Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
527102 | Image and Vision Computing | 2011 | 7 Pages |
In order to select an optimal threshold for image thresholding that is relatively robust to the presence of skew and heavy-tailed class-conditional distributions, we propose two median-based approaches: one is an extension of Otsu's method and the other is an extension of Kittler and Illingworth's minimum error thresholding. We provide theoretical interpretation of the new approaches, based on mixtures of Laplace distributions. The two extensions preserve the methodological simplicity and computational efficiency of their original methods, and in general can achieve more robust performance when the data for either class is skew and heavy-tailed. We also discuss some limitations of the new approaches.
► We propose median-based extensions of two very popular image-thresholding methods. ► We provide theoretical interpretation of the new approaches. ► They are as simple and efficient as, and can be more robust than, their original methods.