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HSOG: A Novel Local Image Descriptor Based on Histograms of the Second-Order Gradients

机译:HSOG:一种基于二阶梯度直方图的新型局部图像描述符

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摘要

Recent investigations on human vision discover that the retinal image is a landscape or a geometric surface, consisting of features such as ridges and summits. However, most of existing popular local image descriptors in the literature, e.g., scale invariant feature transform (SIFT), histogram of oriented gradient (HOG), DAISY, local binary Patterns (LBP), and gradient location and orientation histogram, only employ the first-order gradient information related to the slope and the elasticity, i.e., length, area, and so on of a surface, and thereby partially characterize the geometric properties of a landscape. In this paper, we introduce a novel and powerful local image descriptor that extracts the histograms of second-order gradients (HSOGs) to capture the curvature related geometric properties of the neural landscape, i.e., cliffs, ridges, summits, valleys, basins, and so on. We conduct comprehensive experiments on three different applications, including the problem of local image matching, visual object categorization, and scene classification. The experimental results clearly evidence the discriminative power of HSOG as compared with its first-order gradient-based counterparts, e.g., SIFT, HOG, DAISY, and center-symmetric LBP, and the complementarity in terms of image representation, demonstrating the effectiveness of the proposed local descriptor.
机译:最近对人类视觉的研究发现,视网膜图像是风景或几何表面,由山脊和山顶等特征组成。但是,文献中大多数现有的流行局部图像描述符(例如,尺度不变特征变换(SIFT),定向梯度直方图(HOG),DAISY,局部二进制模式(LBP)以及梯度位置和定向直方图)仅采用了与坡度和表面弹性,即长度,面积等有关的一阶渐变信息,从而部分表征景观的几何特性。在本文中,我们介绍了一种新颖而强大的局部图像描述符,该描述符可提取二阶梯度(HSOG)的直方图,以捕获神经景观的曲率相关的几何特性,即悬崖,山脊,山顶,山谷,盆地和以此类推。我们对三种不同的应用程序进行了全面的实验,包括局部图像匹配,视觉对象分类和场景分类问题。实验结果清楚地证明了HSOG与基于一阶梯度的同类算法(例如SIFT,HOG,DAISY和中心对称LBP)相比具有判别能力,并且在图像表示方面具有互补性,证明了HSOG的有效性。建议的本地描述符。

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