Skybiometry and AffectNet on Facial Emotion Recognition Using Supervised Machine Learning Algorithms

Mirafe R. Prospero, Edson B. Lagamayo, A. Tumulak, Arman Bernard G. Santos, Bryan G. Dadiz
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引用次数: 6

Abstract

Nowadays, supervised machine learning aims to mimic human sanity such as recognition of facial emotion, interaction abilities and gaining insights into the environment. This machine learning is being utilized in different forms ranging from the exposure of human increase on the way to the patterns of personal interactions. Facial emotion recognition fundamentally identifies emotion which shapes how humans' self-control and reaction based on situations as well as the environment to which they belong. With these, there are great numbers of researches into developing supervised machine learning to recognize human facial emotions. In recognition of facial emotion, Skybiometry and AffactNet have been employed. Skybiometry is considered to be a state of the art in recognizing and detecting facial expressions. It allows developers and marketers to do more with the use of cloud biometrics api [1]. On the other hand, Mollahosseini prepared, collected and even annotated new database of facial emotions approximately from the internet. AffectNet serves as the largest database of facial expressions, valence, and arousal represented in two different emotion models. With the help of evaluation metrics, deep neural network baselines can perform better than the conventional learning methods [2].
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Skybiometry和AffectNet在有监督机器学习算法中的面部情感识别
如今,监督式机器学习的目标是模仿人类的理智,比如识别面部情绪、互动能力和对环境的洞察。这种机器学习正在以不同的形式被利用,从人类在路上增加的暴露到个人互动的模式。面部情绪识别从根本上识别情绪,这种情绪塑造了人类基于情境和环境的自我控制和反应。有了这些,有大量的研究开发监督机器学习来识别人类的面部情绪。在面部表情识别中,采用了Skybiometry和AffactNet。天空生物测量被认为是识别和检测面部表情的最新技术。它允许开发人员和营销人员使用云生物识别api[1]做更多的事情。另一方面,Mollahosseini准备、收集甚至注释了大约来自互联网的新的面部情绪数据库。AffectNet是两种不同情绪模型中面部表情、效价和唤醒的最大数据库。在评价指标的帮助下,深度神经网络基线的表现优于传统的学习方法[2]。
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