Fuzzy-based probabilistic relaxation for textured image segmentation

Chun-Shien Lu, P. Chung
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Abstract

This paper describes a fuzzy-based probabilistic relaxation (FPR) for textured image segmentation. The FPR is developed based on an improvement of the conventional probabilistic relaxation which stops after the first few iterations even when the results are still far from satisfaction. The incapability of further improvement in the conventional probabilistic relaxation is detected by a proposed measure of fuzziness. In our FPR, probabilities in the relaxation are suitably adjusted/fuzzified based on a membership function to remove their crisp property such that further improvement can proceed. Experimental results indicate that the fuzzy-based probabilistic relaxation significantly improves the relaxation quality, especially for the textured images composed of components of significantly different sizes. Comparisons with conventional relaxation have also been conducted.<>
基于模糊概率松弛的纹理图像分割
提出了一种基于模糊的概率松弛(FPR)纹理图像分割方法。FPR是基于传统的概率松弛方法的改进而发展起来的,该方法在前几次迭代后即使结果仍远不能令人满意也会停止。提出了一种模糊度量方法来检测传统的概率松弛法不能进一步改进的缺陷。在我们的FPR中,基于隶属函数对松弛中的概率进行了适当的调整/模糊化,以消除其脆性,从而可以进行进一步的改进。实验结果表明,基于模糊的概率松弛可以显著提高松弛质量,特别是对于由大小差异较大的分量组成的纹理图像。并与常规松弛法进行了比较
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