Recognition and Classification of Smiles using Computer Vision

Ramya Rao, Veena N Hedge
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Abstract

A simple method for the recognition and classification of varied types of smiles using the basics of machine learning is proposed in this paper. Machine-human interaction has seen exponential growth in the last decade. Key features of this interaction include emotion detection. A smiling face is often considered a sign of euphoria and excitement. The analysis is performed on real-time video sequence. The algorithm used for detection is a 68-point facial landmark recognition with aspect ratio calculation of facial features such as mouth and eyes.
基于计算机视觉的微笑识别与分类
本文提出了一种利用机器学习的基本原理对不同类型微笑进行识别和分类的简单方法。在过去十年中,人机交互呈指数级增长。这种交互的关键特征包括情绪检测。微笑的脸通常被认为是欣快和兴奋的标志。对实时视频序列进行分析。用于检测的算法是68点面部地标识别,并计算嘴和眼睛等面部特征的纵横比。
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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