comparison scripts/train-object-classification.py @ 961:ec1682ed999f

added computation of confusion matrix and improved default parameter for block normalization for SVM classification
author Nicolas Saunier <nicolas.saunier@polymtl.ca>
date Sun, 05 Nov 2017 23:45:47 -0500
parents 238008f81c16
children 2757efeabbb4
comparison
equal deleted inserted replaced
960:0c1d1eeef544 961:ec1682ed999f
16 parser.add_argument('--coef0', dest = 'coef0', help = 'SVM coef0', default = 0, type = int) 16 parser.add_argument('--coef0', dest = 'coef0', help = 'SVM coef0', default = 0, type = int)
17 parser.add_argument('--cvalue', dest = 'cvalue', help = 'SVM Cvalue', default = 1, type = int) 17 parser.add_argument('--cvalue', dest = 'cvalue', help = 'SVM Cvalue', default = 1, type = int)
18 parser.add_argument('--nu', dest = 'nu', help = 'SVM nu', default = 0, type = int) 18 parser.add_argument('--nu', dest = 'nu', help = 'SVM nu', default = 0, type = int)
19 parser.add_argument('--svmp', dest = 'svmP', help = 'SVM p', default = 0, type = int) 19 parser.add_argument('--svmp', dest = 'svmP', help = 'SVM p', default = 0, type = int)
20 parser.add_argument('--cfg', dest = 'configFilename', help = 'name of the classifier configuration file', required = True) 20 parser.add_argument('--cfg', dest = 'configFilename', help = 'name of the classifier configuration file', required = True)
21 # parser.add_argument('-s', dest = 'rescaleSize', help = 'rescale size of image samples', default = 64, type = int) 21 parser.add_argument('--compute-classifications', dest = 'computeClassifications', help = 'compute the confusion matrix on the training data', action = 'store_true')
22 # parser.add_argument('-o', dest = 'nOrientations', help = 'number of orientations in HoG', default = 9, type = int)
23 # parser.add_argument('-p', dest = 'nPixelsPerCell', help = 'number of pixels per cell', default = 8, type = int)
24 # parser.add_argument('-c', dest = 'nCellsPerBlock', help = 'number of cells per block', default = 2, type = int)
25 22
26 args = parser.parse_args() 23 args = parser.parse_args()
27 classifierParams = storage.ClassifierParameters(args.configFilename) 24 classifierParams = storage.ClassifierParameters(args.configFilename)
28
29 # rescaleSize = (args.rescaleSize, args.rescaleSize)
30 # nPixelsPerCell = (args.nPixelsPerCell, args.nPixelsPerCell)
31 # nCellsPerBlock = (args.nCellsPerBlock, args.nCellsPerBlock)
32 25
33 imageDirectories = {'pedestrian': args.directoryName + "/Pedestrians/", 26 imageDirectories = {'pedestrian': args.directoryName + "/Pedestrians/",
34 'bicycle': args.directoryName + "/Cyclists/", 27 'bicycle': args.directoryName + "/Cyclists/",
35 'car': args.directoryName + "/Vehicles/"} 28 'car': args.directoryName + "/Vehicles/"}
36 29
55 trainingSamplesPV[k], trainingLabelsPV[k] = trainingSamples, trainingLabels 48 trainingSamplesPV[k], trainingLabelsPV[k] = trainingSamples, trainingLabels
56 49
57 # Training the Support Vector Machine 50 # Training the Support Vector Machine
58 print "Training Pedestrian-Cyclist-Vehicle Model" 51 print "Training Pedestrian-Cyclist-Vehicle Model"
59 model = ml.SVM(args.svmType, args.kernelType, args.degree, args.gamma, args.coef0, args.cvalue, args.nu, args.svmP) 52 model = ml.SVM(args.svmType, args.kernelType, args.degree, args.gamma, args.coef0, args.cvalue, args.nu, args.svmP)
60 model.train(np.concatenate(trainingSamplesPBV.values()), np.concatenate(trainingLabelsPBV.values())) 53 classifications = model.train(np.concatenate(trainingSamplesPBV.values()), np.concatenate(trainingLabelsPBV.values()), True)
54 if args.computeClassifications:
55 print(classifications)
61 model.save(args.directoryName + "/modelPBV.xml") 56 model.save(args.directoryName + "/modelPBV.xml")
62 57
63 print "Training Cyclist-Vehicle Model" 58 print "Training Cyclist-Vehicle Model"
64 model = ml.SVM(args.svmType, args.kernelType, args.degree, args.gamma, args.coef0, args.cvalue, args.nu, args.svmP) 59 model = ml.SVM(args.svmType, args.kernelType, args.degree, args.gamma, args.coef0, args.cvalue, args.nu, args.svmP)
65 model.train(np.concatenate(trainingSamplesBV.values()), np.concatenate(trainingLabelsBV.values())) 60 classifications = model.train(np.concatenate(trainingSamplesBV.values()), np.concatenate(trainingLabelsBV.values()), True)
61 if args.computeClassifications:
62 print(classifications)
66 model.save(args.directoryName + "/modelBV.xml") 63 model.save(args.directoryName + "/modelBV.xml")
67 64
68 print "Training Pedestrian-Cyclist Model" 65 print "Training Pedestrian-Cyclist Model"
69 model = ml.SVM(args.svmType, args.kernelType, args.degree, args.gamma, args.coef0, args.cvalue, args.nu, args.svmP) 66 model = ml.SVM(args.svmType, args.kernelType, args.degree, args.gamma, args.coef0, args.cvalue, args.nu, args.svmP)
70 model.train(np.concatenate(trainingSamplesPB.values()), np.concatenate(trainingLabelsPB.values())) 67 classifications = model.train(np.concatenate(trainingSamplesPB.values()), np.concatenate(trainingLabelsPB.values()), True)
68 if args.computeClassifications:
69 print(classifications)
71 model.save(args.directoryName + "/modelPB.xml") 70 model.save(args.directoryName + "/modelPB.xml")
72 71
73 print "Training Pedestrian-Vehicle Model" 72 print "Training Pedestrian-Vehicle Model"
74 model = ml.SVM(args.svmType, args.kernelType, args.degree, args.gamma, args.coef0, args.cvalue, args.nu, args.svmP) 73 model = ml.SVM(args.svmType, args.kernelType, args.degree, args.gamma, args.coef0, args.cvalue, args.nu, args.svmP)
75 model.train(np.concatenate(trainingSamplesPV.values()), np.concatenate(trainingLabelsPV.values())) 74 classifications = model.train(np.concatenate(trainingSamplesPV.values()), np.concatenate(trainingLabelsPV.values()), True)
75 if args.computeClassifications:
76 print(classifications)
76 model.save(args.directoryName + "/modelPV.xml") 77 model.save(args.directoryName + "/modelPV.xml")