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Performance Evaluation of Feature Detection and Feature Matching for Stereo Visual Odometry Using SIFT and SURF

机译:使用筛选和冲浪的立体视觉测量特征检测性能评估和特征匹配

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摘要

Feature detection and feature matching are the most crucial parts in visual odometry process. In order to suit the real time process in visual odometry, both of the stages must be robust but at the same time are fast to compute. This paper presents the evaluation of Scale Invariant Feature Transform (SIFT) and Speeded Up Robust Feature (SURF) performances. The results show that SURF is outperform than SIFT in term of rate of matched points and also in computational time.
机译:特征检测和特征匹配是视觉测量过程中最关键的零件。为了适应视觉测距中的实时过程,两个阶段必须坚固,但同时快速计算。本文介绍了规模不变特征变换(SIFT)的评估,并加速了鲁棒特征(冲浪)性能。结果表明,冲浪比匹配点率和计算时间的速度优于筛选。

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