Delft University of Technology, Delft, The Netherlands.
IEEE Trans Pattern Anal Mach Intell. 2010 Jun;32(6):1141-7. doi: 10.1109/TPAMI.2010.53.
An elementary characterization of the map underlying Harris corners, also known as Harris interest points or key points, is provided. Two principal and basic assumptions made are: 1) Local image structure is captured in an uncommitted way, simply using weighted raw image values around every image location to describe the local image information, and 2) the lower the probability of observing the image structure present in a particular point, the more salient, or interesting, this position is, i.e., saliency is related to how uncommon it is to see a certain image structure, how surprising it is. Through the latter assumption, the axiomatization proposed makes a sound link between image saliency in computer vision on the one hand and, on the other, computational models of preattentive human visual perception, where exactly the same definition of saliency has been proposed. Because of this link, the characterization provides a compelling case in favor of Harris interest points over other approaches.
提供了一种基本的特征描述,用于描述哈里斯角点(也称为哈里斯兴趣点或关键点)所基于的映射。做出了两个主要且基本的假设:1)以非承诺的方式捕获局部图像结构,只需使用每个图像位置周围加权的原始图像值来描述局部图像信息,以及 2)在特定点观察到存在的图像结构的概率越低,该位置就越突出或有趣,即突出性与看到特定图像结构的罕见程度有关,与它的意外程度有关。通过后一个假设,所提出的公理化在计算机视觉中的图像显著性与预注意人类视觉感知的计算模型之间建立了合理的联系,在后者中,已经提出了完全相同的突出性定义。由于这种联系,这种特征描述为哈里斯兴趣点提供了一个有力的理由,使其优于其他方法。