视障人士实时检测物体运动方向

Aniqua Nusrat Zereen, Sonia Corraya
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引用次数: 9

摘要

视障人群实时运动物体的运动方向检测是一个具有挑战性的研究领域。随着现实世界场景捕捉技术的进步和像微软Kinect这样的便携式设备的出现,需要一种简单、可靠、快速的技术来帮助盲人导航。本文旨在开发一种适合且有效的室内运动目标随运动方向检测技术。使用微软Kinect捕捉盲人前方场景的深度信息。从1秒内拍摄的视频中提取3个连续的深度帧,并对每个深度帧的4条预定义线生成沿线距离轮廓图。然后分析这些线轮廓图,以检测任何存在的移动物体及其移动方向。经过详细研究,实验结果表明,该方法可以成功地检测出沿其方向运动的物体,准确率为92%,静止物体的检测准确率为87%。该方法的总体准确率为90%。
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Detecting real time object along with the moving direction for visually impaired people
Detection of real time moving object along with the moving direction in respect with visually impaired people is a challenging research area. The recent advancement in technology for real world scene capturing and portable devices like Microsoft Kinect necessitate the need of simple, reliable and faster technique for assisting blind navigation. This paper aims to develop a suitable and effective technique for moving object detection along with its moving direction in indoor environment. Depth information of the front scene of a blind people is captured using Microsoft Kinect. Three consecutive depth frames are extracted from video taken in one second and Distance along Line Profile graph is generated for four predefined lines of each depth frame. These line profile graphs are then analyzed for detecting any presence of moving object and its moving direction. After detail investigation, experimental result shows that the proposed method can successfully detect moving object along with its direction with 92% accuracy and still objects detection accuracy rate is 87%. The overall accuracy of the proposed method is 90%.
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