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215 lines
7.8 KiB
Plaintext
215 lines
7.8 KiB
Plaintext
/* Copyright (c) 2022, NVIDIA CORPORATION. All rights reserved.
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*
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* Redistribution and use in source and binary forms, with or without
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* modification, are permitted provided that the following conditions
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* are met:
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* * Redistributions of source code must retain the above copyright
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* notice, this list of conditions and the following disclaimer.
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* * Redistributions in binary form must reproduce the above copyright
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* notice, this list of conditions and the following disclaimer in the
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* documentation and/or other materials provided with the distribution.
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* * Neither the name of NVIDIA CORPORATION nor the names of its
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* contributors may be used to endorse or promote products derived
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* from this software without specific prior written permission.
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*
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* THIS SOFTWARE IS PROVIDED BY THE COPYRIGHT HOLDERS ``AS IS'' AND ANY
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* EXPRESS OR IMPLIED WARRANTIES, INCLUDING, BUT NOT LIMITED TO, THE
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* IMPLIED WARRANTIES OF MERCHANTABILITY AND FITNESS FOR A PARTICULAR
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* PURPOSE ARE DISCLAIMED. IN NO EVENT SHALL THE COPYRIGHT OWNER OR
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* CONTRIBUTORS BE LIABLE FOR ANY DIRECT, INDIRECT, INCIDENTAL, SPECIAL,
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* EXEMPLARY, OR CONSEQUENTIAL DAMAGES (INCLUDING, BUT NOT LIMITED TO,
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* PROCUREMENT OF SUBSTITUTE GOODS OR SERVICES; LOSS OF USE, DATA, OR
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* PROFITS; OR BUSINESS INTERRUPTION) HOWEVER CAUSED AND ON ANY THEORY
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* OF LIABILITY, WHETHER IN CONTRACT, STRICT LIABILITY, OR TORT
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* (INCLUDING NEGLIGENCE OR OTHERWISE) ARISING IN ANY WAY OUT OF THE USE
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* OF THIS SOFTWARE, EVEN IF ADVISED OF THE POSSIBILITY OF SUCH DAMAGE.
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*/
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#include <assert.h>
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#include <helper_cuda.h>
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#include <cooperative_groups.h>
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namespace cg = cooperative_groups;
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#include "convolutionSeparable_common.h"
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////////////////////////////////////////////////////////////////////////////////
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// Convolution kernel storage
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////////////////////////////////////////////////////////////////////////////////
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__constant__ float c_Kernel[KERNEL_LENGTH];
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extern "C" void setConvolutionKernel(float *h_Kernel) {
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cudaMemcpyToSymbol(c_Kernel, h_Kernel, KERNEL_LENGTH * sizeof(float));
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}
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////////////////////////////////////////////////////////////////////////////////
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// Row convolution filter
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////////////////////////////////////////////////////////////////////////////////
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#define ROWS_BLOCKDIM_X 16
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#define ROWS_BLOCKDIM_Y 4
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#define ROWS_RESULT_STEPS 8
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#define ROWS_HALO_STEPS 1
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__global__ void convolutionRowsKernel(float *d_Dst, float *d_Src, int imageW,
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int imageH, int pitch) {
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// Handle to thread block group
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cg::thread_block cta = cg::this_thread_block();
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__shared__ float
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s_Data[ROWS_BLOCKDIM_Y][(ROWS_RESULT_STEPS + 2 * ROWS_HALO_STEPS) *
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ROWS_BLOCKDIM_X];
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// Offset to the left halo edge
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const int baseX =
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(blockIdx.x * ROWS_RESULT_STEPS - ROWS_HALO_STEPS) * ROWS_BLOCKDIM_X +
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threadIdx.x;
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const int baseY = blockIdx.y * ROWS_BLOCKDIM_Y + threadIdx.y;
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d_Src += baseY * pitch + baseX;
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d_Dst += baseY * pitch + baseX;
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// Load main data
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#pragma unroll
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for (int i = ROWS_HALO_STEPS; i < ROWS_HALO_STEPS + ROWS_RESULT_STEPS; i++) {
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s_Data[threadIdx.y][threadIdx.x + i * ROWS_BLOCKDIM_X] =
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d_Src[i * ROWS_BLOCKDIM_X];
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}
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// Load left halo
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#pragma unroll
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for (int i = 0; i < ROWS_HALO_STEPS; i++) {
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s_Data[threadIdx.y][threadIdx.x + i * ROWS_BLOCKDIM_X] =
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(baseX >= -i * ROWS_BLOCKDIM_X) ? d_Src[i * ROWS_BLOCKDIM_X] : 0;
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}
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// Load right halo
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#pragma unroll
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for (int i = ROWS_HALO_STEPS + ROWS_RESULT_STEPS;
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i < ROWS_HALO_STEPS + ROWS_RESULT_STEPS + ROWS_HALO_STEPS; i++) {
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s_Data[threadIdx.y][threadIdx.x + i * ROWS_BLOCKDIM_X] =
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(imageW - baseX > i * ROWS_BLOCKDIM_X) ? d_Src[i * ROWS_BLOCKDIM_X] : 0;
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}
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// Compute and store results
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cg::sync(cta);
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#pragma unroll
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for (int i = ROWS_HALO_STEPS; i < ROWS_HALO_STEPS + ROWS_RESULT_STEPS; i++) {
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float sum = 0;
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#pragma unroll
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for (int j = -KERNEL_RADIUS; j <= KERNEL_RADIUS; j++) {
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sum += c_Kernel[KERNEL_RADIUS - j] *
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s_Data[threadIdx.y][threadIdx.x + i * ROWS_BLOCKDIM_X + j];
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}
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d_Dst[i * ROWS_BLOCKDIM_X] = sum;
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}
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}
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extern "C" void convolutionRowsGPU(float *d_Dst, float *d_Src, int imageW,
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int imageH) {
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assert(ROWS_BLOCKDIM_X * ROWS_HALO_STEPS >= KERNEL_RADIUS);
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assert(imageW % (ROWS_RESULT_STEPS * ROWS_BLOCKDIM_X) == 0);
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assert(imageH % ROWS_BLOCKDIM_Y == 0);
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dim3 blocks(imageW / (ROWS_RESULT_STEPS * ROWS_BLOCKDIM_X),
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imageH / ROWS_BLOCKDIM_Y);
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dim3 threads(ROWS_BLOCKDIM_X, ROWS_BLOCKDIM_Y);
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convolutionRowsKernel<<<blocks, threads>>>(d_Dst, d_Src, imageW, imageH,
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imageW);
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getLastCudaError("convolutionRowsKernel() execution failed\n");
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}
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////////////////////////////////////////////////////////////////////////////////
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// Column convolution filter
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////////////////////////////////////////////////////////////////////////////////
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#define COLUMNS_BLOCKDIM_X 16
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#define COLUMNS_BLOCKDIM_Y 8
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#define COLUMNS_RESULT_STEPS 8
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#define COLUMNS_HALO_STEPS 1
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__global__ void convolutionColumnsKernel(float *d_Dst, float *d_Src, int imageW,
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int imageH, int pitch) {
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// Handle to thread block group
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cg::thread_block cta = cg::this_thread_block();
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__shared__ float s_Data[COLUMNS_BLOCKDIM_X][(COLUMNS_RESULT_STEPS +
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2 * COLUMNS_HALO_STEPS) *
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COLUMNS_BLOCKDIM_Y +
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1];
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// Offset to the upper halo edge
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const int baseX = blockIdx.x * COLUMNS_BLOCKDIM_X + threadIdx.x;
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const int baseY = (blockIdx.y * COLUMNS_RESULT_STEPS - COLUMNS_HALO_STEPS) *
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COLUMNS_BLOCKDIM_Y +
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threadIdx.y;
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d_Src += baseY * pitch + baseX;
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d_Dst += baseY * pitch + baseX;
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// Main data
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#pragma unroll
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for (int i = COLUMNS_HALO_STEPS;
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i < COLUMNS_HALO_STEPS + COLUMNS_RESULT_STEPS; i++) {
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s_Data[threadIdx.x][threadIdx.y + i * COLUMNS_BLOCKDIM_Y] =
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d_Src[i * COLUMNS_BLOCKDIM_Y * pitch];
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}
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// Upper halo
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#pragma unroll
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for (int i = 0; i < COLUMNS_HALO_STEPS; i++) {
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s_Data[threadIdx.x][threadIdx.y + i * COLUMNS_BLOCKDIM_Y] =
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(baseY >= -i * COLUMNS_BLOCKDIM_Y)
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? d_Src[i * COLUMNS_BLOCKDIM_Y * pitch]
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: 0;
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}
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// Lower halo
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#pragma unroll
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for (int i = COLUMNS_HALO_STEPS + COLUMNS_RESULT_STEPS;
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i < COLUMNS_HALO_STEPS + COLUMNS_RESULT_STEPS + COLUMNS_HALO_STEPS;
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i++) {
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s_Data[threadIdx.x][threadIdx.y + i * COLUMNS_BLOCKDIM_Y] =
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(imageH - baseY > i * COLUMNS_BLOCKDIM_Y)
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? d_Src[i * COLUMNS_BLOCKDIM_Y * pitch]
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: 0;
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}
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// Compute and store results
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cg::sync(cta);
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#pragma unroll
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for (int i = COLUMNS_HALO_STEPS;
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i < COLUMNS_HALO_STEPS + COLUMNS_RESULT_STEPS; i++) {
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float sum = 0;
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#pragma unroll
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for (int j = -KERNEL_RADIUS; j <= KERNEL_RADIUS; j++) {
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sum += c_Kernel[KERNEL_RADIUS - j] *
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s_Data[threadIdx.x][threadIdx.y + i * COLUMNS_BLOCKDIM_Y + j];
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}
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d_Dst[i * COLUMNS_BLOCKDIM_Y * pitch] = sum;
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}
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}
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extern "C" void convolutionColumnsGPU(float *d_Dst, float *d_Src, int imageW,
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int imageH) {
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assert(COLUMNS_BLOCKDIM_Y * COLUMNS_HALO_STEPS >= KERNEL_RADIUS);
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assert(imageW % COLUMNS_BLOCKDIM_X == 0);
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assert(imageH % (COLUMNS_RESULT_STEPS * COLUMNS_BLOCKDIM_Y) == 0);
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dim3 blocks(imageW / COLUMNS_BLOCKDIM_X,
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imageH / (COLUMNS_RESULT_STEPS * COLUMNS_BLOCKDIM_Y));
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dim3 threads(COLUMNS_BLOCKDIM_X, COLUMNS_BLOCKDIM_Y);
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convolutionColumnsKernel<<<blocks, threads>>>(d_Dst, d_Src, imageW, imageH,
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imageW);
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getLastCudaError("convolutionColumnsKernel() execution failed\n");
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}
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