面向残疾人的实时情感识别系统

Y. Rabhi, M. Mrabet, F. Fnaiech, M. Sayadi
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引用次数: 6

摘要

为了确保电动轮椅使用者的安全航行,必须对环境和使用者进行监视,以防止任何潜在的危害行为,无论是有意的还是无意的。本文提出了一种用于电动轮椅的实时嵌入式情绪识别系统,用于检测、开发和评估老年用户或有认知障碍的用户的情绪状态。RPI相机板连接到树莓PI2模态B处理设备,用于从用户面部表情变化的录制视频中捕获帧,然后使用python脚本处理捕获的帧,以检测面部并识别明显的情绪。在人脸检测、人脸特征提取和情绪分类等方面采用了HOG、回归树和PCA等技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A real-time emotion recognition system for disabled persons
In order to assure a safe navigation for an electric wheelchair user, both environment and user must be kept under surveillance for any potential endangering act, whether they are intentional, or unintentional. This paper proposes a real-time embedded emotion recognition system designed for an electric wheelchair to detect, exploit and evaluate the emotional state of an elder user or a user with some cognitive impairment. An RPI camera board connected to a raspberry PI2 modal B processing device is employed to capture frames from a recorded video of the user's facial expressions variation, the captured frames will then be processed using a python script to detect the face and recognize the apparent emotion. A set of various techniques are employed for face detection, facial feature extraction, and emotion classification such as HOG, regression trees, and PCA.
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