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Emotion Recognition System for Specially Needed People with Optimized Deep Learning Algorithm

机译:优化深度学习算法的特殊人群情感识别系统

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摘要

In the past few years, emotion recognition has emerged as one of the attractive areas in the field of signal processing. This paper presents the emotion recognition system for specially needed people. Initially, the input speech signal is read and subjected to the preprocessing to further improve the signal. In the second step, the features are extracted using frequencybased features, such as spectral flux, spectral centroid, spectral crest, and spectral roll-off. Finally, the emotions are classified using deep belief networks (DBN), which is trained by moth Search Optimization Algorithm (MSA) along with the standard gradient descent algorithm (SGD).The performance of the proposed method of emotion recognition is analyzed using evaluation measures, such as False Rejection Rate (FRR),accuracy, and False Acceptance Rate (FAR). The effectiveness of the proposed method is revealed by comparing the performance with the existing methods. From the analysis, it is depicted that the proposed method outperforms the existing models with a maximal accuracy of 98.5%, minimum FAR and FRR values of 0.63 % and 0.77 %, respectively.
机译:在过去的几年中,情绪识别已成为信号处理领域中的一个吸引人的领域。本文提出了针对特殊人群的情绪识别系统。最初,读取输入语音信号并进行预处理以进一步改善信号。在第二步中,使用基于频率的特征提取特征,例如频谱通量,频谱质心,频谱波峰和频谱滚降。最后,使用深度信念网络(DBN)对情绪进行分类,该深度信念网络由飞蛾搜索优化算法(MSA)和标准梯度下降算法(SGD)进行训练。 ,例如错误拒绝率(FRR),准确性和错误接受率(FAR)。通过将性能与现有方法进行比较,揭示了该方法的有效性。从分析中可以看出,所提出的方法优于现有模型,最大精度为98.5%,最小FAR和FRR值分别为0.63%和0.77%。

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