Litcius/Paper detail

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

Justin Tomasi, Brandon Wagstaff, Steven L. Waslander, Jonathan Kelly

2021IEEE Robotics and Automation Letters39 citationsDOIOpen Access PDF

Abstract

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.

Topics & Concepts

Artificial intelligenceComputer scienceFeature (linguistics)Pipeline (software)Computer visionConvolutional neural networkVisual odometryMatching (statistics)Process (computing)Simultaneous localization and mappingOdometryPattern recognition (psychology)RobotMathematicsMobile robotPhilosophyStatisticsOperating systemProgramming languageLinguisticsRobotics and Sensor-Based LocalizationAdvanced Vision and ImagingAdvanced Image and Video Retrieval Techniques