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Smart music player integrating facial emotion recognition and music mood recommendation

机译:结合面部表情识别和音乐心情推荐的智能音乐播放器

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Songs, as a medium of expression, have always been a popular choice to depict and understand human emotions. Reliable emotion based classification systems can go a long way in helping us parse their meaning. However, research in the field of emotion-based music classification has not yielded optimal results. In this paper, we present an affective cross-platform music player, EMP, which recommends music based on the real-time mood of the user. EMP provides smart mood based music recommendation by incorporating the capabilities of emotion context reasoning within our adaptive music recommendation system. Our music player contains three modules: Emotion Module, Music Classification Module and Recommendation Module. The Emotion Module takes an image of the user's face as an input and makes use of deep learning algorithms to identify their mood with an accuracy of 90.23%. The Music Classification Module makes use of audio features to achieve a remarkable result of 97.69% while classifying songs into 4 different mood classes. The Recommendation Module suggests songs to the user by mapping their emotions to the mood type of the song, taking into consideration the preferences of the user.
机译:歌曲作为一种表达手段,一直是描述和理解人类情感的流行选择。可靠的基于情感的分类系统可以帮助我们解析其含义。然而,基于情感的音乐分类领域的研究并未产生最佳结果。在本文中,我们介绍了一种情感跨平台音乐播放器EMP,它根据用户的实时心情推荐音乐。 EMP通过将情绪上下文推理功能整合到我们的自适应音乐推荐系统中,提供了基于智能情绪的音乐推荐。我们的音乐播放器包含三个模块:情感模块,音乐分类模块和推荐模块。情绪模块将用户面部图像作为输入,并利用深度学习算法以90.23%的准确度识别用户的情绪。音乐分类模块利用音频功能在将歌曲分类为4种不同的情绪类别时获得了97.69%的显着效果。推荐模块通过将用户的情绪映射到歌曲的情绪类型来向用户建议歌曲,同时考虑用户的喜好。

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