在虚拟环境中训练的基于神经的视觉里程计用于移动机器人导航

S. Diane, E. A. Lesiv
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引用次数: 0

摘要

视觉里程计是一个众所周知的技术问题,对于自主移动机器人在建筑物或难以到达的区域进行导航至关重要,因为这些区域没有精确的外部导航。我们提出了一种能够解决上述问题的神经网络架构。网络的训练是基于在虚拟环境中收集的数据进行的。此外,我们提出了一种基于传感器融合方法的数据过滤算法。整个系统的输入是两个连续视频帧和惯性传感器读数的子集。该系统的输出是包含机器人线速度和角速度信息的运动参数向量。实验证实了所提出的网络架构和过滤算法在寻找森林中失踪人员方面的有效性,并展示了其可能的应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Neural-based Visual Odometry Trained in a Virtual Enviroment for a Mobile Robot Navigation
Visual odometry is a well-known technical problem, which is crucial for navigation of autonomous mobile robots in buildings or hard-to-reach areas where no precise external navigation is available. We propose an architecture of a neural network capable of solving the stated problem. Training of the network is performed based on data collected within a virtual environment. Additionally we suggest an algorithm for filtration of gathered data based on sensor fusion methods. The inputs of the whole system are two sequential videoframes and the subset of inertial sensor readings. The output of the proposed system is a vector of motion parameters containing information on robot's linear and angular velocities. The conducted experiments confirm adequacy and show possible application of the proposed network architecture and filtering algorithm for searching people lost in a forest.
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