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Saliency detection based on singular value decomposition

机译:基于奇异值分解的显着性检测

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Saliency detection has gained popularity in many applications, and many different approaches have been proposed. In this paper, we propose a new approach based on singular value decomposition (SVD) for saliency detection. Our algorithm considers both the human-perception mechanism and the relationship between the singular values of an image decomposed by SVD and its salient regions. The key concept of our proposed algorithms is based on the fact that salient regions are the important parts of an image. The singular values of an image are divided into three groups: large, intermediate, and small singular values. We propose the hypotheses that the large singular values mainly contain information about the non-salient background and slight information about the salient regions, while the intermediate singular values contain most or even all of the saliency information. The small singular values contain little or even none of the saliency information. These hypotheses are validated by experiments. By regularization based on the average information, regularization using the leading largest singular values or regularization based on machine learning, the salient regions will become more conspicuous. In our proposed approach, learning-based methods are proposed to improve the accuracy of detecting salient regions in images. Gaussian filters are also employed to enhance the saliency information. Experimental results prove that our methods based on SVD achieve superior performance compared to other state-of-the-art methods for human-eye fixations, as well as salient-object detection, in terms of the area under the receiver operating characteristic (ROC) curve (AUC) score, the linear correlation coefficient (CC) score, the normalized scan-path saliency (NSS) score, the F-measure score, and visual quality. (C) 2015 Elsevier Inc. All rights reserved.
机译:显着性检测已在许多应用中获得普及,并且已经提出了许多不同的方法。在本文中,我们提出了一种基于奇异值分解(SVD)的显着性检测新方法。我们的算法既考虑了人类感知机制,也考虑了由SVD分解的图像的奇异值与其显着区域之间的关系。我们提出的算法的关键概念是基于以下事实:显着区域是图像的重要部分。图像的奇异值分为三组:大,中和小奇异值。我们提出这样的假设:大的奇异值主要包含有关非显着背景的信息,而有关显着区域的信息则很少,而中间的奇异值则包含大多数甚至所有显着性信息。小的奇异值几乎不包含或不包含任何显着性信息。这些假设已通过实验验证。通过基于平均信息的正则化,使用前导最大奇异值的正则化或基于机器学习的正则化,显着区域将变得更加明显。在我们提出的方法中,提出了基于学习的方法,以提高检测图像中显着区域的准确性。高斯滤波器也被用来增强显着性信息。实验结果证明,相对于其他先进的人眼注视和显着物体检测方法,基于SVD的方法在接收器工作特性(ROC)下的面积方面达到了卓越的性能曲线(AUC)分数,线性相关系数(CC)分数,归一化扫描路径显着性(NSS)分数,F测量分数和视觉质量。 (C)2015 Elsevier Inc.保留所有权利。

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