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Binary clustering of color images by fuzzy co-clustering with non-extensive entropy regularization

机译:通过模糊共聚与非广义熵正则化对彩色图像进行二值聚类

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This paper proposes semantically meaningful binary clustering of color images by a novel fuzzy co-clustering algorithm. The clustering objective function incorporates the non-extensive entropy with Gaussian gain for regularization purpose. The chromatic color components in the CIEL*A*B* color space form the feature space for clustering. The result is a very good differentiation of the colors in the scene as belonging to the foreground object and the background, which helps in scene understanding and information gathering. One direct application of our tool is salient or foreground object segmentation. Experimentation on images from a benchmark dataset and comparisons with the state of the art clustering and segmentation methods establish the efficiency of our approach.
机译:本文提出了一种新颖的模糊共聚算法,对彩色图像进行有意义的语义二元聚类。聚类目标函数将非扩展熵与高斯增益合并在一起,以实现正则化。 CIEL * A * B *颜色空间中的彩色分量构成了用于聚类的特征空间。结果是很好地区分了场景中属于前景对象和背景的颜色,这有助于场景理解和信息收集。我们工具的一种直接应用是显着或前景对象分割。对来自基准数据集的图像进行实验,并与最先进的聚类和分割方法进行比较,从而确定了我们方法的效率。

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