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Assessing the performance of corner detectors for point feature tracking applications

机译:评估角点检测器在点特征跟踪应用中的性能

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摘要

In this paper we assess the performance of a variety of corner (point) detecting algorithms for feature tracking applications. We analyze four different types of corner extractors, which have been widely used for a variety of applications (they are described later in the paper). We use corner stability and corner localization properties as measures to evaluate the quality of the features extracted by the four detectors. For effective assessment of the corner detectors, first, we employed image sequences with no motion (simply static image sequences), so that the appearance and disappearance of corners in each frame is purely due to image plane noise and illumination conditions. The second stage included experiments on sequences with small motion. The experiments were devised to make the testing environment ideal to analyze the stability and localization properties of the corners extracted. The corners detected from the initial frame are then matched through the sequence using a corner matching strategy. We employed two different types of matchers, namely the GVM (Gradient Vector Matcher) and the Product Moment Coefficient Matcher (PMCM). Each of the corner detectors was tested with each of the matching algorithms to evaluate their performance in tracking (matching) the features. The experiments were carried out on a variety of image sequences with and without motion.
机译:在本文中,我们评估了用于特征跟踪应用的各种角点检测算法的性能。我们分析了四种不同类型的角提取器,它们已被广泛用于各种应用程序(它们将在本文的后面进行介绍)。我们使用拐角稳定性和拐角定位属性作为评估四个探测器提取的特征质量的措施。为了对角检测器进行有效评估,首先,我们采用了没有运动的图像序列(简单地为静态图像序列),因此,每帧中角的出现和消失完全是由于图像平面的噪声和照明条件所致。第二阶段包括小运动序列的实验。设计实验是为了使测试环境理想,以分析提取的角的稳定性和局部化特性。然后使用角点匹配策略通过序列匹配从初始帧中检测到的角点。我们采用了两种不同类型的匹配器,即GVM(梯度矢量匹配器)和乘积矩系数匹配器(PMCM)。每个角检测器都使用每种匹配算法进行了测试,以评估其在跟踪(匹配)特征时的性能。在有和没有运动的情况下,对各种图像序列进行了实验。

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