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Analysis of Facial Sentiments: A deep-learning Way

机译:面部表情分析:一种深度学习的方式

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摘要

Human facial expressions are an integral and straightforward means of displaying sentiments. Automatic analysis of these unspoken sentiments has been an interesting and challenging task in the domain of computer vision with its applications ranging across multiple domains including psychology, product marketing, process automation etc. This task has been a difficult one as humans differ greatly in the manner of expressing their sentiments through expressions. Machine learning, specifically deep learning has been instrumental in making breakthrough progress in many fields of research including computer vision. This research paper introduces a convolutional neural network (CNN) implemented architecture that tackles this problem of facial sentiment analysis. For training and testing purposes, the FER-2013 public dataset is utilized. This task has been undertaken in a series of steps namely, preprocessing of the data followed feature extraction and finally classification by our trained model network. The results of our experiment have been a very encouraging 57% and are an improvement in the domain of automated analyzing of facial sentiments.
机译:人的面部表情是表达情感的不可或缺的直接手段。在计算机视觉领域,自动分析这些不言而喻的情感是一项有趣且具有挑战性的任务,其应用范围涉及多个领域,包括心理学,产品营销,过程自动化等。由于人类的方式差异很大,因此这一任务非常困难。通过表达表达他们的情感的方式。机器学习,特别是深度学习,在包括计算机视觉在内的许多研究领域取得了突破性进展。本研究论文介绍了一种卷积神经网络(CNN)实现的体系结构,该体系结构解决了面部情感分析的这一问题。出于培训和测试目的,使用了FER-2013公开数据集。此任务已通过一系列步骤完成,即数据预处理,特征提取以及最终由我们训练有素的模型网络进行分类。我们的实验结果令人鼓舞,达到57%,并且在面部情绪自动分析领域得到了改善。

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