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Balancing the Budget: Feature Selection and Tracking for Multi-Camera Visual-Inertial Odometry

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 نشر من قبل Lintong Zhang
 تاريخ النشر 2021
  مجال البحث الهندسة المعلوماتية
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We present a multi-camera visual-inertial odometry system based on factor graph optimization which estimates motion by using all cameras simultaneously while retaining a fixed overall feature budget. We focus on motion tracking in challenging environments such as in narrow corridors and dark spaces with aggressive motions and abrupt lighting changes. These scenarios cause traditional monocular or stereo odometry to fail. While tracking motion across extra cameras should theoretically prevent failures, it causes additional complexity and computational burden. To overcome these challenges, we introduce two novel methods to improve multi-camera feature tracking. First, instead of tracking features separately in each camera, we track features continuously as they move from one camera to another. This increases accuracy and achieves a more compact factor graph representation. Second, we select a fixed budget of tracked features which are spread across the cameras to ensure that the limited computational budget is never exceeded. We have found that using a smaller set of informative features can maintain the same tracking accuracy while reducing back-end optimization time. Our proposed method was extensively tested using a hardware-synchronized device containing an IMU and four cameras (a front stereo pair and two lateral) in scenarios including an underground mine, large open spaces, and building interiors with narrow stairs and corridors. Compared to stereo-only state-of-the-art VIO methods, our approach reduces the drift rate (RPE) by up to 80% in translation and 39% in rotation.



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