Facial Expression Electric Wheelchair Control Instruction Using Image Processing

Muhammad Faiz Ahmad Sobri, Z. Hussain, S. Z. Yahaya, R. Boudville, Noraiza Aqilah Abdul Aziz
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Abstract

Tetraplegia is a type of paralysis that affects upper and lower limbs due to damage of spinal cord or brain. This condition causes difficulty to move and most of the time caretaker is needed to help the patients. This project proposed the design and implementation of an image processing technique in capturing and categorizing different facial gesture and use it as control instructions for electric wheelchair. The aim was to reduce the dependency to caretaker especially for mobility oftetraplegia patient. The deep learning Haar Cascade Classifier identify the expression of a face through image processing in livevideo capture. The Open Computer Vision (OpenCV) in Python was used to detect, recognize, and analyze the facial expression. Convolution Neural Network (CNN), a deep learning operation will act as trainer that analyze an open-source data to create a model as reference for the facial expression recognition. In orderto make the system operated as a standalone system, the Raspberry Pi module that connects with Pi Camera was used as the platform to capture the live video, perform processing, and produce the output control that give instructions to move such as forward, right, left and stop. Based on the analysis of the system performance, the system was capable to produce high accuracyof detection and correctly produce the electric wheelchair controlinstruction according to the facial expressions.
基于图像处理的面部表情电动轮椅控制指令
四肢瘫痪是一种由于脊髓或大脑损伤而影响上肢和下肢的瘫痪。这种情况导致行动困难,大多数时候需要看护人帮助患者。本项目提出了一种图像处理技术的设计和实现,用于捕捉和分类不同的面部手势,并将其作为电动轮椅的控制指令。目的是减少对看护人的依赖,特别是四肢瘫痪患者的行动能力。深度学习Haar级联分类器通过实时视频捕获中的图像处理来识别面部表情。使用Python中的开放计算机视觉(OpenCV)来检测,识别和分析面部表情。深度学习操作卷积神经网络(CNN)将作为训练器,分析开源数据,创建一个模型作为面部表情识别的参考。为了使系统作为一个独立的系统运行,使用与Pi Camera连接的树莓派模块作为平台,捕获实时视频,进行处理,并产生输出控制,给出向前,右,左和停止等移动指令。通过对系统性能的分析,该系统能够产生较高的检测精度,并根据面部表情正确地产生电动轮椅的控制指令。
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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