Deep Neural Network for visual Emotion Recognition based on ResNet50 using Song-Speech characteristics

Souha Ayadi, Z. Lachiri
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引用次数: 3

Abstract

Visual emotion recognition is a very large field. It plays a very important role in different domains such as security, robotics, and medical tasks. The visual tasks could be either image or video. Unlike the image processing, the difficulty of video processing is always a challenge due to changes in information over time variation. Significant performance improvements when applying deep learning algorithms to video processing. This paper presents a deep neural network based on ResNet50 model. The latter is conducted on the Ryerson Audio-Visual Database of Emotional Speech and Song (RAVDESS) due to the variance of the nature of the data exists which is speech and song. The choice of ResNet model is based on the ability of facing different problems such as of vanishing gradients, the performing stability offered by this model, the ability of CNN for feature extraction which is considered to be the base architecture for ResNet, and the ability of improving the accuracy results and minimizing the loss. The achieved results are 57.73% for song and 55.52% for speech. Results shows that the Resnet50 model is suitable for both speech and song while maintaining performance stability.
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基于ResNet50的基于歌曲-语音特征的深度神经网络视觉情感识别
视觉情感识别是一个非常大的领域。它在安全、机器人和医疗任务等不同领域发挥着非常重要的作用。视觉任务可以是图像或视频。与图像处理不同,由于信息随时间的变化而变化,视频处理的难度始终是一个挑战。将深度学习算法应用于视频处理时,显著提高了性能。本文提出了一种基于ResNet50模型的深度神经网络。后者是在瑞尔森情感言语与歌曲视听数据库(RAVDESS)上进行的,因为数据存在言语与歌曲性质的差异。ResNet模型的选择是基于面对梯度消失等不同问题的能力,该模型提供的性能稳定性,CNN的特征提取能力(被认为是ResNet的基础架构),以及提高精度结果和最小化损失的能力。实现的结果为歌曲57.73%,语音55.52%。结果表明,Resnet50模型在保持性能稳定性的情况下,既适合语音又适合歌曲。
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