A double-dictionary and multi-feature fusion decision-making face expression recognition method based on sparse representation

A multi-feature fusion and sparse representation technology, applied in the field of facial expression recognition, can solve the problems of not distinguishing expressionless faces from specific expressions, easily losing important information, and losing large information, so as to improve the accuracy of judgment and improve the resolution Accuracy, the effect of improving robustness

Active Publication Date: 2019-06-14
AIR FORCE EARLY WARNING ACADEMY
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Problems solved by technology

[0004] Lee Seung Ho et al. published "Intra-Class Variation Reduction Using Training Expression Images for Sparse Representation Based Facial Expression Recognition" on IEEE Transactions on Affective computing (2014), aiming at the intra-class changes in the process of facial expression recognition, it is proposed to use training sample re- Construct an intra-class change feature map, and recognize facial expressions by extracting the difference information between it and different expression images; however, this technical solution does not distinguish between expressionless faces and specific expressions when extracting intra-class change features
[0005] "Modifiedclassification and regression tree for facial expression recognition with using difference expression images" published by Du Lingshuang et al. on Electronics letters (2017) proposes facial expression recognition based on the differential image information between a specific expression face and an expressionless face; However, the technical solution is to directly use image difference for recognition, which will lose a lot of information. Although the intra-class variation features are extracted, it is easy to lose some important information that can be used for recognition.

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  • A double-dictionary and multi-feature fusion decision-making face expression recognition method based on sparse representation
  • A double-dictionary and multi-feature fusion decision-making face expression recognition method based on sparse representation
  • A double-dictionary and multi-feature fusion decision-making face expression recognition method based on sparse representation

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[0025] In order to make the object, technical solution and advantages of the present invention clearer, the present invention will be further described in detail below in conjunction with the accompanying drawings and embodiments. It should be understood that the specific embodiments described here are only used to explain the present invention, not to limit the present invention. In addition, the technical features involved in the various embodiments of the present invention described below can be combined with each other as long as they do not constitute a conflict with each other.

[0026] In the process of facial expression recognition, it is easily affected by changes in the face, illumination, occlusion, etc. If the expressions are classified, the above factors are usually called intra-class changes. How to eliminate the above-mentioned intra-class changes is a difficult problem in the field of expression recognition.

[0027] refer to figure 1 , the face expression rec...

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Abstract

The invention discloses a double-dictionary and multi-feature fusion decision facial expression recognition method based on sparse representation, and the method comprises the steps of firstly, extracting features from an expression-free face image sample and a specific expression face image sample, and constructing a nominal dictionary and a feature dictionary according to the features; Image tobe identified, extracting the corresponding features, performing sparse coding on the features by adopting a nominal dictionary, combining a coding coefficient result with the nominal dictionary to obtain reconstructed expression-free image features, subtracting the features before and after reconstruction to obtain the features only containing expression feature information, and performing sparsecoding on the features by adopting the feature dictionary to obtain a coding coefficient vector; training auxiliary decision fusion dictionaries for different types of features on the basis of the feature dictionaries, and performing classification judgment on the coding coefficient vectors calculated from the different types of features on the basis of sparse representation to obtain judgment results of the various types of features; obtaining a final identification result in a voting mode. The method can effectively overcome the influence of face, illumination, shielding and other changes on expression recognition.

Description

technical field [0001] The invention belongs to the technical field of facial expression recognition, and more specifically relates to a method for recognizing facial expressions based on a sparse representation-based double dictionary and multi-feature fusion decision-making. Background technique [0002] Facial expression recognition technology has strong application prospects in human-computer interaction, online education, intelligent driving and other fields. In actual use, facial expression recognition is easily affected by illumination, noise, and occlusion. In order to overcome the influence of these factors, the recognition algorithm framework based on sparse representation theory has been widely used. [0003] At present, the most important feature that affects the accuracy of facial expression recognition based on sparse representation theory is intra-class variation. For facial expression recognition, the feature differences between different types of expressions...

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06K9/00G06K9/62
Inventor 欧阳琰徐廷新邵银波鲁力黄晓斌石斌斌唐瑭
Owner AIR FORCE EARLY WARNING ACADEMY
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