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Expression Recognition Method Based on a Lightweight Convolutional Neural Network

机译:基于轻量级卷积神经网络的表达识别方法

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摘要

Effective emotion recognition algorithms can help machines better understand people and promote the development of human-computer interaction applications. In recent years, many research efforts have used benchmark expression data to train deep neural network models to achieve state-of-art results. These high-accuracy models usually contain hundreds of layers, so they require complex calculations and may not be suitable for real-world scenarios. This paper proposes a lightweight emotion recognition (LER) model to handle the latency problem under natural conditions. The three main contributions of this paper are as follows. 1) The LER model incorporates a densely connected convolution layer and model compression techniques into a framework that eliminates redundancy parameters. 2) Multichannel input is introduced in our work to preprocess the image data, which improves the learning ability of the model. 3) Experiments show that the proposed LER model has better performance on the FER2013 and FERPLUS datasets compared with other lightweight models. Compared with the VGG13 used in previous work, the LER model achieves higher accuracy and reduces the number of parameters by 97 times. Finally, the FERFIN dataset is created, which had fewer noise data and more accurate labels than the FERPLUS dataset.
机译:有效的情感识别算法可以帮助机器更好地了解人们并促进人机交互应用的发展。近年来,许多研究工作已经使用基准表达数据来培训深度神经网络模型来实现最先进的结果。这些高精度模型通常包含数百层,因此它们需要复杂的计算,并且可能不适合现实世界的情景。本文提出了轻量级情感识别(LER)模型来处理自然条件下的延迟问题。本文的三项主要贡献如下。 1)LER模型将浓密连接的卷积层和模型压缩技术集成到消除冗余参数的框架中。 2)在我们的工作中引入了多声道输入以预处理图像数据,这提高了模型的学习能力。 3)实验表明,与其他轻量级模型相比,所提出的LER模型在FER2013和Ferplus Datasets上具有更好的性能。与先前工作中使用的VGG13相比,LER模型可实现更高的精度,并将参数数量减少97次。最后,创建了Ferfin数据集,这些数据集具有较少的噪声数据和比Ferplus DataSet更准确的标签。

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