Emotion based video player

D Aditya, R.G. Manvitha, M Samyak, B S Shamitha
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引用次数: 1

Abstract

One's work can be done efficiently only if their mood is good. Emotions is the index of mood. Here model capture one's image as an input, predict their mood and play a video of opposite genre as an output, in order to change their mood, which is the main goal of this project. Hence taking them through an emotional roller coaster. The solution makes use of CNN (convolutional neutral networks) for detecting one's mood. It uses OpenCV (open-source computer vision library) in-order to get user's image using their respective web camera. It is done by importing modules like web-browser and requests in-order to get access to YouTube to play videos accordingly. The average accuracy rate of the system has increased to 98.53 percent. Eight primary emotion classes have been effectively classified by the method. As a result, the proposed strategy has been shown to be effective in recognizing emotions.

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基于情感的视频播放器
一个人的工作只有心情好才能有效率地完成。情绪是情绪的指数。这里模型捕捉一个人的图像作为输入,预测他们的情绪,并播放一个相反类型的视频作为输出,以改变他们的情绪,这是这个项目的主要目标。因此,让他们经历一次情感过山车。该解决方案利用CNN(卷积神经网络)来检测一个人的情绪。它使用OpenCV(开源计算机视觉库),以便通过用户各自的网络摄像头获取用户的图像。它是通过导入网络浏览器和请求等模块来完成的,以便访问YouTube来播放相应的视频。系统的平均准确率提高到98.53%。该方法有效地划分了八种主要的情绪类别。结果表明,所提出的策略在识别情绪方面是有效的。
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