论文标题
在动态和不断变化的环境中的视觉本地化和映射
Visual Localization and Mapping in Dynamic and Changing Environments
论文作者
论文摘要
完全自主的移动机器人的现实部署取决于能够处理动态环境的强大的大满贯(同时定位和映射)系统,在该机器人前对象在机器人前移动,而在机器人已经在机器人已经绘制了现场后移动或更换对象。本文介绍了更换 - 斜线,这是一种在动态和不断变化的环境中稳健视觉猛烈抨击的方法。这是通过使用与长期数据关联算法结合的贝叶斯过滤器来实现的。此外,它采用了一种基于对象检测的动态关键点进行过滤的有效算法,该对象检测正确识别了不动态的边界框中的特征,从而阻止了可能导致轨道丢失的功能的耗尽。此外,开发了一个新的数据集,其中包含RGB-D数据,专门设计用于评估对象级别上不断变化的环境,称为PUC-USP数据集。使用移动机器人,RGB-D摄像头和运动捕获系统创建了六个序列。这些序列旨在捕获可能导致跟踪故障或地图损坏的不同情况。据我们所知,更换式SLAM是第一个对动态和不断变化的环境既有坚固耐用的视觉大满贯系统,而不是假设给定的相机姿势或已知地图,也能够实时运行。使用基准数据集对所提出的方法进行了评估,并将其与其他最先进的方法进行了比较,证明是高度准确的。
The real-world deployment of fully autonomous mobile robots depends on a robust SLAM (Simultaneous Localization and Mapping) system, capable of handling dynamic environments, where objects are moving in front of the robot, and changing environments, where objects are moved or replaced after the robot has already mapped the scene. This paper presents Changing-SLAM, a method for robust Visual SLAM in both dynamic and changing environments. This is achieved by using a Bayesian filter combined with a long-term data association algorithm. Also, it employs an efficient algorithm for dynamic keypoints filtering based on object detection that correctly identify features inside the bounding box that are not dynamic, preventing a depletion of features that could cause lost tracks. Furthermore, a new dataset was developed with RGB-D data especially designed for the evaluation of changing environments on an object level, called PUC-USP dataset. Six sequences were created using a mobile robot, an RGB-D camera and a motion capture system. The sequences were designed to capture different scenarios that could lead to a tracking failure or a map corruption. To the best of our knowledge, Changing-SLAM is the first Visual SLAM system that is robust to both dynamic and changing environments, not assuming a given camera pose or a known map, being also able to operate in real time. The proposed method was evaluated using benchmark datasets and compared with other state-of-the-art methods, proving to be highly accurate.