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A Deep Convolutional Neural Network With Fuzzy Rough Sets for FER

机译:一种深卷积神经网络,具有模糊粗糙集的FER

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摘要

Existing facial emotion recognition methods do not have high accuracy and are not sufficient practical in real-time applications. We introduce type 2 fuzzy rough sets to develop a Type 2 Fuzzy Rough Convolutional Neural Network, as type 2 fuzzy rough sets form a suitable mathematical tool to characterize uncertainty of classifification. Based on the type 2 fuzzy rough sets theory, we construct an optimization objective for training CNNs by minimizing fuzzy classification uncertainty, and present the defifinition and optimization of type 2 fuzzy rough loss, which can be achieved by better performance. This method could reduce the uncertainty in terms of vagueness and indiscernibility by using type 2 fuzzy rough sets theory and specififically removing noise samples by using CNN from raw data. And finally, compared the proposed method with other feature extraction and learning techniques based on Algorithm Adaption k-Nearest-Neighbors. Experimental results demonstrate that type 2 fuzzy rough sets convolutional neural network could achieve better performances comparing with other methods.
机译:现有的面部情感识别方法没有高精度,并且在实时应用中不够实用。我们介绍2型模糊粗糙集以开发2型模糊卷曲卷积神经网络,如2型模糊粗糙集形成合适的数学工具,以表征分类的不确定性。基于2型模糊粗糙集理论,我们通过最小化模糊分类不确定性来构建用于训练CNN的优化目标,并呈现2型模糊粗损失的退割和优化,这可以通过更好的性能实现。这种方法可以通过使用2型模糊粗糙集理论和通过从原始数据中的CNN使用CNN来降低模糊和难以辨证的不确定性。最后,基于算法Adation-邻邻的其他特征提取和学习技术比较了所提出的方法。实验结果表明,2型模糊粗糙集卷积神经网络可以实现与其他方法相比的更好的性能。

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