Song Recommendation Based on Facial Expression

Aishwarya Shetty, Apeksha Prabhu, Prof. Suparna, D. M. S. Parveen
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引用次数: 1

Abstract

A user's facial expressions can reveal his or her level of emotion. These expressions can be obtained from the system's camera's live feed. In the area of computer vision (CV) and machine learning (ML), a lot of research is being done to train machines to recognize different human emotions or moods. Machine learning offers a variety of methods for detecting human emotions. A review of existing music systems revealed that many music applications rely on the user's past listening choices rather than recommending songs based on their current emotion. The goal of this project is to identify emotions in human faces using real-time data and to suggest songs according on those emotions. Music is a great unifier. It binds us despite our differences in ages, backgrounds, languages, interests and levels of income. Due to its accessibility and ability to be used alongside daily activities, travel, sports, and other activities, music players and other streaming apps are in high demand. Digital music has emerged as the main form of consumer content that many young people are looking for because to the quick growth of mobile networks and digital multimedia technology. Music is frequently used by people as a tool for mood control, specifically to improve mood, boost energy, or soothe tension. Additionally, listening to the correct music at the right moment can help with mental wellness. So, music and feelings in people are closely related. As a result, the proposed system is an interactive platform for suggesting music depending on user’s present emotional state. This also could be a great feature to be incorporated in existing music player applications.
基于面部表情的歌曲推荐
用户的面部表情可以揭示他或她的情绪水平。这些表达式可以从系统摄像机的实时馈送中获得。在计算机视觉(CV)和机器学习(ML)领域,人们正在进行大量研究,以训练机器识别不同的人类情绪或情绪。机器学习为检测人类情绪提供了多种方法。对现有音乐系统的回顾显示,许多音乐应用程序依赖于用户过去的收听选择,而不是根据他们当前的情绪推荐歌曲。该项目的目标是利用实时数据识别人脸的情绪,并根据这些情绪推荐歌曲。音乐是一个伟大的统一。尽管我们在年龄、背景、语言、兴趣和收入水平上存在差异,但它将我们联系在一起。由于其可访问性和与日常活动、旅行、体育和其他活动一起使用的能力,音乐播放器和其他流媒体应用程序需求量很大。由于移动网络和数字多媒体技术的快速发展,数字音乐已经成为许多年轻人正在寻找的主要消费内容形式。音乐经常被人们用作控制情绪的工具,特别是用来改善情绪、增加能量或缓解紧张。此外,在正确的时间听正确的音乐有助于心理健康。所以,音乐和人的感情是密切相关的。因此,所提出的系统是一个互动平台,可以根据用户当前的情绪状态来推荐音乐。这也可能是一个伟大的功能,纳入现有的音乐播放器应用程序。
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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