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Happy Emotion Recognition in Videos Via Apex Spotting and Temporal Models

机译:通过Apex Spotting和Temporal Models在视频中快乐的情感认可

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With rapid increasing research in emotion detection, facial expression recognition becomes more popular as a vital emotion measurement instrument. Happy is one of the most common facial expressions that indicates a positive human emotional status. Although many facial expression recognition methods have been well established for recognizing multiple emotions, studies on happy detection are very limited, especially for processing the videos. In this paper, we propose a new single emotion recognition method to recognize happy emotion from key frames of facial expression videos. In our method, we extract key frames that demonstrate the highest intensity level of expressions among all frames in two steps. In the first step, an Inception ResNet framework is utilized to segment an facial expression process in a video into three parts: onset, apex and offset. In the second phase, we choose first three frames in the apex segment as key frames. A fine-tuned convolutional neural network (CNN) then classifies the key frames into happy and non-happy classes. Our experimental results demonstrate that the proposed approach achieves higher accuracy than four counterpart methods in recognizing happy emotions, with the accuracy of 98.4% and 94.2% on two benchmark facial expression datasets, i.e., the extended Cohn-Kanade (CK+) and MMI.
机译:随着情绪检测的快速增长,面部表情识别变得更受活力的情绪测量仪器。快乐是最常见的面部表情之一,表明了积极的人类情感地位。虽然许多面部表情识别方法已经很好地建立了识别多种情绪,但对快乐检测的研究非常有限,特别是用于处理视频。在本文中,我们提出了一种新的单一情感识别方法,以识别来自面部表情视频的关键框架的快乐情感。在我们的方法中,我们提取了两个步骤中所有帧中的最高强度级别的关键帧。在第一步中,开始reset框架被利用在视频中将面部表达过程分成三个部分:开始,顶点和偏移。在第二阶段,我们选择顶端段中的前三个帧作为关键帧。然后,一个微调的卷积神经网络(CNN)将关键帧分类为快乐和非快乐的类。我们的实验结果表明,拟议的方法在识别幸福情绪方面达到比四个对应方法更高的准确性,精度为两个基准面部表情数据集的98.4%和94.2%,即扩展的Cohn-Kanade(CK +)和MMI。

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