Esempio n. 1
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 def __init__(self, gt, predict, threshold = 0.5):
     self.gt                 = gt
     self.adjusted_predict   = adjust_predict(predict)
     self.relevant_data      = exclude_ignore_label(gt, self.adjusted_predict)
     self.nlables            = get_number_of_labels(gt)
     self.apr                = apr(self.relevant_data[0], self.relevant_data[1])
     self.auc_score          = roc_auc(self.relevant_data[0], self.relevant_data[1])
     self.quality            = np.array((self.apr[0], self.apr[1], self.apr[2], self.auc_score))
     self.roc_curve          = draw_roc_curve(self.relevant_data[0], self.relevant_data[1])
Esempio n. 2
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 #
 #
 #
 #c = config(p[0], p[1])
 #c.show_quality()
 #
 #d = config(q[0], q[1])
 #d.show_quality()
 
 I = read_h5("/home/stamylew/volumes/trimaps/50cube2_tri.h5", "50cube2_tri")
 
 II = read_h5("/home/stamylew/src/autocontext/prediction/cache/smallcubes_probs.h5", "exported_data")
 II = adjust_predict(II)
 
 
 q = exclude_ignore_label(I,II)
 c = predict_class(q[0], q[1])
 c.show_quality()
 print c.return_quality()
 
 #III = read_h5("/home/stamylew/volumes/training_data/50cube3_bp.h5", "all_labels/n3/w_3_2_1")
 #III = adjust_predict_file(III)
 
 #plt.figure()
 #plt.imshow(I[11])
 #
 #plt.figure()
 #plt.imshow(II[11])
 #
 #plt.show()