| /*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. |
| // |
| // |
| // Intel License Agreement |
| // For Open Source Computer Vision Library |
| // |
| // Copyright (C) 2000, Intel Corporation, 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 Intel Corporation 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, |
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| // (including, but not limited to, procurement of substitute goods or services; |
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| // and on any theory of liability, whether in contract, strict liability, |
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| // the use of this software, even if advised of the possibility of such damage. |
| // |
| //M*/ |
| |
| #include "_cxcore.h" |
| |
| /****************************************************************************************\ |
| * Mean and StdDev calculation * |
| \****************************************************************************************/ |
| |
| #define ICV_MEAN_SDV_COI_CASE( worktype, sqsumtype, \ |
| sqr_macro, len, cn ) \ |
| for( ; x <= (len) - 4*(cn); x += 4*(cn))\ |
| { \ |
| worktype t0 = src[x]; \ |
| worktype t1 = src[x + (cn)]; \ |
| \ |
| s0 += t0 + t1; \ |
| sq0 += (sqsumtype)(sqr_macro(t0)) + \ |
| (sqsumtype)(sqr_macro(t1)); \ |
| \ |
| t0 = src[x + 2*(cn)]; \ |
| t1 = src[x + 3*(cn)]; \ |
| \ |
| s0 += t0 + t1; \ |
| sq0 += (sqsumtype)(sqr_macro(t0)) + \ |
| (sqsumtype)(sqr_macro(t1)); \ |
| } \ |
| \ |
| for( ; x < (len); x += (cn) ) \ |
| { \ |
| worktype t0 = src[x]; \ |
| \ |
| s0 += t0; \ |
| sq0 += (sqsumtype)(sqr_macro(t0)); \ |
| } |
| |
| |
| #define ICV_MEAN_SDV_CASE_C1( worktype, sqsumtype, sqr_macro, len ) \ |
| ICV_MEAN_SDV_COI_CASE( worktype, sqsumtype, sqr_macro, len, 1 ) |
| |
| |
| #define ICV_MEAN_SDV_CASE_C2( worktype, sqsumtype, \ |
| sqr_macro, len ) \ |
| for( ; x < (len); x += 2 ) \ |
| { \ |
| worktype t0 = (src)[x]; \ |
| worktype t1 = (src)[x + 1]; \ |
| \ |
| s0 += t0; \ |
| sq0 += (sqsumtype)(sqr_macro(t0)); \ |
| s1 += t1; \ |
| sq1 += (sqsumtype)(sqr_macro(t1)); \ |
| } |
| |
| |
| #define ICV_MEAN_SDV_CASE_C3( worktype, sqsumtype, \ |
| sqr_macro, len ) \ |
| for( ; x < (len); x += 3 ) \ |
| { \ |
| worktype t0 = (src)[x]; \ |
| worktype t1 = (src)[x + 1]; \ |
| worktype t2 = (src)[x + 2]; \ |
| \ |
| s0 += t0; \ |
| sq0 += (sqsumtype)(sqr_macro(t0)); \ |
| s1 += t1; \ |
| sq1 += (sqsumtype)(sqr_macro(t1)); \ |
| s2 += t2; \ |
| sq2 += (sqsumtype)(sqr_macro(t2)); \ |
| } |
| |
| |
| #define ICV_MEAN_SDV_CASE_C4( worktype, sqsumtype, \ |
| sqr_macro, len ) \ |
| for( ; x < (len); x += 4 ) \ |
| { \ |
| worktype t0 = (src)[x]; \ |
| worktype t1 = (src)[x + 1]; \ |
| \ |
| s0 += t0; \ |
| sq0 += (sqsumtype)(sqr_macro(t0)); \ |
| s1 += t1; \ |
| sq1 += (sqsumtype)(sqr_macro(t1)); \ |
| \ |
| t0 = (src)[x + 2]; \ |
| t1 = (src)[x + 3]; \ |
| \ |
| s2 += t0; \ |
| sq2 += (sqsumtype)(sqr_macro(t0)); \ |
| s3 += t1; \ |
| sq3 += (sqsumtype)(sqr_macro(t1)); \ |
| } |
| |
| |
| #define ICV_MEAN_SDV_MASK_COI_CASE( worktype, sqsumtype, \ |
| sqr_macro, len, cn ) \ |
| for( ; x <= (len) - 4; x += 4 ) \ |
| { \ |
| worktype t0; \ |
| if( mask[x] ) \ |
| { \ |
| t0 = src[x*(cn)]; pix++; \ |
| s0 += t0; \ |
| sq0 += sqsumtype(sqr_macro(t0)); \ |
| } \ |
| \ |
| if( mask[x+1] ) \ |
| { \ |
| t0 = src[(x+1)*(cn)]; pix++; \ |
| s0 += t0; \ |
| sq0 += sqsumtype(sqr_macro(t0)); \ |
| } \ |
| \ |
| if( mask[x+2] ) \ |
| { \ |
| t0 = src[(x+2)*(cn)]; pix++; \ |
| s0 += t0; \ |
| sq0 += sqsumtype(sqr_macro(t0)); \ |
| } \ |
| \ |
| if( mask[x+3] ) \ |
| { \ |
| t0 = src[(x+3)*(cn)]; pix++; \ |
| s0 += t0; \ |
| sq0 += sqsumtype(sqr_macro(t0)); \ |
| } \ |
| } \ |
| \ |
| for( ; x < (len); x++ ) \ |
| { \ |
| if( mask[x] ) \ |
| { \ |
| worktype t0 = src[x*(cn)]; pix++; \ |
| s0 += t0; \ |
| sq0 += sqsumtype(sqr_macro(t0)); \ |
| } \ |
| } |
| |
| |
| #define ICV_MEAN_SDV_MASK_CASE_C1( worktype, sqsumtype, sqr_macro, len ) \ |
| ICV_MEAN_SDV_MASK_COI_CASE( worktype, sqsumtype, sqr_macro, len, 1 ) |
| |
| |
| #define ICV_MEAN_SDV_MASK_CASE_C2( worktype, sqsumtype,\ |
| sqr_macro, len ) \ |
| for( ; x < (len); x++ ) \ |
| { \ |
| if( mask[x] ) \ |
| { \ |
| worktype t0 = src[x*2]; \ |
| worktype t1 = src[x*2+1]; \ |
| pix++; \ |
| s0 += t0; \ |
| sq0 += sqsumtype(sqr_macro(t0)); \ |
| s1 += t1; \ |
| sq1 += sqsumtype(sqr_macro(t1)); \ |
| } \ |
| } |
| |
| |
| #define ICV_MEAN_SDV_MASK_CASE_C3( worktype, sqsumtype,\ |
| sqr_macro, len ) \ |
| for( ; x < (len); x++ ) \ |
| { \ |
| if( mask[x] ) \ |
| { \ |
| worktype t0 = src[x*3]; \ |
| worktype t1 = src[x*3+1]; \ |
| worktype t2 = src[x*3+2]; \ |
| pix++; \ |
| s0 += t0; \ |
| sq0 += sqsumtype(sqr_macro(t0)); \ |
| s1 += t1; \ |
| sq1 += sqsumtype(sqr_macro(t1)); \ |
| s2 += t2; \ |
| sq2 += sqsumtype(sqr_macro(t2)); \ |
| } \ |
| } |
| |
| |
| #define ICV_MEAN_SDV_MASK_CASE_C4( worktype, sqsumtype,\ |
| sqr_macro, len ) \ |
| for( ; x < (len); x++ ) \ |
| { \ |
| if( mask[x] ) \ |
| { \ |
| worktype t0 = src[x*4]; \ |
| worktype t1 = src[x*4+1]; \ |
| pix++; \ |
| s0 += t0; \ |
| sq0 += sqsumtype(sqr_macro(t0)); \ |
| s1 += t1; \ |
| sq1 += sqsumtype(sqr_macro(t1)); \ |
| t0 = src[x*4+2]; \ |
| t1 = src[x*4+3]; \ |
| s2 += t0; \ |
| sq2 += sqsumtype(sqr_macro(t0)); \ |
| s3 += t1; \ |
| sq3 += sqsumtype(sqr_macro(t1)); \ |
| } \ |
| } |
| |
| |
| ////////////////////////////////////// entry macros ////////////////////////////////////// |
| |
| #define ICV_MEAN_SDV_ENTRY_COMMON() \ |
| int pix; \ |
| double scale, tmp; \ |
| step /= sizeof(src[0]) |
| |
| #define ICV_MEAN_SDV_ENTRY_C1( sumtype, sqsumtype ) \ |
| sumtype s0 = 0; \ |
| sqsumtype sq0 = 0; \ |
| ICV_MEAN_SDV_ENTRY_COMMON() |
| |
| #define ICV_MEAN_SDV_ENTRY_C2( sumtype, sqsumtype ) \ |
| sumtype s0 = 0, s1 = 0; \ |
| sqsumtype sq0 = 0, sq1 = 0; \ |
| ICV_MEAN_SDV_ENTRY_COMMON() |
| |
| #define ICV_MEAN_SDV_ENTRY_C3( sumtype, sqsumtype ) \ |
| sumtype s0 = 0, s1 = 0, s2 = 0; \ |
| sqsumtype sq0 = 0, sq1 = 0, sq2 = 0; \ |
| ICV_MEAN_SDV_ENTRY_COMMON() |
| |
| #define ICV_MEAN_SDV_ENTRY_C4( sumtype, sqsumtype ) \ |
| sumtype s0 = 0, s1 = 0, s2 = 0, s3 = 0; \ |
| sqsumtype sq0 = 0, sq1 = 0, sq2 = 0, sq3 = 0; \ |
| ICV_MEAN_SDV_ENTRY_COMMON() |
| |
| |
| #define ICV_MEAN_SDV_ENTRY_BLOCK_COMMON( block_size ) \ |
| int remaining = block_size; \ |
| ICV_MEAN_SDV_ENTRY_COMMON() |
| |
| #define ICV_MEAN_SDV_ENTRY_BLOCK_C1( sumtype, sqsumtype, \ |
| worktype, sqworktype, block_size ) \ |
| sumtype sum0 = 0; \ |
| sqsumtype sqsum0 = 0; \ |
| worktype s0 = 0; \ |
| sqworktype sq0 = 0; \ |
| ICV_MEAN_SDV_ENTRY_BLOCK_COMMON( block_size ) |
| |
| #define ICV_MEAN_SDV_ENTRY_BLOCK_C2( sumtype, sqsumtype, \ |
| worktype, sqworktype, block_size ) \ |
| sumtype sum0 = 0, sum1 = 0; \ |
| sqsumtype sqsum0 = 0, sqsum1 = 0; \ |
| worktype s0 = 0, s1 = 0; \ |
| sqworktype sq0 = 0, sq1 = 0; \ |
| ICV_MEAN_SDV_ENTRY_BLOCK_COMMON( block_size ) |
| |
| #define ICV_MEAN_SDV_ENTRY_BLOCK_C3( sumtype, sqsumtype, \ |
| worktype, sqworktype, block_size ) \ |
| sumtype sum0 = 0, sum1 = 0, sum2 = 0; \ |
| sqsumtype sqsum0 = 0, sqsum1 = 0, sqsum2 = 0; \ |
| worktype s0 = 0, s1 = 0, s2 = 0; \ |
| sqworktype sq0 = 0, sq1 = 0, sq2 = 0; \ |
| ICV_MEAN_SDV_ENTRY_BLOCK_COMMON( block_size ) |
| |
| #define ICV_MEAN_SDV_ENTRY_BLOCK_C4( sumtype, sqsumtype, \ |
| worktype, sqworktype, block_size ) \ |
| sumtype sum0 = 0, sum1 = 0, sum2 = 0, sum3 = 0; \ |
| sqsumtype sqsum0 = 0, sqsum1 = 0, sqsum2 = 0, sqsum3 = 0; \ |
| worktype s0 = 0, s1 = 0, s2 = 0, s3 = 0; \ |
| sqworktype sq0 = 0, sq1 = 0, sq2 = 0, sq3 = 0; \ |
| ICV_MEAN_SDV_ENTRY_BLOCK_COMMON( block_size ) |
| |
| |
| /////////////////////////////////////// exit macros ////////////////////////////////////// |
| |
| #define ICV_MEAN_SDV_EXIT_COMMON() \ |
| scale = pix ? 1./pix : 0 |
| |
| #define ICV_MEAN_SDV_EXIT_CN( total, sqtotal, idx ) \ |
| ICV_MEAN_SDV_EXIT_COMMON(); \ |
| mean[idx] = tmp = scale*(double)total##idx; \ |
| tmp = scale*(double)sqtotal##idx - tmp*tmp; \ |
| sdv[idx] = sqrt(MAX(tmp,0.)) |
| |
| #define ICV_MEAN_SDV_EXIT_C1( total, sqtotal ) \ |
| ICV_MEAN_SDV_EXIT_COMMON(); \ |
| ICV_MEAN_SDV_EXIT_CN( total, sqtotal, 0 ) |
| |
| #define ICV_MEAN_SDV_EXIT_C2( total, sqtotal ) \ |
| ICV_MEAN_SDV_EXIT_COMMON(); \ |
| ICV_MEAN_SDV_EXIT_CN( total, sqtotal, 0 ); \ |
| ICV_MEAN_SDV_EXIT_CN( total, sqtotal, 1 ) |
| |
| #define ICV_MEAN_SDV_EXIT_C3( total, sqtotal ) \ |
| ICV_MEAN_SDV_EXIT_COMMON(); \ |
| ICV_MEAN_SDV_EXIT_CN( total, sqtotal, 0 ); \ |
| ICV_MEAN_SDV_EXIT_CN( total, sqtotal, 1 ); \ |
| ICV_MEAN_SDV_EXIT_CN( total, sqtotal, 2 ) |
| |
| #define ICV_MEAN_SDV_EXIT_C4( total, sqtotal ) \ |
| ICV_MEAN_SDV_EXIT_COMMON(); \ |
| ICV_MEAN_SDV_EXIT_CN( total, sqtotal, 0 ); \ |
| ICV_MEAN_SDV_EXIT_CN( total, sqtotal, 1 ); \ |
| ICV_MEAN_SDV_EXIT_CN( total, sqtotal, 2 ); \ |
| ICV_MEAN_SDV_EXIT_CN( total, sqtotal, 3 ) |
| |
| ////////////////////////////////////// update macros ///////////////////////////////////// |
| |
| #define ICV_MEAN_SDV_UPDATE_COMMON( block_size )\ |
| remaining = block_size |
| |
| #define ICV_MEAN_SDV_UPDATE_C1( block_size ) \ |
| ICV_MEAN_SDV_UPDATE_COMMON( block_size ); \ |
| sum0 += s0; sqsum0 += sq0; \ |
| s0 = 0; sq0 = 0 |
| |
| #define ICV_MEAN_SDV_UPDATE_C2( block_size ) \ |
| ICV_MEAN_SDV_UPDATE_COMMON( block_size ); \ |
| sum0 += s0; sqsum0 += sq0; \ |
| sum1 += s1; sqsum1 += sq1; \ |
| s0 = s1 = 0; sq0 = sq1 = 0 |
| |
| #define ICV_MEAN_SDV_UPDATE_C3( block_size ) \ |
| ICV_MEAN_SDV_UPDATE_COMMON( block_size ); \ |
| sum0 += s0; sqsum0 += sq0; \ |
| sum1 += s1; sqsum1 += sq1; \ |
| sum2 += s2; sqsum2 += sq2; \ |
| s0 = s1 = s2 = 0; sq0 = sq1 = sq2 = 0 |
| |
| #define ICV_MEAN_SDV_UPDATE_C4( block_size ) \ |
| ICV_MEAN_SDV_UPDATE_COMMON( block_size ); \ |
| sum0 += s0; sqsum0 += sq0; \ |
| sum1 += s1; sqsum1 += sq1; \ |
| sum2 += s2; sqsum2 += sq2; \ |
| sum3 += s3; sqsum3 += sq3; \ |
| s0 = s1 = s2 = s3 = 0; sq0 = sq1 = sq2 = sq3 = 0 |
| |
| |
| |
| #define ICV_DEF_MEAN_SDV_BLOCK_FUNC_2D( flavor, cn, arrtype, \ |
| sumtype, sqsumtype, worktype, \ |
| sqworktype, block_size, sqr_macro ) \ |
| IPCVAPI_IMPL( CvStatus, icvMean_StdDev_##flavor##_C##cn##R, \ |
| ( const arrtype* src, int step, \ |
| CvSize size, double* mean, double* sdv ), \ |
| (src, step, size, mean, sdv) ) \ |
| { \ |
| ICV_MEAN_SDV_ENTRY_BLOCK_C##cn( sumtype, sqsumtype, \ |
| worktype, sqworktype, (block_size)*(cn) ); \ |
| pix = size.width * size.height; \ |
| size.width *= (cn); \ |
| \ |
| for( ; size.height--; src += step ) \ |
| { \ |
| int x = 0; \ |
| while( x < size.width ) \ |
| { \ |
| int limit = MIN( remaining, size.width - x ); \ |
| remaining -= limit; \ |
| limit += x; \ |
| ICV_MEAN_SDV_CASE_C##cn( worktype, sqworktype, \ |
| sqr_macro, limit ); \ |
| if( remaining == 0 ) \ |
| { \ |
| ICV_MEAN_SDV_UPDATE_C##cn( (block_size)*(cn) ); \ |
| } \ |
| } \ |
| } \ |
| \ |
| ICV_MEAN_SDV_UPDATE_C##cn(0); \ |
| ICV_MEAN_SDV_EXIT_C##cn( sum, sqsum ); \ |
| return CV_OK; \ |
| } |
| |
| |
| #define ICV_DEF_MEAN_SDV_FUNC_2D( flavor, cn, arrtype, \ |
| sumtype, sqsumtype, worktype ) \ |
| IPCVAPI_IMPL( CvStatus, icvMean_StdDev_##flavor##_C##cn##R, \ |
| ( const arrtype* src, int step, \ |
| CvSize size, double* mean, double* sdv ), \ |
| (src, step, size, mean, sdv) ) \ |
| { \ |
| ICV_MEAN_SDV_ENTRY_C##cn( sumtype, sqsumtype ); \ |
| pix = size.width * size.height; \ |
| size.width *= (cn); \ |
| \ |
| for( ; size.height--; src += step ) \ |
| { \ |
| int x = 0; \ |
| ICV_MEAN_SDV_CASE_C##cn( worktype, sqsumtype, \ |
| CV_SQR, size.width ); \ |
| } \ |
| \ |
| ICV_MEAN_SDV_EXIT_C##cn( s, sq ); \ |
| return CV_OK; \ |
| } |
| |
| |
| #define ICV_DEF_MEAN_SDV_BLOCK_FUNC_2D_COI( flavor, arrtype, \ |
| sumtype, sqsumtype, worktype, \ |
| sqworktype, block_size, sqr_macro ) \ |
| static CvStatus CV_STDCALL icvMean_StdDev_##flavor##_CnCR \ |
| ( const arrtype* src, int step, \ |
| CvSize size, int cn, int coi, \ |
| double* mean, double* sdv ) \ |
| { \ |
| ICV_MEAN_SDV_ENTRY_BLOCK_C1( sumtype, sqsumtype, \ |
| worktype, sqworktype, (block_size)*(cn) ); \ |
| pix = size.width * size.height; \ |
| size.width *= (cn); \ |
| src += coi - 1; \ |
| \ |
| for( ; size.height--; src += step ) \ |
| { \ |
| int x = 0; \ |
| while( x < size.width ) \ |
| { \ |
| int limit = MIN( remaining, size.width - x ); \ |
| remaining -= limit; \ |
| limit += x; \ |
| ICV_MEAN_SDV_COI_CASE( worktype, sqworktype, \ |
| sqr_macro, limit, cn); \ |
| if( remaining == 0 ) \ |
| { \ |
| ICV_MEAN_SDV_UPDATE_C1( (block_size)*(cn) ); \ |
| } \ |
| } \ |
| } \ |
| \ |
| ICV_MEAN_SDV_UPDATE_C1(0); \ |
| ICV_MEAN_SDV_EXIT_C1( sum, sqsum ); \ |
| return CV_OK; \ |
| } |
| |
| |
| #define ICV_DEF_MEAN_SDV_FUNC_2D_COI( flavor, arrtype, \ |
| sumtype, sqsumtype, worktype )\ |
| static CvStatus CV_STDCALL icvMean_StdDev_##flavor##_CnCR \ |
| ( const arrtype* src, int step, CvSize size,\ |
| int cn, int coi, double* mean, double* sdv )\ |
| { \ |
| ICV_MEAN_SDV_ENTRY_C1( sumtype, sqsumtype ); \ |
| pix = size.width * size.height; \ |
| size.width *= (cn); \ |
| src += coi - 1; \ |
| \ |
| for( ; size.height--; src += step ) \ |
| { \ |
| int x = 0; \ |
| ICV_MEAN_SDV_COI_CASE( worktype, sqsumtype, \ |
| CV_SQR, size.width, cn ); \ |
| } \ |
| \ |
| ICV_MEAN_SDV_EXIT_C1( s, sq ); \ |
| return CV_OK; \ |
| } |
| |
| |
| #define ICV_DEF_MEAN_SDV_MASK_BLOCK_FUNC_2D( flavor, cn, \ |
| arrtype, sumtype, sqsumtype, worktype, \ |
| sqworktype, block_size, sqr_macro ) \ |
| IPCVAPI_IMPL( CvStatus, icvMean_StdDev_##flavor##_C##cn##MR, \ |
| ( const arrtype* src, int step, \ |
| const uchar* mask, int maskstep, \ |
| CvSize size, double* mean, double* sdv ), \ |
| (src, step, mask, maskstep, size, mean, sdv))\ |
| { \ |
| ICV_MEAN_SDV_ENTRY_BLOCK_C##cn( sumtype, sqsumtype, \ |
| worktype, sqworktype, block_size ); \ |
| pix = 0; \ |
| \ |
| for( ; size.height--; src += step, mask += maskstep ) \ |
| { \ |
| int x = 0; \ |
| while( x < size.width ) \ |
| { \ |
| int limit = MIN( remaining, size.width - x ); \ |
| remaining -= limit; \ |
| limit += x; \ |
| ICV_MEAN_SDV_MASK_CASE_C##cn( worktype, sqworktype, \ |
| sqr_macro, limit ); \ |
| if( remaining == 0 ) \ |
| { \ |
| ICV_MEAN_SDV_UPDATE_C##cn( block_size ); \ |
| } \ |
| } \ |
| } \ |
| \ |
| ICV_MEAN_SDV_UPDATE_C##cn(0); \ |
| ICV_MEAN_SDV_EXIT_C##cn( sum, sqsum ); \ |
| return CV_OK; \ |
| } |
| |
| |
| #define ICV_DEF_MEAN_SDV_MASK_FUNC_2D( flavor, cn, arrtype, \ |
| sumtype, sqsumtype, worktype)\ |
| IPCVAPI_IMPL( CvStatus, icvMean_StdDev_##flavor##_C##cn##MR, \ |
| ( const arrtype* src, int step, \ |
| const uchar* mask, int maskstep, \ |
| CvSize size, double* mean, double* sdv ), \ |
| (src, step, mask, maskstep, size, mean, sdv))\ |
| { \ |
| ICV_MEAN_SDV_ENTRY_C##cn( sumtype, sqsumtype ); \ |
| pix = 0; \ |
| \ |
| for( ; size.height--; src += step, mask += maskstep ) \ |
| { \ |
| int x = 0; \ |
| ICV_MEAN_SDV_MASK_CASE_C##cn( worktype, sqsumtype, \ |
| CV_SQR, size.width ); \ |
| } \ |
| \ |
| ICV_MEAN_SDV_EXIT_C##cn( s, sq ); \ |
| return CV_OK; \ |
| } |
| |
| |
| #define ICV_DEF_MEAN_SDV_MASK_BLOCK_FUNC_2D_COI( flavor, \ |
| arrtype, sumtype, sqsumtype, worktype, \ |
| sqworktype, block_size, sqr_macro ) \ |
| static CvStatus CV_STDCALL icvMean_StdDev_##flavor##_CnCMR \ |
| ( const arrtype* src, int step, \ |
| const uchar* mask, int maskstep, \ |
| CvSize size, int cn, int coi, \ |
| double* mean, double* sdv ) \ |
| { \ |
| ICV_MEAN_SDV_ENTRY_BLOCK_C1( sumtype, sqsumtype, \ |
| worktype, sqworktype, block_size ); \ |
| pix = 0; \ |
| src += coi - 1; \ |
| \ |
| for( ; size.height--; src += step, mask += maskstep ) \ |
| { \ |
| int x = 0; \ |
| while( x < size.width ) \ |
| { \ |
| int limit = MIN( remaining, size.width - x ); \ |
| remaining -= limit; \ |
| limit += x; \ |
| ICV_MEAN_SDV_MASK_COI_CASE( worktype, sqworktype, \ |
| sqr_macro, limit, cn ); \ |
| if( remaining == 0 ) \ |
| { \ |
| ICV_MEAN_SDV_UPDATE_C1( block_size ); \ |
| } \ |
| } \ |
| } \ |
| \ |
| ICV_MEAN_SDV_UPDATE_C1(0); \ |
| ICV_MEAN_SDV_EXIT_C1( sum, sqsum ); \ |
| return CV_OK; \ |
| } |
| |
| |
| #define ICV_DEF_MEAN_SDV_MASK_FUNC_2D_COI( flavor, arrtype, \ |
| sumtype, sqsumtype, worktype ) \ |
| static CvStatus CV_STDCALL icvMean_StdDev_##flavor##_CnCMR \ |
| ( const arrtype* src, int step, \ |
| const uchar* mask, int maskstep, \ |
| CvSize size, int cn, int coi, \ |
| double* mean, double* sdv ) \ |
| { \ |
| ICV_MEAN_SDV_ENTRY_C1( sumtype, sqsumtype ); \ |
| pix = 0; \ |
| src += coi - 1; \ |
| \ |
| for( ; size.height--; src += step, mask += maskstep ) \ |
| { \ |
| int x = 0; \ |
| ICV_MEAN_SDV_MASK_COI_CASE( worktype, sqsumtype, \ |
| CV_SQR, size.width, cn ); \ |
| } \ |
| \ |
| ICV_MEAN_SDV_EXIT_C1( s, sq ); \ |
| return CV_OK; \ |
| } |
| |
| |
| #define ICV_DEF_MEAN_SDV_BLOCK_ALL( flavor, arrtype, sumtype, sqsumtype,\ |
| worktype, sqworktype, block_size, sqr_macro)\ |
| ICV_DEF_MEAN_SDV_BLOCK_FUNC_2D( flavor, 1, arrtype, sumtype, sqsumtype, \ |
| worktype, sqworktype, block_size, sqr_macro)\ |
| ICV_DEF_MEAN_SDV_BLOCK_FUNC_2D( flavor, 2, arrtype, sumtype, sqsumtype, \ |
| worktype, sqworktype, block_size, sqr_macro)\ |
| ICV_DEF_MEAN_SDV_BLOCK_FUNC_2D( flavor, 3, arrtype, sumtype, sqsumtype, \ |
| worktype, sqworktype, block_size, sqr_macro)\ |
| ICV_DEF_MEAN_SDV_BLOCK_FUNC_2D( flavor, 4, arrtype, sumtype, sqsumtype, \ |
| worktype, sqworktype, block_size, sqr_macro)\ |
| ICV_DEF_MEAN_SDV_BLOCK_FUNC_2D_COI( flavor, arrtype, sumtype, sqsumtype,\ |
| worktype, sqworktype, block_size, sqr_macro)\ |
| \ |
| ICV_DEF_MEAN_SDV_MASK_BLOCK_FUNC_2D( flavor, 1, arrtype, sumtype, \ |
| sqsumtype, worktype, sqworktype, block_size, sqr_macro ) \ |
| ICV_DEF_MEAN_SDV_MASK_BLOCK_FUNC_2D( flavor, 2, arrtype, sumtype, \ |
| sqsumtype, worktype, sqworktype, block_size, sqr_macro ) \ |
| ICV_DEF_MEAN_SDV_MASK_BLOCK_FUNC_2D( flavor, 3, arrtype, sumtype, \ |
| sqsumtype, worktype, sqworktype, block_size, sqr_macro ) \ |
| ICV_DEF_MEAN_SDV_MASK_BLOCK_FUNC_2D( flavor, 4, arrtype, sumtype, \ |
| sqsumtype, worktype, sqworktype, block_size, sqr_macro ) \ |
| ICV_DEF_MEAN_SDV_MASK_BLOCK_FUNC_2D_COI( flavor, arrtype, sumtype, \ |
| sqsumtype, worktype, sqworktype, block_size, sqr_macro ) |
| |
| #define ICV_DEF_MEAN_SDV_ALL( flavor, arrtype, sumtype, sqsumtype, worktype ) \ |
| ICV_DEF_MEAN_SDV_FUNC_2D( flavor, 1, arrtype, sumtype, sqsumtype, worktype ) \ |
| ICV_DEF_MEAN_SDV_FUNC_2D( flavor, 2, arrtype, sumtype, sqsumtype, worktype ) \ |
| ICV_DEF_MEAN_SDV_FUNC_2D( flavor, 3, arrtype, sumtype, sqsumtype, worktype ) \ |
| ICV_DEF_MEAN_SDV_FUNC_2D( flavor, 4, arrtype, sumtype, sqsumtype, worktype ) \ |
| ICV_DEF_MEAN_SDV_FUNC_2D_COI( flavor, arrtype, sumtype, sqsumtype, worktype ) \ |
| \ |
| ICV_DEF_MEAN_SDV_MASK_FUNC_2D(flavor, 1, arrtype, sumtype, sqsumtype, worktype) \ |
| ICV_DEF_MEAN_SDV_MASK_FUNC_2D(flavor, 2, arrtype, sumtype, sqsumtype, worktype) \ |
| ICV_DEF_MEAN_SDV_MASK_FUNC_2D(flavor, 3, arrtype, sumtype, sqsumtype, worktype) \ |
| ICV_DEF_MEAN_SDV_MASK_FUNC_2D(flavor, 4, arrtype, sumtype, sqsumtype, worktype) \ |
| ICV_DEF_MEAN_SDV_MASK_FUNC_2D_COI( flavor, arrtype, sumtype, sqsumtype, worktype ) |
| |
| |
| ICV_DEF_MEAN_SDV_BLOCK_ALL( 8u, uchar, int64, int64, unsigned, unsigned, 1 << 16, CV_SQR_8U ) |
| ICV_DEF_MEAN_SDV_BLOCK_ALL( 16u, ushort, int64, int64, unsigned, int64, 1 << 16, CV_SQR ) |
| ICV_DEF_MEAN_SDV_BLOCK_ALL( 16s, short, int64, int64, int, int64, 1 << 16, CV_SQR ) |
| |
| ICV_DEF_MEAN_SDV_ALL( 32s, int, double, double, double ) |
| ICV_DEF_MEAN_SDV_ALL( 32f, float, double, double, double ) |
| ICV_DEF_MEAN_SDV_ALL( 64f, double, double, double, double ) |
| |
| #define icvMean_StdDev_8s_C1R 0 |
| #define icvMean_StdDev_8s_C2R 0 |
| #define icvMean_StdDev_8s_C3R 0 |
| #define icvMean_StdDev_8s_C4R 0 |
| #define icvMean_StdDev_8s_CnCR 0 |
| |
| #define icvMean_StdDev_8s_C1MR 0 |
| #define icvMean_StdDev_8s_C2MR 0 |
| #define icvMean_StdDev_8s_C3MR 0 |
| #define icvMean_StdDev_8s_C4MR 0 |
| #define icvMean_StdDev_8s_CnCMR 0 |
| |
| CV_DEF_INIT_BIG_FUNC_TAB_2D( Mean_StdDev, R ) |
| CV_DEF_INIT_FUNC_TAB_2D( Mean_StdDev, CnCR ) |
| CV_DEF_INIT_BIG_FUNC_TAB_2D( Mean_StdDev, MR ) |
| CV_DEF_INIT_FUNC_TAB_2D( Mean_StdDev, CnCMR ) |
| |
| CV_IMPL void |
| cvAvgSdv( const CvArr* img, CvScalar* _mean, CvScalar* _sdv, const void* mask ) |
| { |
| CvScalar mean = {{0,0,0,0}}; |
| CvScalar sdv = {{0,0,0,0}}; |
| |
| static CvBigFuncTable meansdv_tab; |
| static CvFuncTable meansdvcoi_tab; |
| static CvBigFuncTable meansdvmask_tab; |
| static CvFuncTable meansdvmaskcoi_tab; |
| static int inittab = 0; |
| |
| CV_FUNCNAME("cvMean_StdDev"); |
| |
| __BEGIN__; |
| |
| int type, coi = 0; |
| int mat_step, mask_step = 0; |
| CvSize size; |
| CvMat stub, maskstub, *mat = (CvMat*)img, *matmask = (CvMat*)mask; |
| |
| if( !inittab ) |
| { |
| icvInitMean_StdDevRTable( &meansdv_tab ); |
| icvInitMean_StdDevCnCRTable( &meansdvcoi_tab ); |
| icvInitMean_StdDevMRTable( &meansdvmask_tab ); |
| icvInitMean_StdDevCnCMRTable( &meansdvmaskcoi_tab ); |
| inittab = 1; |
| } |
| |
| if( !CV_IS_MAT(mat) ) |
| CV_CALL( mat = cvGetMat( mat, &stub, &coi )); |
| |
| type = CV_MAT_TYPE( mat->type ); |
| |
| if( CV_MAT_CN(type) > 4 && coi == 0 ) |
| CV_ERROR( CV_StsOutOfRange, "The input array must have at most 4 channels unless COI is set" ); |
| |
| size = cvGetMatSize( mat ); |
| mat_step = mat->step; |
| |
| if( !mask ) |
| { |
| if( CV_IS_MAT_CONT( mat->type )) |
| { |
| size.width *= size.height; |
| size.height = 1; |
| mat_step = CV_STUB_STEP; |
| } |
| |
| if( CV_MAT_CN(type) == 1 || coi == 0 ) |
| { |
| CvFunc2D_1A2P func = (CvFunc2D_1A2P)(meansdv_tab.fn_2d[type]); |
| |
| if( !func ) |
| CV_ERROR( CV_StsBadArg, cvUnsupportedFormat ); |
| |
| IPPI_CALL( func( mat->data.ptr, mat_step, size, mean.val, sdv.val )); |
| } |
| else |
| { |
| CvFunc2DnC_1A2P func = (CvFunc2DnC_1A2P) |
| (meansdvcoi_tab.fn_2d[CV_MAT_DEPTH(type)]); |
| |
| if( !func ) |
| CV_ERROR( CV_StsBadArg, cvUnsupportedFormat ); |
| |
| IPPI_CALL( func( mat->data.ptr, mat_step, size, |
| CV_MAT_CN(type), coi, mean.val, sdv.val )); |
| } |
| } |
| else |
| { |
| CV_CALL( matmask = cvGetMat( matmask, &maskstub )); |
| |
| mask_step = matmask->step; |
| |
| if( !CV_IS_MASK_ARR( matmask )) |
| CV_ERROR( CV_StsBadMask, "" ); |
| |
| if( !CV_ARE_SIZES_EQ( mat, matmask )) |
| CV_ERROR( CV_StsUnmatchedSizes, "" ); |
| |
| if( CV_IS_MAT_CONT( mat->type & matmask->type )) |
| { |
| size.width *= size.height; |
| size.height = 1; |
| mat_step = mask_step = CV_STUB_STEP; |
| } |
| |
| if( CV_MAT_CN(type) == 1 || coi == 0 ) |
| { |
| CvFunc2D_2A2P func = (CvFunc2D_2A2P)(meansdvmask_tab.fn_2d[type]); |
| |
| if( !func ) |
| CV_ERROR( CV_StsBadArg, cvUnsupportedFormat ); |
| |
| IPPI_CALL( func( mat->data.ptr, mat_step, matmask->data.ptr, |
| mask_step, size, mean.val, sdv.val )); |
| } |
| else |
| { |
| CvFunc2DnC_2A2P func = (CvFunc2DnC_2A2P) |
| (meansdvmaskcoi_tab.fn_2d[CV_MAT_DEPTH(type)]); |
| |
| if( !func ) |
| CV_ERROR( CV_StsBadArg, cvUnsupportedFormat ); |
| |
| IPPI_CALL( func( mat->data.ptr, mat_step, |
| matmask->data.ptr, mask_step, |
| size, CV_MAT_CN(type), coi, mean.val, sdv.val )); |
| } |
| } |
| |
| __END__; |
| |
| if( _mean ) |
| *_mean = mean; |
| |
| if( _sdv ) |
| *_sdv = sdv; |
| } |
| |
| |
| /* End of file */ |