SAR (synthetic aperture radar) image change detection method based on high-order neighborhood TMF (triplet Markov random field) model

An image change detection, high-order neighborhood technology, applied in the field of image processing, can solve the non-stationary characteristics of SAR images that cannot be accurately reflected, the four-neighbor system cannot suppress the influence of noise, and cannot well distinguish homogeneous areas from non-stationary areas. Homogeneous regions, etc.

Inactive Publication Date: 2015-06-03
XIDIAN UNIV
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Problems solved by technology

However, the study found that the auxiliary field U in this paper cannot accurately reflect the non-stationary characteristics of SAR images, and cannot distinguish homogeneous regions from non-homogeneous regions.
In addition, due to the existence of speckle noise in SAR images, when faced with SAR images with high noise intensity, the four-neighborhood system cannot suppress the influence of noise very well, and there are still high numbers of false detections in the obtained results.

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  • SAR (synthetic aperture radar) image change detection method based on high-order neighborhood TMF (triplet Markov random field) model
  • SAR (synthetic aperture radar) image change detection method based on high-order neighborhood TMF (triplet Markov random field) model
  • SAR (synthetic aperture radar) image change detection method based on high-order neighborhood TMF (triplet Markov random field) model

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[0034] The present invention will be further described below in conjunction with accompanying drawing:

[0035] refer to figure 1 , the implementation steps of the present invention are as follows:

[0036] Step 1, input the registered two-temporal image I of size M×N 0 and I 1 , the registration accuracy is within one pixel.

[0037] Step 2, use the logarithmic ratio method to compare the two-temporal image I 0 and I 1 Process and construct difference image: y s =|log(I 0s / I 1s )|, where, s represents the position of the pixel, I 0s and I 1s Respectively represent the two temporal phase images I 0 and I 1 value at s, y s Indicates the value of the difference image Y at s, 0≤s≤M×N.

[0038] Step 3, using the threshold method to divide the pixels in the difference image Y into two types: non-changing part and changing part.

[0039]The threshold method is a mature existing method, including the OSTU method, the Kittler minimum error classification method, etc. In...

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Abstract

The invention discloses an SAR (synthetic aperture radar) image change detection method based on a high-order neighborhood triplet Markov random field model, and mainly solves problems of high false detection amount and low overall precision of an existing method. The SAR image change detection method comprises the following steps: 1, inputting two time phase SAR images and generating a differential image; 2, initializing a labeling field X; 3, initializing a likelihood parameter; 4, performing definition on the initialized labeling field X by adopting a 3*3 neighborhood and initializing an auxiliary field U; 5, constructing a priori potential energy function comprising a homogeneous region, a heterogeneous region and a U field part by adopting a 5*5 high-order neighborhood; 6, updating the labeling field X and the auxiliary field U; 7, updating the likelihood parameter according to the updated labeling field X; 8, performing iterative updating on the labeling field X and the auxiliary field U and obtaining a final change detection result. Compared with the prior art, the SAR image change detection method reduces the false detection amount, improves the overall detection precision, enhances the noise robustness, and can be used for SAR image recognition.

Description

technical field [0001] The invention belongs to the technical field of image processing, relates to image change detection, and can be used for monitoring and evaluating ground object state changes on SAR images. Background technique [0002] Synthetic aperture radar SAR image change detection refers to detecting the change information of the ground objects in the area by analyzing two SAR images of the same area at different times. Due to the all-weather and all-time characteristics of synthetic aperture radar SAR, SAR image change detection technology has more and more applications in fields such as agricultural and forestry exploration, environmental monitoring, disaster assessment, and resource utilization, so it has high detection accuracy SAR image change detection method become the focus of research. [0003] One of the more classic methods of SAR image change detection is based on statistical models, such as the Markov random field MRF model and the triple Markov ra...

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06T7/00G06T5/00
Inventor 吴艳张磊李明王凡张庆君张强
Owner XIDIAN UNIV
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