An intelligent depth-based obstacle detection system for visually-impaired aid applications

Chia-Hsiang Lee, Yu-Chi Su, Liang-Gee Chen
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引用次数: 39

Abstract

In this paper, we present a robust depth-based obstacle detection system in computer vision. The system aims to assist the visually-impaired in detecting obstacles with distance information for safety. With analysis of the depth map, segmentation and noise elimination are adopted to distinguish different objects according to the related depth information. Obstacle extraction mechanism is proposed to capture obstacles by various object proprieties revealing in the depth map. The proposed system can also be applied to emerging vision-based mobile applications, such as robots, intelligent vehicle navigation, and dynamic surveillance systems. Experimental results demonstrate the proposed system achieves high accuracy. In the indoor environment, the average detection rate is above 96.1%. Even in the outdoor environment or in complete darkness, 93.7% detection rate is achieved on average.
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一种用于视障人士辅助应用的基于深度的智能障碍物检测系统
本文提出了一种鲁棒的基于深度的计算机视觉障碍检测系统。该系统旨在帮助视障人士通过距离信息检测障碍物,确保安全。通过对深度图的分析,采用分割和消噪的方法,根据相关的深度信息区分不同的目标。提出了障碍物提取机制,利用深度图中揭示的各种物体属性捕获障碍物。所提出的系统也可以应用于新兴的基于视觉的移动应用,如机器人、智能车辆导航和动态监视系统。实验结果表明,该系统具有较高的精度。在室内环境中,平均检出率在96.1%以上。即使在室外环境或完全黑暗的情况下,平均检出率也达到93.7%。
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