Mobile service robot multi-floor navigation using visual detection and recognition of elevator features(ICCAS 2020)

Eun-ho Kim, Sanghyeon Bae, T. Kuc
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引用次数: 6

Abstract

Mobile service robot multi-floor navigation is a challenging issue for in indoor robot navigation, especially when moving between floors, entering and leaving elevator. So, in this paper we propose detection and recognition method of elevator features and robot navigation for entering and leaving the elevator. Thus, in this paper we propose a method which uses deep learning. Based image recognition system to identify particular floor from an elevator display. Using this method robot determines whether particular floor has reached. We proposed two-fold methods to accomplish our goal. On the first method we performed the extraction of elevator button coordinates through traditional feature extractor such as adaptive thresholding, blob detection, template matching. The next part of our approach is by using DL- based recognition, done by YOLO 9000 on the floor count display panel of the elevator. From our analysis of these above mentioned methods we discovered that the feature extractor out-performs the DL-based recognition system even in the tricky conditions. Such as lighter reflection, motion blur etc. and proves to be more robust system for detection and recognition.
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基于电梯特征视觉检测与识别的移动服务机器人多层导航(ICCAS 2020)
移动服务机器人的多楼层导航是室内机器人导航中的一个难题,尤其是在楼层间移动、进出电梯时。因此,本文提出了电梯特征的检测与识别方法以及机器人进出电梯的导航方法。因此,在本文中我们提出了一种使用深度学习的方法。基于图像识别系统从电梯显示中识别特定楼层。利用这种方法,机器人判断是否到达了特定的楼层。我们提出了两种方法来实现我们的目标。在第一种方法上,通过自适应阈值分割、斑点检测、模板匹配等传统特征提取方法对电梯按钮坐标进行提取。我们的方法的下一部分是使用基于深度学习的识别,由YOLO 9000在电梯的楼层数显示面板上完成。通过对上述方法的分析,我们发现即使在复杂的条件下,特征提取器的性能也优于基于dl的识别系统。如较轻的反射,运动模糊等,并被证明是更强大的检测和识别系统。
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