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Research on a Micro-Expression Recognition Algorithm based on 3D-CNN

机译:基于3D-CNN的微表达识别算法研究

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摘要

Micro expression is a kind of natural human expression, which lasts for a short time and is not easy to detect. Due to the subtle spatiotemporal variation of micro-expressions, the recognition of micro-expressions is still a big challenge. Although many scholars have made some attempts in the recognition of micro-expressions, the accuracy of the recognition problem is still not ideal. In order to take advantage of 3D convolution, we propose an improved model of micro expression recognition based on 3D convolution neural network (3D-CNN). In the sequential model based on the deep learning framework of Keras, 3D convolution, pooling, batch normalization and other layers are added to construct the sequence. The recognition rate of this model on SMIC database can reach 76.92%, and it also shows good recognition rate on other databases. This method is superior to or partially superior to the classical methods and the current mainstream methods.
机译:微表达是一种自然的人类表达,持续很短的时间,并不容易检测。 由于微观的微妙的瞬间变化,对微表达的识别仍然是一个很大的挑战。 虽然许多学者在识别微表达式中取得了一些尝试,但识别问题的准确性仍然不理想。 为了利用3D卷积,我们提出了一种基于3D卷积神经网络(3D-CNN)的微表达式识别模型。 在基于Keras的深度学习框架的顺序模型中,添加了3D卷积,汇集,批量标准化和其他层以构建序列。 SMIC数据库上该模型的识别率可以达到76.92%,并且还在其他数据库中显示出良好的识别率。 该方法优于或部分优于经典方法和当前的主流方法。

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