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A Deep Learning System for Recognizing Facial Expression in Real-Time

机译:实时识别面部表情的深度学习系统

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This article presents an image-based real-time facial expression recognition system that is able to recognize the facial expressions of several subjects on a webcam at the same time. Our proposed methodology combines a supervised transfer learning strategy and a joint supervision method with center loss, which is crucial for facial tasks. A newly proposed Convolutional Neural Network (CNN) model, MobileNet, which has both accuracy and speed, is deployed in both offline and in a real-time framework that enables fast and accurate real-time output. Evaluations towards two publicly available datasets, JAFFE and CK+, are carried out respectively. The JAFFE dataset reaches an accuracy of 95.24%, while an accuracy of 96.92% is achieved on the 6-class CK+ dataset, which contains only the last frames of image sequences. At last, the average run-time cost for the recognition of the real-time implementation is around 3.57ms/frame on a NVIDIA Quadro K4200 GPU.
机译:本文介绍了一种基于图像的实时面部表情识别系统,该系统能够同时识别网络摄像头中多个对象的面部表情。我们提出的方法结合了监督转移学习策略和具有中心丢失的联合监督方法,这对于面部任务至关重要。具有准确性和速度性的新提出的卷积神经网络(CNN)模型MobileNet可以在脱机和实时框架中部署,从而实现快速,准确的实时输出。分别对两个公开可用的数据集JAFFE和CK +进行了评估。 JAFFE数据集的准确度达到95.24%,而仅包含图像序列最后一帧的6类CK +数据集的准确度达到96.92%。最后,在NVIDIA Quadro K4200 GPU上,识别实时实现的平均运行时间成本约为3.57ms /帧。

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