基于支持向量机的面部表情多重情感识别情感音乐播放器

Supriya L P, Rashmita Khilar
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引用次数: 2

摘要

情感计算是一种机器,它使机器能够以某种方式对人类的刺激做出反应,通常与复杂的情绪或情绪指示有关。这个基于情感的音乐播放器项目是一种新颖的方法,可以帮助用户根据用户的情感自动播放歌曲。它可以理解用户的面部情绪,并根据他们的情绪播放歌曲。音乐对人类的日常生活和创新、进步的技术产生了重大影响。一般来说,操作人员需要面对的挑战是,手动在播放列表中寻找歌曲,从中进行选择。在这一点上,它提出了一个有效而精确的模型,该模型将根据用户当前的情绪状态和行为产生一个播放列表。现有的创建播放列表的方法的机械化策略在计算上是适度的,不太可靠,并且有时包括使用额外的硬件。话语是传达思想、情感和气质的最古老和最普通的方式,它需要很高的专业知识、时间和代价。这个提议的框架是基于实时提取面部表情,以及从曲调中提取声音亮点来解码成一种特定的感觉,这种感觉会自然地产生一个播放列表,这样处理的难度就适中了。使用支持向量机(SVM)识别情绪。网络摄像头捕捉用户的图像。然后,它从捕获的图像中提取用户的面部特征。音乐将从预先定义的文件中播放,取决于情绪。
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Affective Music Player for Multiple Emotion Recognition Using Facial Expressions with SVM
Affective computing is a form of machinery that enables the machine to respond to a human stimulus in some way, usually associated with sophisticated mood or emotional indications. This emotion based music player project is a novel approach that helps the user play songs automatically based on the user's emotions. This understands user's facial emotions and plays the songs according to their emotions. Music as a major impact on the regular life of human beings and in innovative, progressive technologies. Generally the operator needs to do with the challenge of looking for songs manually navigate through the playlist to choose from. At this point it suggests an effective and precise model, which would produce a playlist constructed on the user's present emotional state and behavior. Existing strategies to mechanize the method of creating the playlist are computationally moderate, less solid and some of the time includes the utilization of additional hardware. Discourse is the foremost antiquated and ordinary way of communicating considerations, feelings, and temperament and it requires tall specialized, time, and taken a toll. This proposed framework is based on extricating facial expressions in real-time, as well as extricating sound highlights from tunes to decipher into a specific feeling that will naturally produce a playlist so that the fetched of handling is moderately low. The Emotions are recognized using Support Vector Machine (SVM) . The webcam captures the user's image. It then extracts the user's facial features from the captured image. The music will be played from the pre- defined files, depending on the emotion.
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