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cKGSA based Fuzzy Clustering Method for Image Segmentation of RGB-D Images

机译:基于CKGSA的RGB-D图像图像分割模糊聚类方法

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With the introduction of low-cost depth image sensors, reliable image segmentation within RGB-D images is an ambitious goal of computer vision. However, in a cluttered scene, image segmentation has become a challenging problem. This paper presents a novel RGB-D image segmentation method, chaotic kbest gravitational search algorithm based fuzzy clustering (cKGSA-FC). First, the proposed method performs fuzzy clustering using cKGSA on different parameters and feature subsets to obtain multiple optimal clusters. Next, the proposed method combines the multiple clusters through the segmentation by aggregating superpixels (SAS) method on different combinations to generate the final segmentation result. The proposed method is evaluated on the standard RGB-D indoor image dataset namely; NYU depth v2 (NYUD2) and compared with the results obtained by performing fuzzy clustering through three existing clustering methods namely; gravitational search algorithm, fuzzy c-means, and kmeans. The evaluation of the results is done in terms of qualitative and quantitative. Experimental results confirm that the segmentation quality of the proposed method is superior than the compared methods.
机译:随着低成本深度图像传感器的引入,RGB-D图像中可靠的图像分段是计算机视觉的雄心勃勃的目标。然而,在一个凌乱的场景中,图像分割已经成为一个具有挑战性的问题。本文介绍了一种新颖的RGB-D图像分割方法,基于混沌的KBEST引力搜索算法(CKGSA-FC)。首先,所提出的方法在不同参数上使用CKGSA执行模糊群集,并且特征子集可以获得多个最佳群集。接下来,该方法通过在不同组合上聚合SuperPixels(SAS)方法以产生最终分段结果来组合多个簇通过分割。所提出的方法在标准的RGB-D室内图像数据集上进行评估; NYU深度V2(NYUD2)并与通过通过三个现有聚类方法进行模糊聚类而获得的结果相比。引力搜索算法,模糊C-means和kmeans。结果评估是在定性和定量方面进行的。实验结果证实,所提出的方法的分割质量优于比较方法。

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