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Low-resolution face image rebuilding method based on super-resolution rebuilding technology

A technology for super-resolution reconstruction and low-resolution images, which is applied in the field of image processing and can solve the problems of low similarity of local geometric structures, poor super-resolution image reconstruction effect, and registration of super-low-resolution face images.

Active Publication Date: 2013-03-13
TSINGHUA UNIV
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  • Summary
  • Abstract
  • Description
  • Claims
  • Application Information

AI Technical Summary

Problems solved by technology

Although this method can reconstruct ultra-low resolution images, it directly performs manifold learning in the time domain, the similarity of local geometric structures is not high, and the popular learning effect is poor.
In addition, the reconstruction process is greatly affected by illumination and noise, and the ultra-low resolution face image is not registered, so the super-resolution image reconstruction effect in the actual scene is poor.

Method used

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  • Low-resolution face image rebuilding method based on super-resolution rebuilding technology
  • Low-resolution face image rebuilding method based on super-resolution rebuilding technology
  • Low-resolution face image rebuilding method based on super-resolution rebuilding technology

Examples

Experimental program
Comparison scheme
Effect test

Embodiment

[0190] 1) Normalize the original image based on three-point positioning of the face to obtain a normalized face image to be reconstructed

[0191] 1.1) Crop the original image containing a low-resolution face image, cut out a rectangular image area containing a low-resolution face image, and obtain a low-resolution face image, such as figure 2 As shown, the coordinates of the upper left, lower left, upper right, and lower right vertices of the area are: (898,526), ​​(898,556), (924,526), ​​(924,556);

[0192] 1.2) The low-resolution face image obtained in 1.1) is enlarged proportionally, the magnification is 6×6, and the height of the enlarged image is L=180, such as image 3 shown;

[0193] 1.3) Normalize the enlarged low-resolution face image using the normalization method based on the three-point positioning of the face to obtain a face image of a standard size to be reconstructed such as Figure 5 shown;

[0194] 1.31) Determine the coordinates (63, 104) of a point A o...

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Abstract

The invention relates to a low-resolution face image rebuilding method based on a super-resolution rebuilding technology and belongs to the field of image processing. The rebuilding method comprises enabling an original image to undergo normalization based on face three-point positioning, and obtaining a to-be-rebuilt normalization face image; then denoising a to-be-rebuilt low-resolution image by generating a training set, determining a learning sample by ambiguity estimation, and obtaining a finally rebuilt high-resolution image by locally linear embedding (LLE) learning. The adopted face image normalization method not only is accurate, but also is consistent with a training set normalization method, and improves accuracy of the low-resolution face image. The super-resolution face image rebuilding method based on low frequency components is adopted to manufacture large-size rebuilt image of the low-resolution face image, and rebuilding of the low-resolution face image is achieved well.

Description

technical field [0001] The invention belongs to the field of image processing, in particular to a method for making low-resolution human face reconstruction images. Background technique [0002] At present, video surveillance has developed rapidly and played an increasingly important role in security work. In the images of video surveillance, many portrait information related to the case were recorded. However, since the face images of the people involved in the video surveillance are often very small, it is impossible to distinguish the people involved, which has caused many cases to run into difficulties. The essential problem of this small face image is the problem of low resolution of the face. The reconstruction technology of low-resolution face images is a key technology urgently needed by the public security department to handle cases. The human face image referred to in the present invention is limited to the front face image (the same below). Including the part ...

Claims

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Application Information

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IPC IPC(8): G06T5/50G06K9/66
Inventor 苏光大任小龙苏楠
Owner TSINGHUA UNIV
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