Research on Real-Time Face Key Point Detection Algorithm Based on Attention Mechanism

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Abstract

The existing face detection methods were affected by the network model structure used. Most of the face recognition methods had low recognition rate of face key point features due to many parameters and large amount of calculation. In order to improve the recognition accuracy and detection speed of face key points, a real-time face key point detection algorithm based on attention mechanism was proposed in this paper. Due to the multiscale characteristics of face key point features, the deep convolution network model was adopted, the attention module was added to the VGG network structure, the feature enhancement module and feature fusion module were combined to improve the shallow feature representation ability of VGG, and the cascade attention mechanism was used to improve the deep feature representation ability. Experiments showed that the proposed algorithm not only can effectively realize face key point recognition but also has better recognition accuracy and detection speed than other similar methods. This method can provide some theoretical basis and technical support for face detection in complex environment.

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APA

Gao, J., & Yang, T. (2022). Research on Real-Time Face Key Point Detection Algorithm Based on Attention Mechanism. Computational Intelligence and Neuroscience, 2022. https://doi.org/10.1155/2022/6205108

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