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An expression detection technique based on multi-input convolutional neural network for incomplete face images

机译:基于多输入卷积神经网络的不完全面部图像的表达检测技术

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An expression detection technique based on feature fusion multi-input convolutional neural network is proposed. In view of the negative effect of occlusion objects in occlusion face image on expression recognition task, the multi-input convolutional neural network is proposed to use the multi-input property, so that the multi-classifier coupling network can learn more complex prediction model. The local feature level fusion method was used to extract the features from the image, and the local micro-features of the region of interest were taken as the multi-branch input of the multi-input neural network, so as to reduce the influence of the contribution rate of the missing part of the incomplete image and improve the robustness and accuracy of the expression detection.
机译:提出了一种基于特征融合多输入卷积神经网络的表达检测技术。 鉴于闭塞对象在遮挡面部图像上的遮挡物体对表达识别任务中的负面影响,提出了多输入卷积神经网络来使用多输入属性,使得多分类器耦合网络可以学习更复杂的预测模型。 局部特征级融合方法用于从图像中提取特征,并且感兴趣区域的局部微观特征作为多输入神经网络的多分支输入,从而减少了影响的影响 不完全图像的缺失部分的贡献率,提高表达检测的鲁棒性和准确性。

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