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Image Segmentation with Superpixel Based Covariance Descriptor

机译:基于超像素协方差描述符的图像分割

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This paper investigates the problem of image segmentation using superpixels. We propose two approaches to enhance the discriminative ability of the superpixel's covariance descriptors. In the first one, we employ the Log-Euclidean distance as the metric on the covariance manifolds, and then use the RBF kernel to measure the similarities between covariance descriptors. The second method is focused on extracting the subspace structure of the set of covariance descriptors by extending a low rank representation algorithm on to the covariance manifolds. Experiments are carried out with the Berkly Segmentation Dataset, and compared with the state-of-the-art segmentation algorithms, both methods are competitive.
机译:本文研究了使用超像素进行图像分割的问题。我们提出两种方法来增强超像素协方差描述符的判别能力。在第一个中,我们采用对数-欧几里德距离作为协方差流形上的度量,然后使用RBF内核来测量协方差描述符之间的相似性。第二种方法着重于通过将低秩表示算法扩展到协方差流形上来提取协方差描述符集的子空间结构。实验是使用Berkly Segmentation Dataset进行的,并且与最新的细分算法相比,这两种方法都具有竞争力。

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