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Convolutional Autoencoder aided loop closure detection for monocular SLAM ?

机译:卷积自动编码器辅助单眼SLAM的闭环检测

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A correct loop closure detection is an important component of a robust SLAM (simultaneous localization and mapping) system. Loop closing refers to the process of correctly asserting that a mobile robot has returned to a previous visited location. Failing to detect a loop closure does in general not pose a threat to the positioning and mapping system of a robot, but a wrong loop closure can lead to drift of the robot and can therefore jeopardize the robot’s mission. In this paper a robust, highly parallelizable standalone algorithm for globally detecting loop closures is proposed. The algorithm is purposely built with the goal of avoiding false positives, while maintaining reasonable true positives performances. Tests conducted on the KITTI and the Scott Reef 25 dataset show that when bag-of-words approaches perform poorly, our presented approach is able to avoid wrong loop closures.
机译:正确的闭环检测是强大的SLAM(同时定位和映射)系统的重要组成部分。闭环是指正确断言移动机器人已返回到先前访问的位置的过程。通常,未能检测到环路闭合不会对机器人的定位和地图系统造成威胁,但是错误的环路闭合会导致机器人漂移,从而危及机器人的任务。本文提出了一种鲁棒的,高度可并行化的独立算法,用于全局检测环路闭合。该算法是专门为避免误报而建立的,同时又要保持合理的正误报性能。在KITTI和Scott Reef 25数据集上进行的测试表明,当词袋方法表现不佳时,我们提出的方法能够避免错误的闭环。

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