.c and arm_rfft_fast_f32.c had to be removed. arm_bitreversal2.s will not assemble with the online tools. So, the fast f32 FFT functions are not yet available. All the other FFT functions are available.

Dependents:   MPU9150_Example fir_f32 fir_f32 MPU9150_nucleo_noni2cdev ... more

FilteringFunctions/arm_conv_q15.c

Committer:
emh203
Date:
2014-07-28
Revision:
0:3d9c67d97d6f

File content as of revision 0:3d9c67d97d6f:

/* ----------------------------------------------------------------------   
* Copyright (C) 2010-2014 ARM Limited. All rights reserved.   
*   
* $Date:        12. March 2014
* $Revision: 	V1.4.3
*   
* Project: 	    CMSIS DSP Library   
* Title:		arm_conv_q15.c   
*   
* Description:	Convolution of Q15 sequences.     
*   
* Target Processor: Cortex-M4/Cortex-M3/Cortex-M0
*  
* Redistribution and use in source and binary forms, with or without 
* modification, are permitted provided that the following conditions
* are met:
*   - Redistributions of source code must retain the above copyright
*     notice, this list of conditions and the following disclaimer.
*   - Redistributions in binary form must reproduce the above copyright
*     notice, this list of conditions and the following disclaimer in
*     the documentation and/or other materials provided with the 
*     distribution.
*   - Neither the name of ARM LIMITED nor the names of its contributors
*     may be used to endorse or promote products derived from this
*     software without specific prior written permission.
*
* THIS SOFTWARE IS PROVIDED BY THE COPYRIGHT HOLDERS AND CONTRIBUTORS
* "AS IS" AND ANY EXPRESS OR IMPLIED WARRANTIES, INCLUDING, BUT NOT
* LIMITED TO, THE IMPLIED WARRANTIES OF MERCHANTABILITY AND FITNESS
* FOR A PARTICULAR PURPOSE ARE DISCLAIMED. IN NO EVENT SHALL THE 
* COPYRIGHT OWNER OR CONTRIBUTORS BE LIABLE FOR ANY DIRECT, INDIRECT,
* INCIDENTAL, SPECIAL, EXEMPLARY, OR CONSEQUENTIAL DAMAGES (INCLUDING,
* BUT NOT LIMITED TO, PROCUREMENT OF SUBSTITUTE GOODS OR SERVICES;
* LOSS OF USE, DATA, OR PROFITS; OR BUSINESS INTERRUPTION) HOWEVER
* CAUSED AND ON ANY THEORY OF LIABILITY, WHETHER IN CONTRACT, STRICT
* LIABILITY, OR TORT (INCLUDING NEGLIGENCE OR OTHERWISE) ARISING IN
* ANY WAY OUT OF THE USE OF THIS SOFTWARE, EVEN IF ADVISED OF THE
* POSSIBILITY OF SUCH DAMAGE.  
* -------------------------------------------------------------------- */

#include "arm_math.h"

/**   
 * @ingroup groupFilters   
 */

/**   
 * @addtogroup Conv   
 * @{   
 */

/**   
 * @brief Convolution of Q15 sequences.   
 * @param[in] *pSrcA points to the first input sequence.   
 * @param[in] srcALen length of the first input sequence.   
 * @param[in] *pSrcB points to the second input sequence.   
 * @param[in] srcBLen length of the second input sequence.   
 * @param[out] *pDst points to the location where the output result is written.  Length srcALen+srcBLen-1.   
 * @return none.   
 *   
 * @details   
 * <b>Scaling and Overflow Behavior:</b>   
 *   
 * \par   
 * The function is implemented using a 64-bit internal accumulator.   
 * Both inputs are in 1.15 format and multiplications yield a 2.30 result.   
 * The 2.30 intermediate results are accumulated in a 64-bit accumulator in 34.30 format.   
 * This approach provides 33 guard bits and there is no risk of overflow.   
 * The 34.30 result is then truncated to 34.15 format by discarding the low 15 bits and then saturated to 1.15 format.   
 *   
 * \par   
 * Refer to <code>arm_conv_fast_q15()</code> for a faster but less precise version of this function for Cortex-M3 and Cortex-M4. 
 *
 * \par    
 * Refer the function <code>arm_conv_opt_q15()</code> for a faster implementation of this function using scratch buffers.
 *  
 */

void arm_conv_q15(
  q15_t * pSrcA,
  uint32_t srcALen,
  q15_t * pSrcB,
  uint32_t srcBLen,
  q15_t * pDst)
{

#if (defined(ARM_MATH_CM4) || defined(ARM_MATH_CM3)) && !defined(UNALIGNED_SUPPORT_DISABLE)

  /* Run the below code for Cortex-M4 and Cortex-M3 */

  q15_t *pIn1;                                   /* inputA pointer */
  q15_t *pIn2;                                   /* inputB pointer */
  q15_t *pOut = pDst;                            /* output pointer */
  q63_t sum, acc0, acc1, acc2, acc3;             /* Accumulator */
  q15_t *px;                                     /* Intermediate inputA pointer  */
  q15_t *py;                                     /* Intermediate inputB pointer  */
  q15_t *pSrc1, *pSrc2;                          /* Intermediate pointers */
  q31_t x0, x1, x2, x3, c0;                      /* Temporary variables to hold state and coefficient values */
  uint32_t blockSize1, blockSize2, blockSize3, j, k, count, blkCnt;     /* loop counter */

  /* The algorithm implementation is based on the lengths of the inputs. */
  /* srcB is always made to slide across srcA. */
  /* So srcBLen is always considered as shorter or equal to srcALen */
  if(srcALen >= srcBLen)
  {
    /* Initialization of inputA pointer */
    pIn1 = pSrcA;

    /* Initialization of inputB pointer */
    pIn2 = pSrcB;
  }
  else
  {
    /* Initialization of inputA pointer */
    pIn1 = pSrcB;

    /* Initialization of inputB pointer */
    pIn2 = pSrcA;

    /* srcBLen is always considered as shorter or equal to srcALen */
    j = srcBLen;
    srcBLen = srcALen;
    srcALen = j;
  }

  /* 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] */
  /* The function is internally   
   * divided into three stages according to the number of multiplications that has to be   
   * taken place between inputA samples and inputB samples. In the first stage of the   
   * algorithm, the multiplications increase by one for every iteration.   
   * In the second stage of the algorithm, srcBLen number of multiplications are done.   
   * In the third stage of the algorithm, the multiplications decrease by one   
   * for every iteration. */

  /* The algorithm is implemented in three stages.   
     The loop counters of each stage is initiated here. */
  blockSize1 = srcBLen - 1u;
  blockSize2 = srcALen - (srcBLen - 1u);

  /* --------------------------   
   * Initializations of stage1   
   * -------------------------*/

  /* sum = x[0] * y[0]   
   * sum = x[0] * y[1] + x[1] * y[0]   
   * ....   
   * sum = x[0] * y[srcBlen - 1] + x[1] * y[srcBlen - 2] +...+ x[srcBLen - 1] * y[0]   
   */

  /* In this stage the MAC operations are increased by 1 for every iteration.   
     The count variable holds the number of MAC operations performed */
  count = 1u;

  /* Working pointer of inputA */
  px = pIn1;

  /* Working pointer of inputB */
  py = pIn2;


  /* ------------------------   
   * Stage1 process   
   * ----------------------*/

  /* For loop unrolling by 4, this stage is divided into two. */
  /* First part of this stage computes the MAC operations less than 4 */
  /* Second part of this stage computes the MAC operations greater than or equal to 4 */

  /* The first part of the stage starts here */
  while((count < 4u) && (blockSize1 > 0u))
  {
    /* Accumulator is made zero for every iteration */
    sum = 0;

    /* Loop over number of MAC operations between   
     * inputA samples and inputB samples */
    k = count;

    while(k > 0u)
    {
      /* Perform the multiply-accumulates */
      sum = __SMLALD(*px++, *py--, sum);

      /* Decrement the loop counter */
      k--;
    }

    /* Store the result in the accumulator in the destination buffer. */
    *pOut++ = (q15_t) (__SSAT((sum >> 15), 16));

    /* Update the inputA and inputB pointers for next MAC calculation */
    py = pIn2 + count;
    px = pIn1;

    /* Increment the MAC count */
    count++;

    /* Decrement the loop counter */
    blockSize1--;
  }

  /* The second part of the stage starts here */
  /* The internal loop, over count, is unrolled by 4 */
  /* To, read the last two inputB samples using SIMD:   
   * y[srcBLen] and y[srcBLen-1] coefficients, py is decremented by 1 */
  py = py - 1;

  while(blockSize1 > 0u)
  {
    /* Accumulator is made zero for every iteration */
    sum = 0;

    /* Apply loop unrolling and compute 4 MACs simultaneously. */
    k = count >> 2u;

    /* First part of the processing with loop unrolling.  Compute 4 MACs at a time.   
     ** a second loop below computes MACs for the remaining 1 to 3 samples. */
    while(k > 0u)
    {
      /* Perform the multiply-accumulates */
      /* x[0], x[1] are multiplied with y[srcBLen - 1], y[srcBLen - 2] respectively */
      sum = __SMLALDX(*__SIMD32(px)++, *__SIMD32(py)--, sum);
      /* x[2], x[3] are multiplied with y[srcBLen - 3], y[srcBLen - 4] respectively */
      sum = __SMLALDX(*__SIMD32(px)++, *__SIMD32(py)--, sum);

      /* Decrement the loop counter */
      k--;
    }

    /* For the next MAC operations, the pointer py is used without SIMD   
     * So, py is incremented by 1 */
    py = py + 1u;

    /* If the count is not a multiple of 4, compute any remaining MACs here.   
     ** No loop unrolling is used. */
    k = count % 0x4u;

    while(k > 0u)
    {
      /* Perform the multiply-accumulates */
      sum = __SMLALD(*px++, *py--, sum);

      /* Decrement the loop counter */
      k--;
    }

    /* Store the result in the accumulator in the destination buffer. */
    *pOut++ = (q15_t) (__SSAT((sum >> 15), 16));

    /* Update the inputA and inputB pointers for next MAC calculation */
    py = pIn2 + (count - 1u);
    px = pIn1;

    /* Increment the MAC count */
    count++;

    /* Decrement the loop counter */
    blockSize1--;
  }

  /* --------------------------   
   * Initializations of stage2   
   * ------------------------*/

  /* sum = x[0] * y[srcBLen-1] + x[1] * y[srcBLen-2] +...+ x[srcBLen-1] * y[0]   
   * sum = x[1] * y[srcBLen-1] + x[2] * y[srcBLen-2] +...+ x[srcBLen] * y[0]   
   * ....   
   * sum = x[srcALen-srcBLen-2] * y[srcBLen-1] + x[srcALen] * y[srcBLen-2] +...+ x[srcALen-1] * y[0]   
   */

  /* Working pointer of inputA */
  px = pIn1;

  /* Working pointer of inputB */
  pSrc2 = pIn2 + (srcBLen - 1u);
  py = pSrc2;

  /* count is the index by which the pointer pIn1 to be incremented */
  count = 0u;


  /* --------------------   
   * Stage2 process   
   * -------------------*/

  /* Stage2 depends on srcBLen as in this stage srcBLen number of MACS are performed.   
   * So, to loop unroll over blockSize2,   
   * srcBLen should be greater than or equal to 4 */
  if(srcBLen >= 4u)
  {
    /* Loop unroll over blockSize2, by 4 */
    blkCnt = blockSize2 >> 2u;

    while(blkCnt > 0u)
    {
      py = py - 1u;

      /* Set all accumulators to zero */
      acc0 = 0;
      acc1 = 0;
      acc2 = 0;
      acc3 = 0;


      /* read x[0], x[1] samples */
      x0 = *__SIMD32(px);
      /* read x[1], x[2] samples */
      x1 = _SIMD32_OFFSET(px+1);
	  px+= 2u;


      /* Apply loop unrolling and compute 4 MACs simultaneously. */
      k = srcBLen >> 2u;

      /* First part of the processing with loop unrolling.  Compute 4 MACs at a time.   
       ** a second loop below computes MACs for the remaining 1 to 3 samples. */
      do
      {
        /* Read the last two inputB samples using SIMD:   
         * y[srcBLen - 1] and y[srcBLen - 2] */
        c0 = *__SIMD32(py)--;

        /* acc0 +=  x[0] * y[srcBLen - 1] + x[1] * y[srcBLen - 2] */
        acc0 = __SMLALDX(x0, c0, acc0);

        /* acc1 +=  x[1] * y[srcBLen - 1] + x[2] * y[srcBLen - 2] */
        acc1 = __SMLALDX(x1, c0, acc1);

        /* Read x[2], x[3] */
        x2 = *__SIMD32(px);

        /* Read x[3], x[4] */
        x3 = _SIMD32_OFFSET(px+1);

        /* acc2 +=  x[2] * y[srcBLen - 1] + x[3] * y[srcBLen - 2] */
        acc2 = __SMLALDX(x2, c0, acc2);

        /* acc3 +=  x[3] * y[srcBLen - 1] + x[4] * y[srcBLen - 2] */
        acc3 = __SMLALDX(x3, c0, acc3);

        /* Read y[srcBLen - 3] and y[srcBLen - 4] */
        c0 = *__SIMD32(py)--;

        /* acc0 +=  x[2] * y[srcBLen - 3] + x[3] * y[srcBLen - 4] */
        acc0 = __SMLALDX(x2, c0, acc0);

        /* acc1 +=  x[3] * y[srcBLen - 3] + x[4] * y[srcBLen - 4] */
        acc1 = __SMLALDX(x3, c0, acc1);

        /* Read x[4], x[5] */
        x0 = _SIMD32_OFFSET(px+2);

        /* Read x[5], x[6] */
        x1 = _SIMD32_OFFSET(px+3);
		px += 4u;

        /* acc2 +=  x[4] * y[srcBLen - 3] + x[5] * y[srcBLen - 4] */
        acc2 = __SMLALDX(x0, c0, acc2);

        /* acc3 +=  x[5] * y[srcBLen - 3] + x[6] * y[srcBLen - 4] */
        acc3 = __SMLALDX(x1, c0, acc3);

      } while(--k);

      /* For the next MAC operations, SIMD is not used   
       * So, the 16 bit pointer if inputB, py is updated */

      /* If the srcBLen is not a multiple of 4, compute any remaining MACs here.   
       ** No loop unrolling is used. */
      k = srcBLen % 0x4u;

      if(k == 1u)
      {
        /* Read y[srcBLen - 5] */
        c0 = *(py+1);

#ifdef  ARM_MATH_BIG_ENDIAN

        c0 = c0 << 16u;

#else

        c0 = c0 & 0x0000FFFF;

#endif /*      #ifdef  ARM_MATH_BIG_ENDIAN     */
        /* Read x[7] */
        x3 = *__SIMD32(px);
		px++;

        /* Perform the multiply-accumulates */
        acc0 = __SMLALD(x0, c0, acc0);
        acc1 = __SMLALD(x1, c0, acc1);
        acc2 = __SMLALDX(x1, c0, acc2);
        acc3 = __SMLALDX(x3, c0, acc3);
      }

      if(k == 2u)
      {
        /* Read y[srcBLen - 5], y[srcBLen - 6] */
        c0 = _SIMD32_OFFSET(py);

        /* Read x[7], x[8] */
        x3 = *__SIMD32(px);

        /* Read x[9] */
        x2 = _SIMD32_OFFSET(px+1);
		px += 2u;

        /* Perform the multiply-accumulates */
        acc0 = __SMLALDX(x0, c0, acc0);
        acc1 = __SMLALDX(x1, c0, acc1);
        acc2 = __SMLALDX(x3, c0, acc2);
        acc3 = __SMLALDX(x2, c0, acc3);
      }

      if(k == 3u)
      {
        /* Read y[srcBLen - 5], y[srcBLen - 6] */
        c0 = _SIMD32_OFFSET(py);

        /* Read x[7], x[8] */
        x3 = *__SIMD32(px);

        /* Read x[9] */
        x2 = _SIMD32_OFFSET(px+1);

        /* Perform the multiply-accumulates */
        acc0 = __SMLALDX(x0, c0, acc0);
        acc1 = __SMLALDX(x1, c0, acc1);
        acc2 = __SMLALDX(x3, c0, acc2);
        acc3 = __SMLALDX(x2, c0, acc3);

		c0 = *(py-1);

#ifdef  ARM_MATH_BIG_ENDIAN

        c0 = c0 << 16u;
#else

        c0 = c0 & 0x0000FFFF;
#endif /*      #ifdef  ARM_MATH_BIG_ENDIAN     */
        /* Read x[10] */
        x3 =  _SIMD32_OFFSET(px+2);
		px += 3u;

        /* Perform the multiply-accumulates */
        acc0 = __SMLALDX(x1, c0, acc0);
        acc1 = __SMLALD(x2, c0, acc1);
        acc2 = __SMLALDX(x2, c0, acc2);
        acc3 = __SMLALDX(x3, c0, acc3);
      }


      /* Store the results in the accumulators in the destination buffer. */

#ifndef  ARM_MATH_BIG_ENDIAN

      *__SIMD32(pOut)++ =
        __PKHBT(__SSAT((acc0 >> 15), 16), __SSAT((acc1 >> 15), 16), 16);
      *__SIMD32(pOut)++ =
        __PKHBT(__SSAT((acc2 >> 15), 16), __SSAT((acc3 >> 15), 16), 16);

#else

      *__SIMD32(pOut)++ =
        __PKHBT(__SSAT((acc1 >> 15), 16), __SSAT((acc0 >> 15), 16), 16);
      *__SIMD32(pOut)++ =
        __PKHBT(__SSAT((acc3 >> 15), 16), __SSAT((acc2 >> 15), 16), 16);

#endif /*      #ifndef  ARM_MATH_BIG_ENDIAN    */

      /* Increment the pointer pIn1 index, count by 4 */
      count += 4u;

      /* Update the inputA and inputB pointers for next MAC calculation */
      px = pIn1 + count;
      py = pSrc2;

       /* Decrement the loop counter */
      blkCnt--;
    }

    /* If the blockSize2 is not a multiple of 4, compute any remaining output samples here.   
     ** No loop unrolling is used. */
    blkCnt = blockSize2 % 0x4u;

    while(blkCnt > 0u)
    {
      /* Accumulator is made zero for every iteration */
      sum = 0;

      /* Apply loop unrolling and compute 4 MACs simultaneously. */
      k = srcBLen >> 2u;

      /* First part of the processing with loop unrolling.  Compute 4 MACs at a time.   
       ** a second loop below computes MACs for the remaining 1 to 3 samples. */
      while(k > 0u)
      {
        /* Perform the multiply-accumulates */
        sum += (q63_t) ((q31_t) * px++ * *py--);
        sum += (q63_t) ((q31_t) * px++ * *py--);
        sum += (q63_t) ((q31_t) * px++ * *py--);
        sum += (q63_t) ((q31_t) * px++ * *py--);

        /* Decrement the loop counter */
        k--;
      }

      /* If the srcBLen is not a multiple of 4, compute any remaining MACs here.   
       ** No loop unrolling is used. */
      k = srcBLen % 0x4u;

      while(k > 0u)
      {
        /* Perform the multiply-accumulates */
        sum += (q63_t) ((q31_t) * px++ * *py--);

        /* Decrement the loop counter */
        k--;
      }

      /* Store the result in the accumulator in the destination buffer. */
      *pOut++ = (q15_t) (__SSAT(sum >> 15, 16));

      /* Increment the pointer pIn1 index, count by 1 */
      count++;

      /* Update the inputA and inputB pointers for next MAC calculation */
      px = pIn1 + count;
      py = pSrc2;

      /* Decrement the loop counter */
      blkCnt--;
    }
  }
  else
  {
    /* If the srcBLen is not a multiple of 4,   
     * the blockSize2 loop cannot be unrolled by 4 */
    blkCnt = blockSize2;

    while(blkCnt > 0u)
    {
      /* Accumulator is made zero for every iteration */
      sum = 0;

      /* srcBLen number of MACS should be performed */
      k = srcBLen;

      while(k > 0u)
      {
        /* Perform the multiply-accumulate */
        sum += (q63_t) ((q31_t) * px++ * *py--);

        /* Decrement the loop counter */
        k--;
      }

      /* Store the result in the accumulator in the destination buffer. */
      *pOut++ = (q15_t) (__SSAT(sum >> 15, 16));

      /* Increment the MAC count */
      count++;

      /* Update the inputA and inputB pointers for next MAC calculation */
      px = pIn1 + count;
      py = pSrc2;

      /* Decrement the loop counter */
      blkCnt--;
    }
  }


  /* --------------------------   
   * Initializations of stage3   
   * -------------------------*/

  /* sum += x[srcALen-srcBLen+1] * y[srcBLen-1] + x[srcALen-srcBLen+2] * y[srcBLen-2] +...+ x[srcALen-1] * y[1]   
   * sum += x[srcALen-srcBLen+2] * y[srcBLen-1] + x[srcALen-srcBLen+3] * y[srcBLen-2] +...+ x[srcALen-1] * y[2]   
   * ....   
   * sum +=  x[srcALen-2] * y[srcBLen-1] + x[srcALen-1] * y[srcBLen-2]   
   * sum +=  x[srcALen-1] * y[srcBLen-1]   
   */

  /* In this stage the MAC operations are decreased by 1 for every iteration.   
     The blockSize3 variable holds the number of MAC operations performed */

  blockSize3 = srcBLen - 1u;

  /* Working pointer of inputA */
  pSrc1 = (pIn1 + srcALen) - (srcBLen - 1u);
  px = pSrc1;

  /* Working pointer of inputB */
  pSrc2 = pIn2 + (srcBLen - 1u);
  pIn2 = pSrc2 - 1u;
  py = pIn2;

  /* -------------------   
   * Stage3 process   
   * ------------------*/

  /* For loop unrolling by 4, this stage is divided into two. */
  /* First part of this stage computes the MAC operations greater than 4 */
  /* Second part of this stage computes the MAC operations less than or equal to 4 */

  /* The first part of the stage starts here */
  j = blockSize3 >> 2u;

  while((j > 0u) && (blockSize3 > 0u))
  {
    /* Accumulator is made zero for every iteration */
    sum = 0;

    /* Apply loop unrolling and compute 4 MACs simultaneously. */
    k = blockSize3 >> 2u;

    /* First part of the processing with loop unrolling.  Compute 4 MACs at a time.   
     ** a second loop below computes MACs for the remaining 1 to 3 samples. */
    while(k > 0u)
    {
      /* x[srcALen - srcBLen + 1], x[srcALen - srcBLen + 2] are multiplied   
       * with y[srcBLen - 1], y[srcBLen - 2] respectively */
      sum = __SMLALDX(*__SIMD32(px)++, *__SIMD32(py)--, sum);
      /* x[srcALen - srcBLen + 3], x[srcALen - srcBLen + 4] are multiplied   
       * with y[srcBLen - 3], y[srcBLen - 4] respectively */
      sum = __SMLALDX(*__SIMD32(px)++, *__SIMD32(py)--, sum);

      /* Decrement the loop counter */
      k--;
    }

    /* For the next MAC operations, the pointer py is used without SIMD   
     * So, py is incremented by 1 */
    py = py + 1u;

    /* If the blockSize3 is not a multiple of 4, compute any remaining MACs here.   
     ** No loop unrolling is used. */
    k = blockSize3 % 0x4u;

    while(k > 0u)
    {
      /* sum += x[srcALen - srcBLen + 5] * y[srcBLen - 5] */
      sum = __SMLALD(*px++, *py--, sum);

      /* Decrement the loop counter */
      k--;
    }

    /* Store the result in the accumulator in the destination buffer. */
    *pOut++ = (q15_t) (__SSAT((sum >> 15), 16));

    /* Update the inputA and inputB pointers for next MAC calculation */
    px = ++pSrc1;
    py = pIn2;

    /* Decrement the loop counter */
    blockSize3--;

    j--;
  }

  /* The second part of the stage starts here */
  /* SIMD is not used for the next MAC operations,   
   * so pointer py is updated to read only one sample at a time */
  py = py + 1u;

  while(blockSize3 > 0u)
  {
    /* Accumulator is made zero for every iteration */
    sum = 0;

    /* Apply loop unrolling and compute 4 MACs simultaneously. */
    k = blockSize3;

    while(k > 0u)
    {
      /* Perform the multiply-accumulates */
      /* sum +=  x[srcALen-1] * y[srcBLen-1] */
      sum = __SMLALD(*px++, *py--, sum);

      /* Decrement the loop counter */
      k--;
    }

    /* Store the result in the accumulator in the destination buffer. */
    *pOut++ = (q15_t) (__SSAT((sum >> 15), 16));

    /* Update the inputA and inputB pointers for next MAC calculation */
    px = ++pSrc1;
    py = pSrc2;

    /* Decrement the loop counter */
    blockSize3--;
  }

#else

/* Run the below code for Cortex-M0 */

  q15_t *pIn1 = pSrcA;                           /* input pointer */
  q15_t *pIn2 = pSrcB;                           /* coefficient pointer */
  q63_t sum;                                     /* Accumulator */
  uint32_t i, j;                                 /* loop counter */

  /* Loop to calculate output of convolution for output length number of times */
  for (i = 0; i < (srcALen + srcBLen - 1); i++)
  {
    /* Initialize sum with zero to carry on MAC operations */
    sum = 0;

    /* Loop to perform MAC operations according to convolution equation */
    for (j = 0; j <= i; j++)
    {
      /* Check the array limitations */
      if(((i - j) < srcBLen) && (j < srcALen))
      {
        /* z[i] += x[i-j] * y[j] */
        sum += (q31_t) pIn1[j] * (pIn2[i - j]);
      }
    }

    /* Store the output in the destination buffer */
    pDst[i] = (q15_t) __SSAT((sum >> 15u), 16u);
  }

#endif /*  #if (defined(ARM_MATH_CM4) || defined(ARM_MATH_CM3)) && !defined(UNALIGNED_SUPPORT_DISABLE)*/

}

/**   
 * @} end of Conv group   
 */