Performance Evaluation of Image Feature Detectors and Descriptors for Outdoor-Scene Visual Navigation

Dzulfahmi, N. Ohta
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引用次数: 6

Abstract

Scene image matching is often used for positioning of a visually navigated autonomous robot. The robot memorizes the scene as an image at each navigation point in the teaching mode, and knows being at the same position when the outside scene is matched to the image in the playback mode. The scene matching is usually accomplished by feature-based image matching methods, such as SIFT or SURF. However the problem is that matching results of such methods are greatly affected by changes in illumination condition. Therefore, it is important to know which method is robust to the illumination change. Several performance evaluation results of these matching methods have been reported, but they are not focusing on illumination change problem. In this paper, we present performance comparison results of these feature-based image matching methods against illumination change in outdoor scenes assuming usage for visual navigation purpose. We also encounter another problem when conducting such the comparison for visual navigation. In this application, the matching score gradually increases as approaching the matching point, and gradually decreases as being apart from that point. This impedes to define the right matching response (ground truth). We present one method by which giving the right response.
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户外场景视觉导航中图像特征检测器和描述符的性能评价
场景图像匹配通常用于视觉导航自主机器人的定位。在教学模式下,机器人在每个导航点将场景记忆为图像,在回放模式下,当外部场景与图像匹配时,机器人知道自己处于同一位置。场景匹配通常采用基于特征的图像匹配方法,如SIFT或SURF。但问题是这些方法的匹配结果受光照条件变化的影响较大。因此,了解哪种方法对光照变化具有鲁棒性是很重要的。这些匹配方法的一些性能评价结果已经被报道,但它们都没有关注光照变化问题。在本文中,我们给出了这些基于特征的图像匹配方法在室外场景中针对光照变化的性能比较结果,假设用于视觉导航目的。在对视觉导航进行这样的比较时,我们还遇到了另一个问题。在此应用中,匹配分数随着接近匹配点而逐渐增加,随着远离匹配点而逐渐降低。这妨碍了定义正确的匹配响应(基础真值)。我们提出了一种给出正确答案的方法。
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