A Machine Learning Based Music Player by Detecting Emotions

S. Deebika, K. Indira, Jesline
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引用次数: 8

Abstract

The paper constitutes the implementation of Convolutional neural network for the emotion detection and thereby playing a song accordingly. Segregating the songs and playing them in accordance to one's mood could facilitate the music lover. Although there exist a lot of algorithms designed for it, the computation is not as expected. This paper eradicates such an issue by using CNN. In order to obtain minimal processing, multilayer perceptron are implemented by CNNs. In comparison to various algorithms for image classification, CNNs observed to have little-processing. This implies that the filters used in CNNs are advantageous when compared to traditional algorithm. The visualization of features directly can be less informative. Hence, we use the training procedure of back-propagation to activate the filters for better visualization. The multiple actions such as capturing, detecting the emotion and classifying the same can all be confined as one step through the use of CNN. The slow performances of the real-time approaches could be enhanced by regularizing the methods and by visualizing the hidden features. Hence the proposed approach could enhance the accuracy and the computation speed.
一个基于机器学习的音乐播放器,通过检测情绪
本文构成了卷积神经网络的实现,用于情感检测,从而相应地播放歌曲。把歌曲分开,根据自己的心情来演奏,可以方便音乐爱好者。虽然已经有很多针对它的算法,但计算结果并不如预期的那样。本文通过使用CNN解决了这一问题。为了获得最小的处理量,多层感知器由cnn实现。与各种图像分类算法相比,cnn的处理较少。这意味着与传统算法相比,cnn中使用的滤波器是有利的。直接对特征进行可视化所提供的信息较少。因此,我们使用反向传播的训练过程来激活滤波器以获得更好的可视化效果。通过使用CNN,捕捉、检测情绪、分类等多个动作都可以被限制在一个步骤中。可以通过正则化方法和可视化隐藏特征来改善实时方法的慢速性能。因此,该方法可以提高计算精度和计算速度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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