Automatic Identification of Braille Blocks by Neural Network Using Multi-Channel Pressure Sensor Array

K. Kuzume, Haruko Masuda, Yudai Murakami
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引用次数: 2

Abstract

In recent years, the number of visually impaired people in Japan has exceeded 300,000 including those with low vision, and accidental falls on the station platform involving them have not been eliminated. Persons having acquired visual impairment make up one third of all cases of blindness in Japan. It is known that they often cannot walk alone with only a white cane or guide dog. The main cause of platform accidents was misidentification of braille blocks. Therefore, it was necessary to develop an auxiliary device for accurately identifying braille blocks that the acquired visually impaired could also use easily. In this research, we developed an automatic identification system for braille blocks using foot pressure data acquired by a multi-channel pressure sensor array. First, we devised a new foot pressure data acquisition device using a multi-channel pressure sensor array. Our proposed device had excellent features such as being light weight, low cost, and easy to extend to multi-channel. Second, in order to accurately identify the braille blocks, the foot pressure data acquired under various conditions was learned by neural network, and identification performance evaluated. As a result of the experiment, the braille blocks could be identified with a high rate of at least 98% accuracy by neural network, with a very simple structure of an input layer (16 neurons), a hidden layer (5 neurons), and an output layer (4 neurons).
基于多通道压力传感器阵列的神经网络盲文块自动识别
近年来,日本包括低视力者在内的视障人士数量已超过30万,他们在站台上意外摔倒的事件并未消除。获得性视力障碍的人占日本所有失明病例的三分之一。众所周知,他们经常不能单独行走,只有一个白色的手杖或导盲犬。站台事故的主要原因是对盲文块的错误识别。因此,有必要开发一种辅助装置来准确识别盲文块,使获得性视障人士也能方便地使用。在这项研究中,我们开发了一个盲文块的自动识别系统,该系统使用多通道压力传感器阵列获取的足部压力数据。首先,我们设计了一种采用多通道压力传感器阵列的新型足底压力数据采集装置。该器件具有重量轻、成本低、易于扩展到多通道等优点。其次,为了准确识别盲文块,利用神经网络学习不同条件下获取的足部压力数据,并对识别性能进行评价。实验结果表明,通过神经网络,输入层(16个神经元)、隐藏层(5个神经元)和输出层(4个神经元)的结构非常简单,盲文块的识别准确率高达98%以上。
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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