利用地标检测实现轮椅的安全视觉导航

C. Sevastopoulos, Mohammad Zaki Zadeh, Michail Theofanidis, Sneh Acharya, Nishit Patel, F. Makedon
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引用次数: 0

摘要

本文提出了一种利用二维RGB图像通过成功的地标检测提取高级语义信息的方法。特别地,重点放在遇到场景中的特定标签(开放路径,人类,楼梯,门口,障碍物)的存在上,这可以成为增强场景理解的基本信息来源,并为移动单元的安全导航铺平道路。实验采用手动轮椅对四个多标签的室内学术环境的图像实例进行采集。然后,对预训练视觉变压器(ViT)进行微调,并通过与最先进的图像分类深度架构(如ResNet)进行消融研究来评估其性能。结果表明,微调后的ViT在达到令人满意的泛化水平的同时,优于所有其他深度卷积架构。
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Towards Safe Visual Navigation of a Wheelchair Using Landmark Detection
This article presents a method for extracting high-level semantic information through successful landmark detection using 2D RGB images. In particular, the focus is placed on the presence of particular labels (open path, humans, staircase, doorways, obstacles) in the encountered scene, which can be a fundamental source of information enhancing scene understanding and paving the path towards the safe navigation of the mobile unit. Experiments are conducted using a manual wheelchair to gather image instances from four indoor academic environments consisting of multiple labels. Afterwards, the fine-tuning of a pretrained vision transformer (ViT) is conducted, and the performance is evaluated through an ablation study versus well-established state-of-the-art deep architectures for image classification such as ResNet. Results show that the fine-tuned ViT outperforms all other deep convolutional architectures while achieving satisfactory levels of generalization.
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