Assessing the performance bounds of local feature detectors: Taking inspiration from electronics design practices

Shoaib Ehsan, A. Clark, Bruno Ferrarini, N. Rehman, K. Mcdonald-Maier
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引用次数: 1

Abstract

Since local feature detection has been one of the most active research areas in computer vision, a large number of detectors have been proposed. This has rendered the task of characterizing the performance of various feature detection methods an important issue in vision research. Inspired by the good practices of electronic system design, a generic framework based on the improved repeatability measure is presented in this paper that allows assessment of the upper and lower bounds of detector performance in an effort to design more reliable and effective vision systems. This framework is then employed to establish operating and guarantee regions for several state-of-the art detectors for JPEG compression and uniform light changes. The results are obtained using a newly acquired, large image database (15092 images) with 539 different scenes. These results provide new insights into the behavior of detectors and are also useful from the vision systems design perspective.
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评估局部特征检测器的性能界限:从电子设计实践中获得灵感
由于局部特征检测一直是计算机视觉中最活跃的研究领域之一,因此已经提出了大量的检测器。这使得表征各种特征检测方法的性能成为视觉研究中的一个重要问题。受电子系统设计良好实践的启发,本文提出了一个基于改进的可重复性测量的通用框架,该框架允许评估检测器性能的上限和下限,以努力设计更可靠和有效的视觉系统。然后使用该框架为几个最先进的JPEG压缩和均匀光变化检测器建立操作和保证区域。使用新获取的包含539个不同场景的大型图像数据库(15092张图像)获得结果。这些结果为检测器的行为提供了新的见解,并且从视觉系统设计的角度也很有用。
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