Image processing method and apparatus, and server

An image processing and image technology, applied in the field of image processing, can solve the problems of inability to apply image recognition technology, low image recognition accuracy, and insufficient distance between classes

Active Publication Date: 2018-02-09
BEIJING DAJIA INTERNET INFORMATION TECH CO LTD
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Problems solved by technology

[0004] However, the inventors of the present invention found in further research that because the loss function of Softmax Loss+Center Loss only pays attention to the distance of intra-class features and ignores the distance of inter-class features, the distance between classes is not prominent enough when comparing graphs , resulting in low image recognition accuracy during image comparison and a high probability of misjudgment, making it impossible to apply image recognition technology to areas with high security requirements

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  • Image processing method and apparatus, and server
  • Image processing method and apparatus, and server
  • Image processing method and apparatus, and server

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Embodiment

[0077] 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

Embodiments of the invention disclose an image processing method and apparatus, and a server. The method comprises the following steps of obtaining a to-be-processed human face image; inputting the human face image to a convolutional neural network model with a loss function, wherein the loss function directionally screens and increases a between-class distance after image classification accordingto a preset expectation; and obtaining classification data output by the convolutional neural network model, and according to the classification data, performing content understanding on the human face image. The new loss function is established on the convolutional neural network model and has the effect of screening and increasing the between-class distance after the image classification; and the between-class distance of the classification data output by the convolutional neural network model obtained by training through the loss function is increased, so that the between-class distance inan image identification process is increased, the saliency of difference between images is remarkably improved, the image comparison accuracy is remarkably improved, and the security of applying theimage processing method is effectively guaranteed.

Description

technical field [0001] Embodiments of the present invention relate to the field of image processing, in particular to an image processing method, device and server. Background technique [0002] Face recognition refers to the technology of using computers to process, analyze and understand face images to identify targets and objects in various face images. Face recognition can be applied in many fields such as security and finance. The process of face recognition is generally divided into three stages: face detection, face alignment, face feature extraction and comparison, and face feature extraction is the process of face recognition. key technologies. [0003] 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 net...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06K9/00G06N3/04G06N3/08
CPCG06N3/084G06V40/178G06V40/168G06V40/172G06N3/045
Inventor 杨帆张志伟
Owner BEIJING DAJIA INTERNET INFORMATION TECH CO LTD
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