Dempster-Shafer证据理论在图像分割中的相关性

S. B. Chaabane, F. Fnaiech, M. Sayadi, E. Brassart
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引用次数: 7

摘要

提出了一种基于数据融合技术的彩色图像分割新方法。Dempster-Shafer证据理论中使用的方法建模通常是成功的,因为它将从图像中提取的信息表示为信念的度量。该方法解决了信息建模问题和基于Dempster-Shafer理论的彩色图像分割问题。质量函数是根据像素属于一个区域的概率计算的。然后将质量函数与Dempster组合规则进行组合,利用质量函数的最大值进行决策。图像间冲突的计算、不确定性和不精确性的建模、可能引入的先验信息,这些都是证据理论的强大方面,对彩色图像分割的最终决策有很大影响。我们提出了有关彩色医学图像的定量和比较结果。
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Relevance of the Dempster-Shafer evidence theory for image segmentation
This paper describes a new color image segmentation method based on data fusion techniques. The used methodology modeling in the Dempster-Shafer evidence theory is in general successful, for representing the information extracted from image as measures of belief. The proposed method addresses the information modelization problem and the color image segmentation within the context of Dempster-Shafer theory. The mass functions are computed from the probability that a pixel belong to a region. The mass functions are then combined with the Dempster rules of combination, and the maximum of mass function is used for decision-making. The computation of conflict between images, the modelization of both uncertainty and imprecision, the possible introduction of a priori information, witch are powerful aspects of the evidence theory and witch have a great influence on the final decision, are exploited in color image segmentation. We present quantitative and comparative results concerning color medical images.
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