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submodule
opencv
Commits
6f11dc03
Commit
6f11dc03
authored
Mar 13, 2013
by
marina.kolpakova
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implement integral
parent
83e7d3dd
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552 additions
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4 deletions
+552
-4
channels.cu
modules/softcascade/src/cuda/channels.cu
+506
-0
icf-sc.cu
modules/softcascade/src/cuda/icf-sc.cu
+1
-1
detector_cuda.cpp
modules/softcascade/src/detector_cuda.cpp
+45
-3
No files found.
modules/softcascade/src/cuda/channels.cu
0 → 100644
View file @
6f11dc03
/*M///////////////////////////////////////////////////////////////////////////////////////
//
// IMPORTANT: READ BEFORE DOWNLOADING, COPYING, INSTALLING OR USING.
//
// By downloading, copying, installing or using the software you agree to this license.
// If you do not agree to this license, do not download, install,
// copy or use the software.
//
//
// License Agreement
// For Open Source Computer Vision Library
//
// Copyright (C) 2000-2008, Intel Corporation, all rights reserved.
// Copyright (C) 2008-2012, Willow Garage Inc., all rights reserved.
// Third party copyrights are property of their respective owners.
//
// Redistribution and use in source and binary forms, with or without modification,
// are permitted provided that the following conditions are met:
//
// * Redistribution's of source code must retain the above copyright notice,
// this list of conditions and the following disclaimer.
//
// * Redistribution's 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.
//
// * The name of the copyright holders may not 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 Intel Corporation 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.
//
//M*/
#include "opencv2/core/cuda_devptrs.hpp"
#if defined(__GNUC__)
#define cudaSafeCall(expr) ___cudaSafeCall(expr, __FILE__, __LINE__, __func__)
#else /* defined(__CUDACC__) || defined(__MSVC__) */
#define cudaSafeCall(expr) ___cudaSafeCall(expr, __FILE__, __LINE__)
#endif
static inline void ___cudaSafeCall(cudaError_t err, const char *file, const int line, const char *func = "")
{
// if (cudaSuccess != err) cv::gpu::error(cudaGetErrorString(err), file, line, func);
}
__host__ __device__ __forceinline__ int divUp(int total, int grain)
{
return (total + grain - 1) / grain;
}
namespace cv { namespace softcascade { namespace device
{
// Utility function to extract unsigned chars from an unsigned integer
__device__ uchar4 int_to_uchar4(unsigned int in)
{
uchar4 bytes;
bytes.x = (in & 0x000000ff) >> 0;
bytes.y = (in & 0x0000ff00) >> 8;
bytes.z = (in & 0x00ff0000) >> 16;
bytes.w = (in & 0xff000000) >> 24;
return bytes;
}
__global__ void shfl_integral_horizontal(const cv::gpu::PtrStep<uint4> img, cv::gpu::PtrStep<uint4> integral)
{
#if defined(__CUDA_ARCH__) && (__CUDA_ARCH__ >= 300)
__shared__ int sums[128];
const int id = threadIdx.x;
const int lane_id = id % warpSize;
const int warp_id = id / warpSize;
const uint4 data = img(blockIdx.x, id);
const uchar4 a = int_to_uchar4(data.x);
const uchar4 b = int_to_uchar4(data.y);
const uchar4 c = int_to_uchar4(data.z);
const uchar4 d = int_to_uchar4(data.w);
int result[16];
result[0] = a.x;
result[1] = result[0] + a.y;
result[2] = result[1] + a.z;
result[3] = result[2] + a.w;
result[4] = result[3] + b.x;
result[5] = result[4] + b.y;
result[6] = result[5] + b.z;
result[7] = result[6] + b.w;
result[8] = result[7] + c.x;
result[9] = result[8] + c.y;
result[10] = result[9] + c.z;
result[11] = result[10] + c.w;
result[12] = result[11] + d.x;
result[13] = result[12] + d.y;
result[14] = result[13] + d.z;
result[15] = result[14] + d.w;
int sum = result[15];
// the prefix sum for each thread's 16 value is computed,
// now the final sums (result[15]) need to be shared
// with the other threads and add. To do this,
// the __shfl_up() instruction is used and a shuffle scan
// operation is performed to distribute the sums to the correct
// threads
#pragma unroll
for (int i = 1; i < 32; i *= 2)
{
const int n = __shfl_up(sum, i, 32);
if (lane_id >= i)
{
#pragma unroll
for (int i = 0; i < 16; ++i)
result[i] += n;
sum += n;
}
}
// Now the final sum for the warp must be shared
// between warps. This is done by each warp
// having a thread store to shared memory, then
// having some other warp load the values and
// compute a prefix sum, again by using __shfl_up.
// The results are uniformly added back to the warps.
// last thread in the warp holding sum of the warp
// places that in shared
if (threadIdx.x % warpSize == warpSize - 1)
sums[warp_id] = result[15];
__syncthreads();
if (warp_id == 0)
{
int warp_sum = sums[lane_id];
#pragma unroll
for (int i = 1; i <= 32; i *= 2)
{
const int n = __shfl_up(warp_sum, i, 32);
if (lane_id >= i)
warp_sum += n;
}
sums[lane_id] = warp_sum;
}
__syncthreads();
int blockSum = 0;
// fold in unused warp
if (warp_id > 0)
{
blockSum = sums[warp_id - 1];
#pragma unroll
for (int i = 0; i < 16; ++i)
result[i] += blockSum;
}
// assemble result
// Each thread has 16 values to write, which are
// now integer data (to avoid overflow). Instead of
// each thread writing consecutive uint4s, the
// approach shown here experiments using
// the shuffle command to reformat the data
// inside the registers so that each thread holds
// consecutive data to be written so larger contiguous
// segments can be assembled for writing.
/*
For example data that needs to be written as
GMEM[16] <- x0 x1 x2 x3 y0 y1 y2 y3 z0 z1 z2 z3 w0 w1 w2 w3
but is stored in registers (r0..r3), in four threads (0..3) as:
threadId 0 1 2 3
r0 x0 y0 z0 w0
r1 x1 y1 z1 w1
r2 x2 y2 z2 w2
r3 x3 y3 z3 w3
after apply __shfl_xor operations to move data between registers r1..r3:
threadId 00 01 10 11
x0 y0 z0 w0
xor(01)->y1 x1 w1 z1
xor(10)->z2 w2 x2 y2
xor(11)->w3 z3 y3 x3
and now x0..x3, and z0..z3 can be written out in order by all threads.
In the current code, each register above is actually representing
four integers to be written as uint4's to GMEM.
*/
result[4] = __shfl_xor(result[4] , 1, 32);
result[5] = __shfl_xor(result[5] , 1, 32);
result[6] = __shfl_xor(result[6] , 1, 32);
result[7] = __shfl_xor(result[7] , 1, 32);
result[8] = __shfl_xor(result[8] , 2, 32);
result[9] = __shfl_xor(result[9] , 2, 32);
result[10] = __shfl_xor(result[10], 2, 32);
result[11] = __shfl_xor(result[11], 2, 32);
result[12] = __shfl_xor(result[12], 3, 32);
result[13] = __shfl_xor(result[13], 3, 32);
result[14] = __shfl_xor(result[14], 3, 32);
result[15] = __shfl_xor(result[15], 3, 32);
uint4* integral_row = integral.ptr(blockIdx.x);
uint4 output;
///////
if (threadIdx.x % 4 == 0)
output = make_uint4(result[0], result[1], result[2], result[3]);
if (threadIdx.x % 4 == 1)
output = make_uint4(result[4], result[5], result[6], result[7]);
if (threadIdx.x % 4 == 2)
output = make_uint4(result[8], result[9], result[10], result[11]);
if (threadIdx.x % 4 == 3)
output = make_uint4(result[12], result[13], result[14], result[15]);
integral_row[threadIdx.x % 4 + (threadIdx.x / 4) * 16] = output;
///////
if (threadIdx.x % 4 == 2)
output = make_uint4(result[0], result[1], result[2], result[3]);
if (threadIdx.x % 4 == 3)
output = make_uint4(result[4], result[5], result[6], result[7]);
if (threadIdx.x % 4 == 0)
output = make_uint4(result[8], result[9], result[10], result[11]);
if (threadIdx.x % 4 == 1)
output = make_uint4(result[12], result[13], result[14], result[15]);
integral_row[(threadIdx.x + 2) % 4 + (threadIdx.x / 4) * 16 + 8] = output;
// continuning from the above example,
// this use of __shfl_xor() places the y0..y3 and w0..w3 data
// in order.
#pragma unroll
for (int i = 0; i < 16; ++i)
result[i] = __shfl_xor(result[i], 1, 32);
if (threadIdx.x % 4 == 0)
output = make_uint4(result[0], result[1], result[2], result[3]);
if (threadIdx.x % 4 == 1)
output = make_uint4(result[4], result[5], result[6], result[7]);
if (threadIdx.x % 4 == 2)
output = make_uint4(result[8], result[9], result[10], result[11]);
if (threadIdx.x % 4 == 3)
output = make_uint4(result[12], result[13], result[14], result[15]);
integral_row[threadIdx.x % 4 + (threadIdx.x / 4) * 16 + 4] = output;
///////
if (threadIdx.x % 4 == 2)
output = make_uint4(result[0], result[1], result[2], result[3]);
if (threadIdx.x % 4 == 3)
output = make_uint4(result[4], result[5], result[6], result[7]);
if (threadIdx.x % 4 == 0)
output = make_uint4(result[8], result[9], result[10], result[11]);
if (threadIdx.x % 4 == 1)
output = make_uint4(result[12], result[13], result[14], result[15]);
integral_row[(threadIdx.x + 2) % 4 + (threadIdx.x / 4) * 16 + 12] = output;
#endif
}
// This kernel computes columnwise prefix sums. When the data input is
// the row sums from above, this completes the integral image.
// The approach here is to have each block compute a local set of sums.
// First , the data covered by the block is loaded into shared memory,
// then instead of performing a sum in shared memory using __syncthreads
// between stages, the data is reformatted so that the necessary sums
// occur inside warps and the shuffle scan operation is used.
// The final set of sums from the block is then propgated, with the block
// computing "down" the image and adding the running sum to the local
// block sums.
__global__ void shfl_integral_vertical(cv::gpu::PtrStepSz<unsigned int> integral)
{
#if defined(__CUDA_ARCH__) && (__CUDA_ARCH__ >= 300)
__shared__ unsigned int sums[32][9];
const int tidx = blockIdx.x * blockDim.x + threadIdx.x;
const int lane_id = tidx % 8;
if (tidx >= integral.cols)
return;
sums[threadIdx.x][threadIdx.y] = 0;
__syncthreads();
unsigned int stepSum = 0;
for (int y = threadIdx.y; y < integral.rows; y += blockDim.y)
{
unsigned int* p = integral.ptr(y) + tidx;
unsigned int sum = *p;
sums[threadIdx.x][threadIdx.y] = sum;
__syncthreads();
// place into SMEM
// shfl scan reduce the SMEM, reformating so the column
// sums are computed in a warp
// then read out properly
const int j = threadIdx.x % 8;
const int k = threadIdx.x / 8 + threadIdx.y * 4;
int partial_sum = sums[k][j];
for (int i = 1; i <= 8; i *= 2)
{
int n = __shfl_up(partial_sum, i, 32);
if (lane_id >= i)
partial_sum += n;
}
sums[k][j] = partial_sum;
__syncthreads();
if (threadIdx.y > 0)
sum += sums[threadIdx.x][threadIdx.y - 1];
sum += stepSum;
stepSum += sums[threadIdx.x][blockDim.y - 1];
__syncthreads();
*p = sum;
}
#endif
}
void shfl_integral(const cv::gpu::PtrStepSzb& img, cv::gpu::PtrStepSz<unsigned int> integral, cudaStream_t stream)
{
{
// each thread handles 16 values, use 1 block/row
// save, becouse step is actually can't be less 512 bytes
int block = integral.cols / 16;
// launch 1 block / row
const int grid = img.rows;
cudaSafeCall( cudaFuncSetCacheConfig(shfl_integral_horizontal, cudaFuncCachePreferL1) );
shfl_integral_horizontal<<<grid, block, 0, stream>>>((const cv::gpu::PtrStepSz<uint4>) img, (cv::gpu::PtrStepSz<uint4>) integral);
cudaSafeCall( cudaGetLastError() );
}
{
const dim3 block(32, 8);
const dim3 grid(divUp(integral.cols, block.x), 1);
shfl_integral_vertical<<<grid, block, 0, stream>>>(integral);
cudaSafeCall( cudaGetLastError() );
}
if (stream == 0)
cudaSafeCall( cudaDeviceSynchronize() );
}
__global__ void shfl_integral_vertical(cv::gpu::PtrStepSz<unsigned int> buffer, cv::gpu::PtrStepSz<unsigned int> integral)
{
#if defined(__CUDA_ARCH__) && (__CUDA_ARCH__ >= 300)
__shared__ unsigned int sums[32][9];
const int tidx = blockIdx.x * blockDim.x + threadIdx.x;
const int lane_id = tidx % 8;
if (tidx >= integral.cols)
return;
sums[threadIdx.x][threadIdx.y] = 0;
__syncthreads();
unsigned int stepSum = 0;
for (int y = threadIdx.y; y < integral.rows; y += blockDim.y)
{
unsigned int* p = buffer.ptr(y) + tidx;
unsigned int* dst = integral.ptr(y + 1) + tidx + 1;
unsigned int sum = *p;
sums[threadIdx.x][threadIdx.y] = sum;
__syncthreads();
// place into SMEM
// shfl scan reduce the SMEM, reformating so the column
// sums are computed in a warp
// then read out properly
const int j = threadIdx.x % 8;
const int k = threadIdx.x / 8 + threadIdx.y * 4;
int partial_sum = sums[k][j];
for (int i = 1; i <= 8; i *= 2)
{
int n = __shfl_up(partial_sum, i, 32);
if (lane_id >= i)
partial_sum += n;
}
sums[k][j] = partial_sum;
__syncthreads();
if (threadIdx.y > 0)
sum += sums[threadIdx.x][threadIdx.y - 1];
sum += stepSum;
stepSum += sums[threadIdx.x][blockDim.y - 1];
__syncthreads();
*dst = sum;
}
#endif
}
// used for frame preprocessing before Soft Cascade evaluation: no synchronization needed
void shfl_integral_gpu_buffered(cv::gpu::PtrStepSzb img, cv::gpu::PtrStepSz<uint4> buffer, cv::gpu::PtrStepSz<unsigned int> integral,
int blockStep, cudaStream_t stream)
{
{
const int block = blockStep;
const int grid = img.rows;
cudaSafeCall( cudaFuncSetCacheConfig(shfl_integral_horizontal, cudaFuncCachePreferL1) );
shfl_integral_horizontal<<<grid, block, 0, stream>>>((cv::gpu::PtrStepSz<uint4>) img, buffer);
cudaSafeCall( cudaGetLastError() );
}
{
const dim3 block(32, 8);
const dim3 grid(divUp(integral.cols, block.x), 1);
shfl_integral_vertical<<<grid, block, 0, stream>>>((cv::gpu::PtrStepSz<uint>)buffer, integral);
cudaSafeCall( cudaGetLastError() );
}
}
// 0
#define CV_DESCALE(x, n) (((x) + (1 << ((n)-1))) >> (n))
enum
{
yuv_shift = 14,
xyz_shift = 12,
R2Y = 4899,
G2Y = 9617,
B2Y = 1868
};
template <int bidx> static __device__ __forceinline__ unsigned char RGB2GrayConvert(uint src)
{
uint b = 0xffu & (src >> (bidx * 8));
uint g = 0xffu & (src >> 8);
uint r = 0xffu & (src >> ((bidx ^ 2) * 8));
return CV_DESCALE((uint)(b * B2Y + g * G2Y + r * R2Y), yuv_shift);
}
void transform(const cv::gpu::PtrStepSz<uchar3>& bgr, cv::gpu::PtrStepSzb gray)
{
}
}}}
\ No newline at end of file
modules/softcascade/src/cuda/icf-sc.cu
View file @
6f11dc03
...
...
@@ -54,7 +54,7 @@ namespace
inline void ___cudaSafeCall(cudaError_t err, const char *file, const int line, const char *func = "")
{
//if (cudaSuccess != err) cv::gpu::error(cudaGetErrorString(err), file, line, func);
//
if (cudaSuccess != err) cv::gpu::error(cudaGetErrorString(err), file, line, func);
}
}
...
...
modules/softcascade/src/detector_cuda.cpp
View file @
6f11dc03
...
...
@@ -105,8 +105,11 @@ namespace cv { namespace softcascade { namespace device {
cv
::
gpu
::
PtrStepSzb
suppressed
,
cudaStream_t
stream
);
void
bgr2Luv
(
const
cv
::
gpu
::
PtrStepSzb
&
bgr
,
cv
::
gpu
::
PtrStepSzb
luv
);
void
transform
(
const
cv
::
gpu
::
PtrStepSz
<
uchar3
>&
bgr
,
cv
::
gpu
::
PtrStepSzb
gray
);
void
gray2hog
(
const
cv
::
gpu
::
PtrStepSzb
&
gray
,
cv
::
gpu
::
PtrStepSzb
mag
,
const
int
bins
);
void
shrink
(
const
cv
::
gpu
::
PtrStepSzb
&
channels
,
cv
::
gpu
::
PtrStepSzb
shrunk
);
void
shfl_integral
(
const
cv
::
gpu
::
PtrStepSzb
&
img
,
cv
::
gpu
::
PtrStepSz
<
unsigned
int
>
integral
,
cudaStream_t
stream
);
}}}
struct
cv
::
softcascade
::
SCascade
::
Fields
...
...
@@ -474,6 +477,45 @@ bool cv::softcascade::SCascade::load(const FileNode& fn)
return
fields
!=
0
;
}
namespace
{
void
integral
(
const
cv
::
gpu
::
GpuMat
&
src
,
cv
::
gpu
::
GpuMat
&
sum
,
cv
::
gpu
::
GpuMat
&
buffer
,
cv
::
gpu
::
Stream
&
s
)
{
CV_Assert
(
src
.
type
()
==
CV_8UC1
);
cudaStream_t
stream
=
cv
::
gpu
::
StreamAccessor
::
getStream
(
s
);
cv
::
Size
whole
;
cv
::
Point
offset
;
src
.
locateROI
(
whole
,
offset
);
if
(
cv
::
gpu
::
deviceSupports
(
cv
::
gpu
::
WARP_SHUFFLE_FUNCTIONS
)
&&
src
.
cols
<=
2048
&&
offset
.
x
%
16
==
0
&&
((
src
.
cols
+
63
)
/
64
)
*
64
<=
(
static_cast
<
int
>
(
src
.
step
)
-
offset
.
x
))
{
ensureSizeIsEnough
(((
src
.
rows
+
7
)
/
8
)
*
8
,
((
src
.
cols
+
63
)
/
64
)
*
64
,
CV_32SC1
,
buffer
);
cv
::
softcascade
::
device
::
shfl_integral
(
src
,
buffer
,
stream
);
sum
.
create
(
src
.
rows
+
1
,
src
.
cols
+
1
,
CV_32SC1
);
if
(
s
)
s
.
enqueueMemSet
(
sum
,
cv
::
Scalar
::
all
(
0
));
else
sum
.
setTo
(
cv
::
Scalar
::
all
(
0
));
cv
::
gpu
::
GpuMat
inner
=
sum
(
cv
::
Rect
(
1
,
1
,
src
.
cols
,
src
.
rows
));
cv
::
gpu
::
GpuMat
res
=
buffer
(
cv
::
Rect
(
0
,
0
,
src
.
cols
,
src
.
rows
));
if
(
s
)
s
.
enqueueCopy
(
res
,
inner
);
else
res
.
copyTo
(
inner
);
}
else
{
CV_Error
(
CV_GpuNotSupported
,
": CC 3.x required."
);}
}
}
void
cv
::
softcascade
::
SCascade
::
detect
(
InputArray
_image
,
InputArray
_rois
,
OutputArray
_objects
,
cv
::
gpu
::
Stream
&
s
)
const
{
CV_Assert
(
fields
);
...
...
@@ -494,7 +536,7 @@ void cv::softcascade::SCascade::detect(InputArray _image, InputArray _rois, Outp
flds
.
mask
.
create
(
rois
.
cols
/
shr
,
rois
.
rows
/
shr
,
rois
.
type
());
//cv::gpu::resize(rois, flds.genRoiTmp, cv::Size(), 1.f / shr, 1.f / shr, CV_INTER_AREA, s
);
device
::
shrink
(
rois
,
flds
.
genRoiTmp
);
//cv::gpu::transpose(flds.genRoiTmp, flds.mask, s);
if
(
type
==
CV_8UC3
)
...
...
@@ -505,7 +547,7 @@ void cv::softcascade::SCascade::detect(InputArray _image, InputArray _rois, Outp
flds
.
createLevels
(
image
.
rows
,
image
.
cols
);
flds
.
preprocessor
->
apply
(
image
,
flds
.
shrunk
);
//cv::gpu::integralBuffered
(flds.shrunk, flds.hogluv, flds.integralBuffer, s);
integral
(
flds
.
shrunk
,
flds
.
hogluv
,
flds
.
integralBuffer
,
s
);
}
else
{
...
...
@@ -561,7 +603,7 @@ struct SeparablePreprocessor : public cv::softcascade::ChannelsProcessor
channels
.
create
(
frame
.
rows
*
(
4
+
bins
),
frame
.
cols
,
CV_8UC1
);
setZero
(
channels
,
s
);
//cv::gpu::cvtColor(bgr, gray, CV_BGR2GRAY);
cv
::
softcascade
::
device
::
transform
(
bgr
,
gray
);
//cv::gpu::cvtColor(bgr, gray, CV_BGR2GRAY);
cv
::
softcascade
::
device
::
gray2hog
(
gray
,
channels
(
cv
::
Rect
(
0
,
0
,
bgr
.
cols
,
bgr
.
rows
*
(
bins
+
1
))),
bins
);
cv
::
gpu
::
GpuMat
luv
(
channels
,
cv
::
Rect
(
0
,
bgr
.
rows
*
(
bins
+
1
),
bgr
.
cols
,
bgr
.
rows
*
3
));
...
...
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