Classification and aggregation sparse representation face identification method based on nuclear space

A sparse representation and face recognition technology, which is applied in the field of face recognition with sparse representation of classification and aggregation, and can solve the problems of large fitting error and low accuracy.

Active Publication Date: 2016-07-13
CHINA UNIV OF PETROLEUM (EAST CHINA)
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AI Technical Summary

Problems solved by technology

[0009] Aiming at the above-mentioned shortcomings of the existing face recognition methods, such as large fitting error and low accuracy, the present invention provides a face recognition method based on classification and aggregation sparse representation of kernel space, which heats classification concentration

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  • Classification and aggregation sparse representation face identification method based on nuclear space
  • Classification and aggregation sparse representation face identification method based on nuclear space
  • Classification and aggregation sparse representation face identification method based on nuclear space

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Embodiment Construction

[0071] The present invention will be further described below in conjunction with the accompanying drawings.

[0072] A face recognition method based on classification clustering sparse representation of kernel space, comprising the following steps:

[0073] Step 1: Use convolutional neural network to extract face features from face images. In this embodiment, the VGG model (Deepface recognition, O.M. Parkhiand A. Vedaldian and A. Zisserman, Deep Face Recognition, Proceeding of the British Machine Vision Conference (BMVC), 2015) is selected. First, change the size of the face image to 224×224, and then call the VGG model to obtain the features of the face image.

[0074] Step 2: Training classification aggregation dictionary, the training steps are:

[0075] (1) Input training sample, adopt the picture sample training classification dictionary that comprises C kinds, training sample space is represented by X, expresses as X=[X 1 ,X 2 ,...,X c ,...,X C ]∈R D×N , D represe...

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Abstract

The present invention relates to a classification and aggregation sparse representation face identification method based on a nuclear space. The method comprises the following steps: employing a convolutional neural network to extract facial features of a facial image, training a classification and aggregation dictionary, and identifying the image. The classification and aggregation sparse representation face identification method based on the nuclear space considers that the weighting of each training sample to the subspace construction is different and the train samples closed to a class center should have bigger weight to the subspace construction when the train samples are configured to perform sparse representation of test samples, a [Phi](Xc)Wc matrix is adopted to construct a new sparse representation dictionary, and classification concentration constraint terms are added in a sparse representation constraint. Compared with the prior, the classification and aggregation sparse representation face identification method based on the nuclear space is able to effectively reduce the fitting error of test samples in corresponding subspaces to allow samples with the same type to aggregate in the sparse representation so as to improve the face identification performance, enhance the capabilities of processing the non-linear structure and relation, effectively excavate hiding features of complex data and further improve the face identification performance.

Description

technical field [0001] The technical field of pattern recognition of the present invention, in particular, relates to a face recognition method based on classification aggregation sparse representation of kernel space. Background technique [0002] With the development of science and technology, many fields are faced with an increasingly large amount of data, such as seismic data, geophysical data, audio data, astronomical data, industrial control data, genetic data, etc. How to realize flexible and effective processing of these huge data And adaptive expression has gradually become one of the concerns of people. Image processing, information transmission, computer vision and many other fields have been seeking sparse and concise representations of signals and images. The advantage of this sparse representation is that non-zero coefficients reveal the internal structure and essential properties of signals and images. Nonzero coefficients have explicit physical meaning. [...

Claims

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Application Information

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IPC IPC(8): G06K9/00G06K9/62
CPCG06V40/172G06F18/2136G06F18/214
Inventor 刘宝弟王立韩丽莎王延江
Owner CHINA UNIV OF PETROLEUM (EAST CHINA)
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