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基于皮质 V1 稀疏编码模型的图像分割。

Image segmentation using a sparse coding model of cortical area V1.

机构信息

Department of Informatics, King’s College London, London, UK.

出版信息

IEEE Trans Image Process. 2013 Apr;22(4):1631-43. doi: 10.1109/TIP.2012.2235850. Epub 2012 Dec 21.

Abstract

Algorithms that encode images using a sparse set of basis functions have previously been shown to explain aspects of the physiology of a primary visual cortex (V1), and have been used for applications, such as image compression, restoration, and classification. Here, a sparse coding algorithm, that has previously been used to account for the response properties of orientation tuned cells in primary visual cortex, is applied to the task of perceptually salient boundary detection. The proposed algorithm is currently limited to using only intensity information at a single scale. However, it is shown to out-perform the current state-of-the-art image segmentation method (Pb) when this method is also restricted to using the same information.

摘要

先前已经有研究表明,使用稀疏基函数集对图像进行编码的算法可以解释初级视觉皮层 (V1) 的某些生理学特性,并且已经被应用于图像压缩、恢复和分类等领域。在这里,我们将之前用于解释初级视觉皮层中方向调谐细胞反应特性的稀疏编码算法应用于感知显著边界检测任务中。所提出的算法目前仅限于在单一尺度上使用强度信息。然而,当这种方法也被限制使用相同的信息时,它的表现优于当前最先进的图像分割方法 (Pb)。

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