Efficient Facial Expression Ecognition and classification system based on morphological processing of frontal face images

Advait Apte, Arshitha Basavaraj, K. NithinR.
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引用次数: 4

Abstract

Facial expressions are one of the many non-verbal cues that aid communication among humans. It has wide ranging applications from Human-computer interactions in computer vision to behavioral sciences and clinical practice in Psychology. Although, for humans recognizing facial expressions comes effortlessly, it is not so at the machine-level. To achieve, effective and efficient recognition of these varied expressions like in our brain, at machine-level, still remains a challenge. In this paper, morphological operations, statistical formulas and image processing techniques have been used to come up with a more efficient Facial Expression Recognition algorithm, using any frontal posed image. The entire process of facial expression recognition is divided into four categories, that is, Face detection, Facial feature localization using morphological operations, facial feature extraction using statistical formulas and finally, facial feature classification using neural networks. Facial expressions have been classified into six categories that are: joy, neutral, anger, sad, surprise and disgust.
基于正面图像形态学处理的高效面部表情识别与分类系统
面部表情是帮助人类交流的众多非语言线索之一。它具有广泛的应用,从计算机视觉中的人机交互到行为科学和心理学的临床实践。虽然,对于人类来说,识别面部表情毫不费力,但在机器层面并非如此。在机器层面上实现对这些不同表情的有效识别,仍然是一个挑战。在本文中,形态学运算,统计公式和图像处理技术被用于提出一个更有效的面部表情识别算法,使用任何正面构成的图像。面部表情识别的整个过程分为四大类,即人脸检测,利用形态学操作进行人脸特征定位,利用统计公式进行人脸特征提取,最后利用神经网络进行人脸特征分类。面部表情被分为六类:喜悦、中性、愤怒、悲伤、惊讶和厌恶。
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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