Depth Image-Based Obstacle Avoidance for an In-Door Patrol Robot

Zhenghan Jiang, Qiangfu Zhao, Yoichi Tomioka
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引用次数: 3

Abstract

Image-based obstacle avoidance has been studied for decades. One weak point of image-based approaches is that the performance usually depends on the lighting condition. That is, the performance can be very poor in dark environments. In this research, we investigate the possibility of the depth image-based approach for full-time indoor patrolling. As the first step, we consider a 3-class problem. Each depth image is classified as “danger” if some obstacle is too close, as “notice” if the obstacle is close, and as “normal” if there is no obstacle in the vicinity. The label of each depth image is defined based on the RGB image captured at the same time, and an AlexNet, which is a well-trained convolutional neural network, is retrained via transfer learning, and used for classification. In our primary experiment, we collected 102,776 image data in the Research Quadrangle of the University of Aizu. Test results show that the performance of the depth image-based approach is good during both day and night, and in most cases, it is better than the RGB image-based approach. This result can provide new insights when designing more practical full-time patrol robots.
基于深度图像的室内巡逻机器人避障方法
基于图像的避障技术已经研究了几十年。基于图像的方法的一个弱点是性能通常取决于光照条件。也就是说,在黑暗的环境中,性能可能非常差。在本研究中,我们探讨了基于深度图像的方法用于全职室内巡逻的可能性。作为第一步,我们考虑一个3类问题。如果障碍物太近,每个深度图像被分类为“危险”,如果障碍物很近,则分类为“注意”,如果附近没有障碍物,则分类为“正常”。基于同时捕获的RGB图像定义每个深度图像的标签,并通过迁移学习对训练良好的卷积神经网络AlexNet进行重新训练,并用于分类。在我们的初步实验中,我们在会津大学的研究四合院收集了102776张图像数据。测试结果表明,基于深度图像的方法在白天和夜间都具有良好的性能,并且在大多数情况下优于基于RGB图像的方法。这一结果可以为设计更实用的全职巡逻机器人提供新的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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