testSemanticSegmentation.cpp 8.0 KB

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  1. // Beispielhafter Aufruf: BUILD_x86_64/progs/testSemanticSegmentation -config <CONFIGFILE>
  2. /**
  3. * @file testSemanticSegmentation.cpp
  4. * @brief test semantic segmentation routines
  5. * @author Erik Rodner
  6. * @date 03/20/2008
  7. */
  8. #ifdef NICE_USELIB_OPENMP
  9. #include <omp.h>
  10. #endif
  11. #include "core/basics/Config.h"
  12. #include "core/basics/StringTools.h"
  13. #include <vislearning/baselib/ICETools.h>
  14. #include <semseg/semseg/SemanticSegmentation.h>
  15. #include <semseg/semseg/SemSegLocal.h>
  16. #include <semseg/semseg/SemSegCsurka.h>
  17. #include <semseg/semseg/SemSegNovelty.h>
  18. #include <semseg/semseg/SemSegContextTree.h>
  19. #include <core/basics/ResourceStatistics.h>
  20. #include <fstream>
  21. using namespace OBJREC;
  22. using namespace NICE;
  23. using namespace std;
  24. void updateMatrix( const NICE::Image & img, const NICE::Image & gt,
  25. NICE::Matrix & M, const set<int> & forbidden_classes )
  26. {
  27. double subsamplex = gt.width() / ( double )img.width();
  28. double subsampley = gt.height() / ( double )img.height();
  29. for ( int y = 0 ; y < gt.height() ; y++ )
  30. for ( int x = 0 ; x < gt.width() ; x++ )
  31. {
  32. int xx = ( int )( x / subsamplex );
  33. int yy = ( int )( y / subsampley );
  34. if ( xx < 0 ) xx = 0;
  35. if ( yy < 0 ) yy = 0;
  36. if ( xx > img.width() - 1 ) xx = img.width() - 1;
  37. if ( yy > img.height() - 1 ) yy = img.height() - 1;
  38. int cimg = img.getPixel( xx, yy );
  39. int gimg = gt.getPixel( x, y );
  40. if ( forbidden_classes.find( gimg ) == forbidden_classes.end() )
  41. {
  42. M( gimg, cimg )++;
  43. }
  44. }
  45. }
  46. /**
  47. test semantic segmentation routines
  48. */
  49. int main( int argc, char **argv )
  50. {
  51. std::set_terminate( __gnu_cxx::__verbose_terminate_handler );
  52. Config conf( argc, argv );
  53. ResourceStatistics rs;
  54. bool show_result = conf.gB( "debug", "show_results", false );
  55. bool write_results = conf.gB( "debug", "write_results", false );
  56. bool write_results_pascal = conf.gB( "debug", "write_results_pascal", false );
  57. std::string resultdir = conf.gS( "debug", "resultdir", "." );
  58. if ( write_results )
  59. {
  60. cerr << "Writing Results to " << resultdir << endl;
  61. }
  62. MultiDataset md( &conf );
  63. const ClassNames & classNames = md.getClassNames( "train" );
  64. string method = conf.gS( "main", "method", "SSCsurka" );
  65. SemanticSegmentation *semseg = NULL;
  66. if ( method == "SSCsurka" )
  67. {
  68. semseg = new SemSegCsurka( &conf, &md );
  69. }
  70. else if ( method == "SSContext" )
  71. {
  72. semseg = new SemSegContextTree( &conf, &md );
  73. }
  74. else if( method == "SSNovelty" )
  75. {
  76. semseg = new SemSegNovelty( &conf, &md );
  77. }
  78. //SemanticSegmentation *semseg = new SemSegLocal ( &conf, &md );
  79. //SemanticSegmentation *semseg = new SemSegSTF ( &conf, &md );
  80. //SemanticSegmentation *semseg = new SemSegRegionBased(&conf, &md);
  81. const LabeledSet *testFiles = md["test"];
  82. NICE::Matrix M( classNames.getMaxClassno() + 1, classNames.getMaxClassno() + 1 );
  83. M.set( 0 );
  84. set<int> forbidden_classes;
  85. std::string forbidden_classes_s = conf.gS( "analysis", "forbidden_classes", "" );
  86. classNames.getSelection( forbidden_classes_s, forbidden_classes );
  87. ProgressBar pb( "Semantic Segmentation Analysis" );
  88. pb.show();
  89. int fileno = 0;
  90. LOOP_ALL_S( *testFiles )
  91. {
  92. EACH_INFO( classno, info );
  93. std::string file = info.img();
  94. NICE::Image lm;
  95. NICE::MultiChannelImageT<double> probabilities;
  96. if ( info.hasLocalizationInfo() )
  97. {
  98. const LocalizationResult *l_gt = info.localization();
  99. lm.resize( l_gt->xsize, l_gt->ysize );
  100. lm.set( 0 );
  101. l_gt->calcLabeledImage( lm, classNames.getBackgroundClass() );
  102. }
  103. semseg->semanticseg( file, lm, probabilities );
  104. fprintf( stderr, "testSemanticSegmentation: Segmentation finished !\n" );
  105. NICE::Image lm_gt;
  106. if ( info.hasLocalizationInfo() )
  107. {
  108. const LocalizationResult *l_gt = info.localization();
  109. lm_gt.resize( l_gt->xsize, l_gt->ysize );
  110. lm_gt.set( 0 );
  111. fprintf( stderr, "testSemanticSegmentation: Generating Labeled NICE::Image (Ground-Truth)\n" );
  112. l_gt->calcLabeledImage( lm_gt, classNames.getBackgroundClass() );
  113. }
  114. std::string fname = StringTools::baseName( file, false );
  115. if ( write_results_pascal )
  116. {
  117. NICE::Image pascal_lm( lm.width(), lm.height() );
  118. int backgroundClass = classNames.getBackgroundClass();
  119. for ( int y = 0 ; y < lm.height(); y++ )
  120. for ( int x = 0 ; x < lm.width(); x++ )
  121. {
  122. int v = lm.getPixel( x, y );
  123. if ( v == backgroundClass )
  124. pascal_lm.setPixel( x, y, 255 );
  125. else
  126. pascal_lm.setPixel( x, y, 255 - v - 1 );
  127. }
  128. char filename[1024];
  129. char *format = ( char * )"pgm";
  130. sprintf( filename, "%s/%s.%s", resultdir.c_str(), fname.c_str(), format );
  131. pascal_lm.write( filename );
  132. }
  133. if ( show_result || write_results )
  134. {
  135. NICE::ColorImage orig( file );
  136. NICE::ColorImage rgb;
  137. NICE::ColorImage rgb_gt;
  138. classNames.labelToRGB( lm, rgb );
  139. classNames.labelToRGB( lm_gt, rgb_gt );
  140. if ( write_results )
  141. {
  142. char filename[1024];
  143. char *format = ( char * )"ppm";
  144. sprintf( filename, "%06d.%s", fileno, format );
  145. std::string origfilename = resultdir + "/orig_" + string( filename );
  146. cerr << "Writing to file " << origfilename << endl;
  147. orig.write( origfilename );
  148. rgb.write( resultdir + "/result_" + string( filename ) );
  149. rgb_gt.write( resultdir + "/groundtruth_" + string( filename ) );
  150. }
  151. if ( show_result )
  152. {
  153. #ifndef NOVISUAL
  154. showImage( rgb, "Result" );
  155. showImage( rgb_gt, "Groundtruth" );
  156. showImage( orig, "Input" );
  157. #endif
  158. }
  159. }
  160. //#pragma omp critical
  161. updateMatrix( lm, lm_gt, M, forbidden_classes );
  162. cerr << M << endl;
  163. fileno++;
  164. pb.update( testFiles->count() );
  165. }
  166. pb.hide();
  167. long maxMemory;
  168. rs.getMaximumMemory(maxMemory);
  169. cerr << "Maximum memory used: " << maxMemory << " KB" << endl;
  170. double overall = 0.0;
  171. double sumall = 0.0;
  172. for ( int r = 0; r < ( int )M.rows(); r++ )
  173. {
  174. for ( int c = 0; c < ( int )M.cols(); c++ )
  175. {
  176. if ( r == c )
  177. overall += M( r, c );
  178. sumall += M( r, c );
  179. }
  180. }
  181. overall /= sumall;
  182. // normalizing M using rows
  183. for ( int r = 0 ; r < ( int )M.rows() ; r++ )
  184. {
  185. double sum = 0.0;
  186. for ( int c = 0 ; c < ( int )M.cols() ; c++ )
  187. sum += M( r, c );
  188. if ( fabs( sum ) > 1e-4 )
  189. for ( int c = 0 ; c < ( int )M.cols() ; c++ )
  190. M( r, c ) /= sum;
  191. }
  192. cerr << M << endl;
  193. double avg_perf = 0.0;
  194. int classes_trained = 0;
  195. for ( int r = 0 ; r < ( int )M.rows() ; r++ )
  196. {
  197. if (( classNames.existsClassno( r ) ) && ( forbidden_classes.find( r ) == forbidden_classes.end() ) )
  198. {
  199. avg_perf += M( r, r );
  200. double lsum = 0.0;
  201. for(int r2 = 0; r2 < ( int )M.rows(); r2++)
  202. {
  203. lsum += M(r,r2);
  204. }
  205. if(lsum != 0.0)
  206. {
  207. classes_trained++;
  208. }
  209. }
  210. }
  211. if ( write_results )
  212. {
  213. ofstream fout(( resultdir + "/res.txt" ).c_str(), ios::out );
  214. fout << "overall: " << overall << endl;
  215. fout << "Average Performance " << avg_perf / ( classes_trained ) << endl;
  216. fout << "Lower Bound " << 1.0 / classes_trained << endl;
  217. for ( int r = 0 ; r < ( int )M.rows() ; r++ )
  218. {
  219. if (( classNames.existsClassno( r ) ) && ( forbidden_classes.find( r ) == forbidden_classes.end() ) )
  220. {
  221. std::string classname = classNames.text( r );
  222. fout << classname.c_str() << ": " << M( r, r ) << endl;
  223. }
  224. }
  225. fout.close();
  226. }
  227. fprintf( stderr, "overall: %f\n", overall );
  228. fprintf( stderr, "Average Performance %f\n", avg_perf / ( classes_trained ) );
  229. //fprintf(stderr, "Lower Bound %f\n", 1.0 / classes_trained);
  230. for ( int r = 0 ; r < ( int )M.rows() ; r++ )
  231. {
  232. if (( classNames.existsClassno( r ) ) && ( forbidden_classes.find( r ) == forbidden_classes.end() ) )
  233. {
  234. std::string classname = classNames.text( r );
  235. fprintf( stderr, "%s: %f\n", classname.c_str(), M( r, r ) );
  236. }
  237. }
  238. delete semseg;
  239. return 0;
  240. }