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Recognition of emotion in music based on deep convolutional neural network

机译:基于深度卷积神经网络的音乐情感识别

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摘要

In the domain of music information retrieval, emotion based classification is an active area of research. Emotion being a perceptual and subjective concept, the task is quite challenging. It is very difficult to design signal based descriptors to represent emotions. In this work deep leaning network is proposed and experiment is done with benchmark datasets namely, Soundtracks, Bi-Modal and MER_taffc. Experiment has also been done with hand crafted descriptor consisting of different time domain and spectral features, linear predictive coding and MFCC based features. Different classifiers like, neural network, support vector machine and random forest are tried. Although the combined feature set with neural network provides an optimal result for the datasets, but in general the performance of such approaches is limited. It is difficult to obtain a consistent feature set that works across the classifier and datasets. To get rid of the issue of feature design, deep learning based approach is followed. A convolutional neural network built around VGGNet and a novel post-processing technique are proposed. Proposed methodology provides substantial improvement of performance for the datasets. Comparison with other reported works on three different datasets also establishes the superiority of the proposed methodology. The improvement in performance has been substantiated by Z test.
机译:在音乐信息检索领域,基于情感的分类是研究的活跃领域。情感是一个感性和主观的概念,这项任务非常具有挑战性。设计基于信号的描述符来表达情绪是非常困难的。在这项工作中,提出了深度学习网络,并使用基准数据集,即Soundtracks,Bi-Modal和MER_taffc进行了实验。还使用包含不同时域和频谱特征,线性预测编码和基于MFCC的特征的手工描述符进行了实验。尝试了不同的分类器,例如神经网络,支持向量机和随机森林。虽然结合了神经网络的特征集为数据集提供了最佳结果,但是总的来说,这种方法的性能受到限制。很难获得在分类器和数据集上都可以使用的一致特征集。为了摆脱功能设计的问题,遵循了基于深度学习的方法。提出了一种围绕VGGNet构建的卷积神经网络和一种新颖的后处理技术。拟议的方法大大改善了数据集的性能。与其他报告的作品在三个不同数据集上的比较也证明了所提出方法的优越性。 Z测试证明了性能的提高。

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