Spatial-region classification by Min-Connected algorithm for unsupervised segmentation

Rachid Alaoui, A. Jakimi, Lahcen Elbermi
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引用次数: 0

Abstract

This work lies within the scope of color image segmentation by spatial-region classification. The spatial distribution of objects in each region of image is difficult to be identified when the region are non-connected clusters. A standard of color identification by conventional methods of segmentation remains weak for capturing the spatial dispersion of the various objects of the same color region. We propose to apply a spatial classification to characterize geographical connected sets that represent the same regions. The originality of this paper lies in our new min-connected algorithm which is derived from a spatial-color compactness model. Our work is a hybrid segmentation that takes into account the distribution of colors in the color space and the spatial location of colors in the image plane. Experimental tests on synthetic and real images show that our technique leads to promising results for segmentation.
基于最小连通算法的无监督分割空间区域分类
该工作属于空间区域分类彩色图像分割的范畴。当图像各区域为非连通簇时,目标的空间分布难以识别。传统分割方法的颜色识别标准在捕捉同一颜色区域的各种物体的空间分散时仍然很弱。我们建议应用空间分类来描述代表相同区域的地理连接集。本文的创新之处在于提出了一种基于空间-颜色紧密度模型的最小连通算法。我们的工作是一种混合分割,它考虑了颜色在色彩空间中的分布和颜色在图像平面中的空间位置。在合成图像和真实图像上的实验测试表明,我们的技术在分割方面取得了良好的效果。
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