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ARAware:实时关键移动物体识别辅助视障人士

ARAware: Assisting Visually Impaired People with Real-Time Critical Moving Object Identification.

机构信息

Department of Computing, Imperial College London, London SW7 2AZ, UK.

National Engineering Laboratory for Big Data Analytics, Xi'an Jiaotong University, Xi'an 710049, China.

出版信息

Sensors (Basel). 2024 Jul 1;24(13):4282. doi: 10.3390/s24134282.

DOI:10.3390/s24134282
PMID:39001061
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC11243906/
Abstract

Autonomous outdoor moving objects like cars, motorcycles, bicycles, and pedestrians present different risks to the safety of Visually Impaired People (VIPs). Consequently, many camera-based VIP mobility assistive solutions have resulted. However, they fail to guarantee VIP safety in practice, i.e., they cannot effectively prevent collisions with more dangerous threats moving at higher speeds, namely, Critical Moving Objects (CMOs). This paper presents the first practical camera-based VIP mobility assistant scheme, ARAware, that effectively identifies CMOs in real-time to give the VIP more time to avoid danger through simultaneously addressing CMO identification, CMO risk level evaluation and classification, and prioritised CMO warning notification. Experimental results based on our real-world prototype demonstrate that ARAware accurately identifies CMOs (with 97.26% mAR and 88.20% mAP) in real-time (with a 32 fps processing speed for 30 fps incoming video). It precisely classifies CMOs according to their risk levels (with 100% mAR and 91.69% mAP), and warns in a timely manner about high-risk CMOs while effectively reducing false alarms by postponing the warning of low-risk CMOs. Compared to the closest state-of-the-art approach, DEEP-SEE, ARAware achieves significantly higher CMO identification accuracy (by 42.62% in mAR and 10.88% in mAP), with a 93% faster end-to-end processing speed.

摘要

自主式户外移动物体,如汽车、摩托车、自行车和行人,对视障人士(VIP)的安全构成不同的风险。因此,产生了许多基于摄像头的 VIP 移动辅助解决方案。然而,它们在实践中无法保证 VIP 的安全,也就是说,它们不能有效地防止与移动速度更快、更危险的威胁物(即关键移动物体(CMO))发生碰撞。本文提出了第一个实用的基于摄像头的 VIP 移动辅助方案 ARAware,它可以实时有效地识别 CMO,通过同时解决 CMO 识别、CMO 风险级别评估和分类以及优先级 CMO 警告通知,为 VIP 提供更多的时间来避免危险。基于我们的真实原型的实验结果表明,ARAware 可以实时准确地识别 CMO(mAR 为 97.26%,mAP 为 88.20%)(对于 30 fps 的输入视频,处理速度为 32 fps)。它可以根据 CMO 的风险级别精确地对 CMO 进行分类(mAR 为 100%,mAP 为 91.69%),并及时对高风险 CMO 发出警告,同时通过推迟对低风险 CMO 的警告,有效地减少误报。与最接近的现有技术方法 DEEP-SEE 相比,ARAware 实现了显著更高的 CMO 识别精度(mAR 提高了 42.62%,mAP 提高了 10.88%),端到端处理速度快 93%。

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