利用视觉信息的全局外观压缩拓扑模型和定位

L. Payá, W. Mayol, Sergio Cebollada, Ó. Reinoso
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引用次数: 6

摘要

在这项工作中,开发并评估了一种聚类方法来获得环境的紧凑拓扑模型。通过研究这些模型在求解机器人定位问题中的应用,验证了这些模型的有效性。利用全方位的视觉信息和全局外观描述符来创建和压缩模型,并估计机器人的位置。与基于地标提取和描述的方法相比,全局外观方法允许构建可以更直观地处理和解释的模型,并使用相对简单的算法来估计机器人的位置。在实际工作条件下,用反射视觉传感器在大环境中捕获的一组全景图像对所提出的算法进行了测试。结果表明,可以对拓扑模型中包含的视觉信息进行大幅度压缩,从而在计算成本和定位过程的精度之间取得平衡。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Compression of topological models and localization using the global appearance of visual information
In this work, a clustering approach to obtain compact topological models of an environment is developed and evaluated. The usefulness of these models is tested by studying their utility to solve the robot localization problem subsequently. Omnidirectional visual information and global appearance descriptors are used both to create and compress the models and to estimate the position of the robot. Comparing to the methods based on the extraction and description of landmarks, global appearance approaches permit building models that can be handled and interpreted more intuitively and using relatively straightforward algorithms to estimate the position of the robot. The proposed algorithms are tested with a set of panoramic images captured with a catadioptric vision sensor in a large environment under real working conditions. The results show that it is possible to compress substantially the visual information contained in topological models to arrive to a balance between the computational cost and the accuracy of the localization process.
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