コード例 #1
0
ファイル: evaluation.py プロジェクト: zwlshine/V-GAN
            if "1st_manual" not in result:
                # print metrics
                print "-- {} --".format(os.path.basename(result))
                print "dice coefficient : {}".format(utils.dice_coefficient(gt_vessels,pred_vessels, masks))
                print "f1 score : {}, accuracy : {}, specificity : {}, sensitivity : {}".format(*utils.misc_measures(gt_vessels,pred_vessels, masks))

                # compute false positive rate, true positive graph
                method=os.path.basename(result)
                methods.append(method)
                if method=='CRFs' or method=='2nd_manual':
                    cm=confusion_matrix(gt_vessels_in_mask, pred_vessels_in_mask)
                    fpr=1-1.*cm[0,0]/(cm[0,1]+cm[0,0])
                    tpr=1.*cm[1,1]/(cm[1,0]+cm[1,1])
                    prec=1.*cm[1,1]/(cm[0,1]+cm[1,1])
                    recall=tpr
                else:
                    fpr, tpr, _ = roc_curve(gt_vessels_in_mask, pred_vessels_in_mask)
                    prec, recall, _ = precision_recall_curve(gt_vessels_in_mask, pred_vessels_in_mask)
                fprs.append(fpr)
                tprs.append(tpr)
                precs.append(prec)
                recalls.append(recall)
            
    # save plots of ROC and PR curves
    curve_dir=curves_out.format(os.path.basename(dataset))
    if not os.path.isdir(curve_dir):
        os.makedirs(curve_dir)
   
    utils.plot_AUC_ROC(fprs, tprs, methods, curve_dir)
    utils.plot_AUC_PR(precs, recalls, methods, curve_dir)    
コード例 #2
0
                # compute false positive rate, true positive graph
                method = os.path.basename(result)
                methods.append(method)
                if method == 'CRFs' or method == '2nd_manual':
                    cm = confusion_matrix(gt_vessels_in_mask,
                                          pred_vessels_in_mask)
                    fpr = 1 - 1. * cm[0, 0] / (cm[0, 1] + cm[0, 0])
                    tpr = 1. * cm[1, 1] / (cm[1, 0] + cm[1, 1])
                    prec = 1. * cm[1, 1] / (cm[0, 1] + cm[1, 1])
                    recall = tpr
                    if method == '2nd_manual':
                        human_op_pts_roc, human_op_pts_pr = utils.operating_pts_human_experts(
                            gt_vessels, pred_vessels, masks)
                else:
                    fpr, tpr, _ = roc_curve(gt_vessels_in_mask,
                                            pred_vessels_in_mask)
                    prec, recall, _ = precision_recall_curve(
                        gt_vessels_in_mask, pred_vessels_in_mask)
                fprs.append(fpr)
                tprs.append(tpr)
                precs.append(prec)
                recalls.append(recall)

    # save plots of ROC and PR curves
    curve_dir = curves_out.format(os.path.basename(dataset))
    if not os.path.isdir(curve_dir):
        os.makedirs(curve_dir)

    utils.plot_AUC_ROC(fprs, tprs, methods, curve_dir, human_op_pts_roc)
    utils.plot_AUC_PR(precs, recalls, methods, curve_dir, human_op_pts_pr)
コード例 #3
0
                if method == 'CRFs' or method == '2nd_manual':
                    cm = confusion_matrix(gt_vessels_in_mask,
                                          pred_vessels_in_mask)
                    fpr = 1 - 1. * cm[0, 0] / (cm[0, 1] + cm[0, 0])
                    tpr = 1. * cm[1, 1] / (cm[1, 0] + cm[1, 1])
                    prec = 1. * cm[1, 1] / (cm[0, 1] + cm[1, 1])
                    recall = tpr
                else:
                    fpr, tpr, _ = roc_curve(gt_vessels_in_mask,
                                            pred_vessels_in_mask)
                    prec, recall, _ = precision_recall_curve(
                        gt_vessels_in_mask, pred_vessels_in_mask)
                fprs.append(fpr)
                tprs.append(tpr)
                precs.append(prec)
                recalls.append(recall)

    # save plots of ROC and PR curves
    curve_dir = curves_out.format(os.path.basename(dataset))
    if not os.path.isdir(curve_dir):
        os.makedirs(curve_dir)

    if os.path.basename(dataset) == 'STARE':
        num = stare_num
    elif os.path.basename(dataset) == 'DRIVE':
        num = drive_num

    utils.plot_AUC_ROC(fprs, tprs, methods, curve_dir,
                       os.path.basename(dataset), model_name, num)
    utils.plot_AUC_PR(precs, recalls, methods, curve_dir,
                      os.path.basename(dataset), model_name, num)