基于卷积神经网络的静态图像人脸情绪识别

M. Nasri, Mohamed Amine Hmani, Aymen Mtibaa, D. Petrovska-Delacrétaz, M. Slima, A. Hamida
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引用次数: 5

摘要

人机交互系统还没有达到所有的情感和社交能力。本文提出了一种基于异常卷积神经网络架构和k -fold交叉验证策略的静态人脸情绪识别系统。采用微调方法对系统进行了改进。在ImageNet数据库上进行对象识别预训练的异常模型进行了微调,以识别七种情绪状态。该系统在共情项目和AffectNet数据库中记录的数据库上进行了评估。我们的实验结果在共情和影响网络数据库上使用微调策略分别达到62%和69%的准确率。结合AffectNet和共情数据库对我们提出的模型进行训练,在共情数据库上的情绪识别准确率达到了91.2%。
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Face Emotion Recognition From Static Image Based on Convolution Neural Networks
Human-Machine Interaction systems have not yet reached all the emotional and social capacities. In this paper, we propose a face emotion recognition system from static image based on the Xception convolution neural network architecture and the K-fold-cross-validation strategy. The proposed system was improved using the fine-tuning method. The Xception model pre-trained on ImageNet database for objects recognition was fine-tuned to recognize seven emotional states. The proposed system is evaluated on the database recorded during the Empathic project and the AffectNet database. Our experimental results achieve an accuracy of 62%, 69% on Empathic and AffectNet databases respectively using the fine-tuning strategy. Combined the AffectNet and Empathic databases to train our proposed model, show significant improvement in the emotion recognition that achieves an accuracy of 91.2% on Empathic database.
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