Human face emotion identifying method based on Bayes fusion sparse representation classifier

A technology of facial expression recognition and sparse representation, which is applied in the field of pattern recognition, can solve the problem of different contributions of facial features and other parts to the recognition degree, achieve high recognition rate, simple practice, and improve accuracy

Active Publication Date: 2015-12-16
SOUTH CHINA UNIV OF TECH
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  • Application Information

AI Technical Summary

Problems solved by technology

However, the current integration is mostly feature-based integration, and it has not noticed that the contribution of facial features and other parts to the recognition degree is not the same in the process of facial emotion recognition.

Method used

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  • Human face emotion identifying method based on Bayes fusion sparse representation classifier
  • Human face emotion identifying method based on Bayes fusion sparse representation classifier
  • Human face emotion identifying method based on Bayes fusion sparse representation classifier

Examples

Experimental program
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Embodiment

[0024] Such as figure 1 As shown, the face emotion recognition method based on Bayesian fusion sparse representation classifier, including training part and testing part:

[0025] Include the following steps in the training section:

[0026] The first step: preprocessing. Such as Figure 2a and Figure 2b As shown, the face image is detected by the HAAR cascade classifier and the background area is removed. Normalize the image of the expression area to a grayscale image and normalize it to a size of 64*64, and use histogram equalization to process the image to reduce the influence from the light.

[0027] Step 2: Use the pre-trained ASM algorithm to identify the facial features of the facial expression image, and divide the facial expression image into four parts according to the distribution of facial features according to the hints of the ASM algorithm marking points, corresponding to the forehead, eyes, nose and mouth.

[0028] Step 3: Send the segmented sub-images to...

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Abstract

The invention discloses a human face emotion identifying method. The method includes pretreatment, image division, feature extraction, classification and classification result fusion of human face expression pictures. The method is characterized in that a complete human face expression picture is divided into four sub images (corresponding to the forehead, the eyes, the nose and the mouth) according to the distribution of the five sense organs; a sparse representation classifier is utilized for classifying the sub pictures and the original picture so as to obtain five possible classification results; finally the weighing Bayes fusion decision theory is utilized for adjusting the weight distribution of the five sense organs and the similarity and difference between expressions are both taken into consideration. The method has advantages of being simple to implement, good in noise prevention robustness and being capable of handling complicated human face expression identification well and improving human face expression identification accuracy and the like.

Description

technical field [0001] The invention relates to a pattern recognition technology, in particular to a human face emotion recognition method based on a Bayesian fusion sparse representation classifier. Background technique [0002] As human-computer interaction becomes the craze of the new century, facial emotion recognition is also playing an increasingly important role. Many electronic devices now have a need to improve the ability to understand human emotions. For example: if a nursing robot has the ability to continuously monitor the patient's emotional state, it can give the patient appropriate care and quickly respond to critical situations. In addition, if the owner of the smart home is detected to express negative emotions, the smart home system can choose to play the owner's favorite music or speak positive words in response. [0003] It is precisely because of the wide application of facial emotion recognition that many methods for facial emotion recognition have b...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06K9/00
CPCG06V40/174G06V40/172G06V10/513G06F18/285G06F18/2136
Inventor 文贵华李丹扬
Owner SOUTH CHINA UNIV OF TECH
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