基于音频信号和情绪的情绪增强音乐推荐系统

V. Mounika, Y. Charitha
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引用次数: 1

摘要

情感言语的身份是人与计算机交互学科中的一个重要话题。通过不同的研究人员介绍和安装了许多研究人类语言情感的策略。识别音频文档中的噪声是其中一个版本的目的。除了性别识别和根据情绪播放YouTube视频外,这款电脑还具有语音情感检测功能,可以从音频线索中倾听快乐、愤怒和悲伤等情绪。这个输出被作为输入发送到YouTube,它在用户的脑海中播放歌曲,导致这个人的脾气迅速稳定下来。采用CNN特征提取方法,用NumPy处理函数大小向量,在MFCC中进行音频类。本研究主要使用RAVDESS和SAVEE两个程序。利用获得的数据集,深入制作了一个新版本的外观。设备区域是谷歌Colab用于执行代码执行的平台。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mood -Enhancing Music Recommendation System based on Audio Signals and Emotions
The identity of emotional speech is a significant topic within the discipline of interactions between humans and computers. Many strategies of figuring out emotions in human speech had been introduced and installed through diverse researchers. To identify noises in audio documents is the purpose of one of these versions. Together with gender recognition and YouTube video will be played depending on mood, this suggested computer also features speech emotion detection, which listens for sentiments like happiness, rage, and sadness in audio cues. This output is sent as input to YouTube, which plays song within the user's mind, resulting in the person's temper to stabilize fast. Using the CNN characteristic extraction approach, the function sizes vector become processed with NumPy, and the audio class became carried out in MFCC. This research study mainly uses two programs: RAVDESS and SAVEE. Using the acquired datasets, a new version of the look was produced in-depth. The device area is the platform where the Google Colab is used to perform code execution.
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