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The Usage of Grayscale or Color Images for Facial Expression Recognition with Deep Neural Networks

机译:用深神经网络使用灰度或彩色图像的面部表情识别

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The paper describes usage of modern deep neural network architectures such as ResNet, DenseNet and Xception for the classification of facial expressions on color and grayscale images. Each image may contain one of eight facial expression categories: "Neutral", "Happiness", "Sadness", "Surprise", "Fear", "Disgust", "Anger", "Contempt". As the dataset was used AffectNet. The most accurate architecture is Xception. It gave classification accuracy on training sample 97.65%, on cleaned testing sample 57.48% and top-2 accuracy on cleaned testing sample 76.70%. The category "Contempt" is worst recognized by all the types of neural networks considered, which indicates its ambiguity and similarity with other types of facial expressions. Experimental results show that for the considered task it does not matter, the color or grayscale image is fed to the input of the algorithm. This fact can save a significant amount of memory when storing data sets and training neural networks. The computing experiments was performed using graphics processor using NVidia CUDA technology with Keras and Tensorflow deep learning frameworks. It showed that the average processing time of one image varies from 4 ms to 30 ms for different architectures. Obtained results can be used in software for neural network training for face recognition systems.
机译:本文描述了现代深度神经网络架构的用法,例如Reset,DenSenet和Xcepion,用于颜色和灰度图像的面部表情的分类。每个图像可能包含八个面部表情类别中的一个:“中立”,“幸福”,“悲伤”,“惊喜”,“恐惧”,“厌恶”,“愤怒”,“愤怒”,“愤怒”,“蔑视”。随着数据集的使用EffectNet。最准确的架构是xception。它在训练样本97.65%上进行了分类准确性,在清洁的测试样品上进行57.48%,清洁测试样品的高精度76.70%。所考虑的所有类型的神经网络都认为“蔑视”类别最差,这表明其与其他类型的面部表情的歧义和相似之处。实验结果表明,对于考虑的任务,无关紧要,彩色或灰度图像被馈送到算法的输入。在存储数据集和培训神经网络时,这一事实可以节省大量内存。使用具有Keras和Tensorflow深度学习框架的NVIDIA CUDA技术使用图形处理器进行计算实验。它表明,对于不同的架构,一个图像的平均处理时间从4ms到30 ms之间变化。获得的结果可用于面部识别系统的神经网络训练软件中。

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