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SIFT, SURF and Seasons: Long-term Outdoor Localization Using Local Features

机译:SIFT,SURF和季节:使用本地功能进行长期户外定位

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Local feature matching has become a commonly used method to compare images. For mobile robots, a reliable method for comparing images can constitute a key component for localization and loop closing tasks. In this paper, we address the issues of outdoor appearance-based topological localization for a mobile robot over time. Our data sets, each consisting of a large number of panoramic images, have been acquired over a period of nine months with large seasonal changes (snow-covered ground, bare trees, autumn leaves, dense foliage, etc.). Two different types of image feature algorithms, SIFT and the more recent SURF, have been used to compare the images. We show that two variants of SURF, called U-SURF and SURF-128, outperform the other algorithms in terms of accuracy and speed.
机译:局部特征匹配已成为比较图像的常用方法。对于移动机器人,比较图像的可靠方法可以构成本地化和闭环任务的关键组成部分。在本文中,我们解决了随时间推移移动机器人基于室外外观的拓扑定位问题。我们的数据集(每个数据集都包含大量全景图像)已在9个月的时间内获得了较大的季节性变化(积雪覆盖的地面,裸露的树木,秋天的落叶,茂密的树叶等)。两种不同类型的图像特征算法(SIFT和最新的SURF)已用于比较图像。我们展示了SURF的两个变体,分别称为U-SURF和SURF-128,在准确性和速度方面都优于其他算法。

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