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FullExpression Using Transfer Learning in the Classification of Human Emotions

机译:在人类情绪分类中使用转移学习的挥霍

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During human evolution emotion expression became an important social tool that contributed to the complexification of societies. Human-computer interaction is commonly present in our daily life, and the industry is struggling for solutions that can analyze human emotions, to improve workers safety and security, as well as processes optimization. In this work we present a software built using the transfer-learning technique on a deep learning model, and conclude about how it can classify human emotions through facial expression analysis. A Convolutional Neuronal Network model was trained and used in a web application. Several tools were created to facilitate the software development process, including the training and validation processes. Data was collected by combining several facial expression emotion databases. Software evaluation revealed an accuracy in identifying the correct emotions close to 80% .
机译:在人类的演变期间,情绪表达成为一个重要的社交工具,促成了社会的复杂化。 人机互动通常存在于我们的日常生活中,并且该行业正在努力分析人类情绪的解决方案,以改善工人的安全和安全,以及流程优化。 在这项工作中,我们展示了一种在深入学习模型上使用转移学习技术构建的软件,并通过面部表情分析来对人类情绪进行分类。 训练卷积神经元网络模型并在Web应用程序中使用。 创建了几个工具以促进软件开发过程,包括培训和验证流程。 通过组合几个面部表情情感数据库来收集数据。 软件评估揭示了识别接近80%的正确情绪的准确性。

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