Censure: Center Surround Extremas For Realtime Feature Detection And Matching

COMPUTER VISION - ECCV 2008, PT IV, PROCEEDINGS(2008)

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摘要
We explore the suitability of different feature detectors for the task of image registration, and in particular for visual odometry, using two criteria: stability (persistence across viewpoint change) and accuracy (consistent localization across viewpoint change). In addition to the now-standard SIFT, SURF, FAST, and Harris detectors, we introduce a suite of scale-invariant center-surround detectors (CenSurE) that outperform the other detectors, yet have better computational characteristics than other scale-space detectors, and are capable of real-time implementation.
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关键词
visual odometry,scale space,image registration,feature detection,scale invariance
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