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Joint Bayesian Face Recognition Based on Data Adaptive Enhancement and Feature Fusion

机译:基于数据自适应增强和特征融合的联合贝叶斯人脸识别

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In the face recognition, training data is sometimes limited, and even a single face photo per person, which causes the model less trained to recognize the multi-pose facial image with low recognition rate. In this paper, aiming at the face recognition using small sample training set, a joint Bayesian face recognition algorithm based on adaptive face data enhancement combined with global and local feature fusion is proposed. The face key points are detected and then expanded and rotated to extend the face data samples, and face model is established by combining the global and local features. The experiment result shows that the proposed algorithm makes the multi-gesture face recognition performance well.
机译:在面部识别中,训练数据有时会受到限制,甚至每人甚至一张单张照片,这会导致模型训练不足,无法以较低的识别率识别多姿势面部图像。针对小样本训练集的人脸识别问题,提出了一种基于自适应人脸数据增强结合全局和局部特征融合的联合贝叶斯人脸识别算法。检测面部关键点,然后对其进行扩展和旋转以扩展面部数据样本,并通过组合全局和局部特征来建立面部模型。实验结果表明,该算法具有较好的多手势人脸识别性能。

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