基于Softmax分类器的深度堆叠自编码器情感识别

M. Mohana, P. Subashini
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引用次数: 0

摘要

深度学习和计算机视觉在人脸情感识别领域的研究仍然十分活跃。它已广泛应用于多个研究领域,但不限于人机交互、人的心理交互检测、学习者的情绪识别等。近几十年来,使用深度学习的面部表情识别已被证明是有效的。这一性能的实现是由于卷积层中有一定程度的自学习核,能够以较高的精度保留图像的空间信息。尽管如此,由于权重的随机初始化,它经常导致非最优局部最小值的收敛。本文介绍了一种深度堆叠式自编码器,其中一个自编码器的输出随输入值一起进入另一个自编码器的输入。单个自编码器不足以提取特征中的复杂关系。因此,堆叠自编码器的这些连接特征有助于在训练和测试期间关注高度活跃的特征。此外,这种方法还有助于解决低效的数据问题。最后,经过训练的自编码器使用Adam优化器进行微调,并且通过softmax层对情绪进行分类。实验表明,该方法在JAFFE数据集上的结果是显著的。该方法的准确率为82%,精密度为85%,召回率为82%,f1得分为81%。此外,利用重构损失和roc曲线对堆叠式自编码器的性能进行了测试。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Emotion Recognition using Deep Stacked Autoencoder with Softmax Classifier
Deep learning and computer vision research are still quite active in the field of facial emotion recognition (FER). It has been widely applied in several research areas but not limited to human-robot interaction, human psychology interaction detection, and learners’ emotion identification. In recent decades, facial expression recognition using deep learning has proven to be effective. This performance has been achieved by a good degree of self-learn kernels in the convolution layer which retains spatial information of images with higher accuracy. Even though, it often leads to convergence in non-optimal local minima due to randomized initialization of weights. This paper introduces a Deep stacked autoencoder in which the output of one autoencoder has given into the input of another autoencoder along with input values. A single autoencoder does not sufficient to extract the complex relationship in features. So, these concatenated features of the stacked autoencoder help to focus on highly active features during training and testing. In addition, this approach helps to solve inefficient data issues. Finally, trained autoencoders have fine-tuned with the Adam optimizer, and emotions are classified by a softmax layer. The outcomes of the proposed methodology on the JAFFE dataset are significant, according to experiments. The proposed method achieved 82% of accuracy, 85% of Precision, 82% of Recall, and 81% of F1-score. Additionally, the performance of the stacked autoencoder has been examined using the reconstruction loss and roc curve.
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