Distance Measures for Image Segmentation Evaluation

被引:0
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作者
Xiaoyi Jiang
Cyril Marti
Christophe Irniger
Horst Bunke
机构
[1] University of Münster,Computer Vision and Pattern Recognition Group, Department of Computer Science
[2] University of Bern,Institute of Computer Science and Applied Mathematics
关键词
Image Processing; Information Technology; Machine Learning; Performance Evaluation; Real Data;
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摘要
The task considered in this paper is performance evaluation of region segmentation algorithms in the ground-truth-based paradigm. Given a machine segmentation and a ground-truth segmentation, performance measures are needed. We propose to consider the image segmentation problem as one of data clustering and, as a consequence, to use measures for comparing clusterings developed in statistics and machine learning. By doing so, we obtain a variety of performance measures which have not been used before in image processing. In particular, some of these measures have the highly desired property of being a metric. Experimental results are reported on both synthetic and real data to validate the measures and compare them with others.
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