Low-rank multi-scale fusion-based image saliency detection method

A technology of multi-scale fusion and detection methods, applied in image enhancement, image analysis, image data processing and other directions, can solve the problems of difficulty and reliability of detection method scale selection, achieve reliable saliency detection results, and improve processing capabilities.

Inactive Publication Date: 2017-05-31
TIANJIN UNIV
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AI Technical Summary

Problems solved by technology

[0004] The purpose of the present invention is to overcome the deficiencies of the prior art, provide an image saliency detection method based on low-rank multi-scale fusion, and solve the problems of difficult scale selection and reliability in the existing detection methods

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  • Low-rank multi-scale fusion-based image saliency detection method
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  • Low-rank multi-scale fusion-based image saliency detection method

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Embodiment Construction

[0047] Embodiments of the present invention are described in further detail below in conjunction with the accompanying drawings:

[0048] An image saliency detection method based on low-rank multi-scale fusion, such as figure 1 shown, including the following steps:

[0049] Step 1. Perform single-scale saliency detection on the input image. The specific method is:

[0050] (1) Over-segment the image into multi-scale segmentation maps and perform feature extraction

[0051] For the input image, we use SLIC to segment it into superpixels and extract 122-dimensional features, including position, color, texture, such as figure 2 shown. The specific method is: we extract 40-dimensional color features, 12 steerable pyramids features in 4 directions at 3 scales, 36 Gabor features in 12 directions at 3 scales, and extract 31-dimensional features with HOG.

[0052] ⑵ significant prior treatment

[0053] Currently, some top-down methods have been used to further improve the perfo...

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Abstract

The invention relates to a low-rank multi-scale fusion-based image saliency detection method. The method is technically characterized by comprising the steps of performing single-scale saliency detection on an input image; performing multi-scale saliency fusion processing on the image subjected to the single-scale saliency detection, thereby obtaining a fused saliency map; and performing saliency detailing processing on the fused saliency map after the multi-scale saliency fusion processing to obtain a final cooperative saliency image. According to the method, a low-rank matrix recovery-based saliency detection method and a multi-scale saliency fusion method are applied to the saliency detection, and multi-scale low-rank saliency detection is generalized to cooperative saliency detection of multiple images by applying a GMM-based cooperative saliency priori to detect same or similar regions appearing in the images, so that the problem of difficulty in scale selection is solved, a more reliable saliency detection result is obtained, and the processing capability of the saliency detection is further improved.

Description

technical field [0001] The invention belongs to the technical field of computer vision detection, in particular to an image saliency detection method based on low-rank multi-scale fusion. Background technique [0002] In the field of computer vision, salient object detection methods are divided into two categories: bottom-up scene-driven models and top-down expectation-driven models. Bottom-up methods are mainly based on scene information of picture scenery, while top-down methods are determined by knowledge, expectation and purpose. Many saliency detection methods have been proposed, such as RC, CA, etc. Most of these saliency detection methods are aimed at the saliency detection of single-scale images and have achieved good results. However, these methods have a common problem that when the object is in a natural scene with small scale and high contrast, it is generally unable to detect salient objects in the picture well. For this situation, there are generally two sol...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06T7/00
CPCG06T7/0002G06T2207/20221
Inventor 冯伟孙济洲黄睿刘烨
Owner TIANJIN UNIV
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