Using semantic maps for room recognition to aid visually impaired people

Qiang Liu, Ruihao Li, Huosheng Hu, Dongbing Gu
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引用次数: 2

Abstract

Millions of people in the world suffer from vision impairment or even vision loss. Guide sticks and dogs have been deployed to lead them around various obstacles. However, both of them are not capable of interacting with human users who normally rely on conceptual knowledge or semantic contents of the environment. This paper first builds a 3D semantic indoor environment map with an RGB-D sensor. Then, the map is used for room recognition during the revisits based on appearance by applying a convolutional neural network. Representative objects extracted from the semantic map are used to diagnose and eliminate errors during room recognition. The proposed method result in a 97.8% accuracy even with lighting condition and small object location changes.
使用语义地图进行房间识别,以帮助视障人士
世界上有数百万人患有视力障碍甚至视力丧失。导盲棒和狗被用来引导他们绕过各种障碍。然而,它们都不能与通常依赖于环境的概念知识或语义内容的人类用户进行交互。本文首先利用RGB-D传感器构建了三维语义室内环境地图。然后,通过应用卷积神经网络,将该地图用于基于外观的房间识别。从语义图中提取的代表性对象用于诊断和消除房间识别过程中的错误。即使在光照条件和物体位置变化较小的情况下,该方法的精度也达到97.8%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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