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Learned Camera Gain and Exposure Control for Improved Visual Feature Detection and Matching

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arxiv 2102.04341 v3 pith:TYDCKMOY submitted 2021-02-08 cs.RO cs.CV

Learned Camera Gain and Exposure Control for Improved Visual Feature Detection and Matching

classification cs.RO cs.CV
keywords visualcameraimageschangescontaincontrolexposurefeature
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Successful visual navigation depends upon capturing images that contain sufficient useful information. In this letter, we explore a data-driven approach to account for environmental lighting changes, improving the quality of images for use in visual odometry (VO) or visual simultaneous localization and mapping (SLAM). We train a deep convolutional neural network model to predictively adjust camera gain and exposure time parameters such that consecutive images contain a maximal number of matchable features. The training process is fully self-supervised: our training signal is derived from an underlying VO or SLAM pipeline and, as a result, the model is optimized to perform well with that specific pipeline. We demonstrate through extensive real-world experiments that our network can anticipate and compensate for dramatic lighting changes (e.g., transitions into and out of road tunnels), maintaining a substantially higher number of inlier feature matches than competing camera parameter control algorithms.

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