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MBA-VO: Motion Blur Aware Visual Odometry

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arxiv 2103.13684 v1 pith:UYUHNM2U submitted 2021-03-25 cs.CV cs.RO

MBA-VO: Motion Blur Aware Visual Odometry

classification cs.CV cs.RO
keywords motionblurodometryvisualcameraawareexposurenovel
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Motion blur is one of the major challenges remaining for visual odometry methods. In low-light conditions where longer exposure times are necessary, motion blur can appear even for relatively slow camera motions. In this paper we present a novel hybrid visual odometry pipeline with direct approach that explicitly models and estimates the camera's local trajectory within the exposure time. This allows us to actively compensate for any motion blur that occurs due to the camera motion. In addition, we also contribute a novel benchmarking dataset for motion blur aware visual odometry. In experiments we show that by directly modeling the image formation process, we are able to improve robustness of the visual odometry, while keeping comparable accuracy as that for images without motion blur.

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