Face image processing method and device and server

An image processing and face image technology, applied in the field of image processing, can solve the problems such as the cosine space distance is not obvious enough between classes, the accuracy of content understanding cannot be improved, and the discreteness of classified data is poor.

Active Publication Date: 2018-03-20
BEIJING DAJIA INTERNET INFORMATION TECH CO LTD
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Problems solved by technology

[0003] However, the inventors of the present invention found in the research that the feature extraction method of Softmax's cross-entropy loss function is a non-end-to-end method, which is simple and easy to implement, but due to the lack of restraint in the class data

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  • Face image processing method and device and server
  • Face image processing method and device and server
  • Face image processing method and device and server

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Embodiment

[0090] It should be pointed out that the basic structure of the convolutional neural network includes two layers, one is the feature extraction layer, the input of each neuron is connected to the local receptive field of the previous layer, and the local features are extracted. Once the local feature is extracted, the positional relationship between it and other features is also determined; the second is the feature map layer, each calculation layer of the network is composed of multiple feature maps, each feature map is a plane, All neurons on the plane have equal weights. The feature map structure uses the sigmoid function with a small influence function kernel as the activation function of the convolutional network, so that the feature map has displacement invariance. In addition, since neurons on a mapping plane share weights, the number of free parameters of the network is reduced. Each convolutional layer in the convolutional neural network is followed by a calculation ...

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Abstract

The embodiment of the invention discloses a face image processing method and device and a server. The method comprises the following steps: obtaining a to-be-processed human face image; inputting thehuman face image into a pre-trained convolution neural network model, and obtaining the classification data outputted when the convolution neural network model responds to the input of the human faceimage, wherein the convolution neural network model takes a loss function as a constraint condition, so as to enable the feature cosine value of each class of the classification data to approach to one; obtaining the classification data, and carrying out the content understanding of the human face image according to the classification data. The cosine value between a feature vector and a weight value of the loss function is enabled to approach to one, so as to achieve the convergence of inner-class distance. The convergence of inner-class distance enables the inner-class distance of the classification data to be increased, and the increase of the inner-class distance enables the classification data to be different more apparently. The increase of the robustness of data also can improve theaccuracy of content understanding.

Description

technical field [0001] Embodiments of the present invention relate to the field of image processing, in particular to a face image processing method, device and server. Background technique [0002] With the development of deep learning technology, the convolutional neural network has become a powerful tool for extracting face features. For the convolutional neural network with a fixed model, the core technology is how to design the loss function so that it can effectively supervise the convolutional neural network. Convolutional neural network training, so that the convolutional neural network has the ability to extract face features. In the prior art, the cross-entropy loss function of Softmax is mainly used to supervise the training of the convolutional neural network model. Among them, Softmax's cross-entropy loss function trains the ability of the network to extract features, uses the last layer of the network as the expression of the face, maps the face data to the co...

Claims

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Application Information

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IPC IPC(8): G06K9/00G06K9/62
CPCG06V40/172G06V40/168G06F18/2411
Inventor 杨帆张志伟
Owner BEIJING DAJIA INTERNET INFORMATION TECH CO LTD
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