Treelet curvelet domain denoising- based method for change detection of remote sensing image

A remote sensing image and change detection technology, which is applied in the field of image processing, can solve the problems that the edge information of the changed area cannot be well maintained, affects the detection accuracy of remote sensing image changes, and only considers low-frequency information, etc., to overcome the unsatisfactory maintenance, The effect of improving detection accuracy and overcoming false transformation information

Inactive Publication Date: 2012-02-22
XIDIAN UNIV
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Problems solved by technology

Although this method can perform further type analysis on the change region class, and obtain the change region weakening class and the change region enhancement class, there is still a shortcoming that this method only considers the low frequency information of the image when performing reliable scale feature level fusion , so the edge information of the changing area cannot be well maintained
In addition, because the method uses the EM algorithm for classification, there are more pseudo-change information in the detection results, which affects the accuracy of remote sensing image change detection.

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  • Treelet curvelet domain denoising- based method for change detection of remote sensing image
  • Treelet curvelet domain denoising- based method for change detection of remote sensing image
  • Treelet curvelet domain denoising- based method for change detection of remote sensing image

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Embodiment Construction

[0048] Attached below figure 1 The steps of the present invention are further described in detail.

[0049] Step 1, read in two remote sensing images acquired at different times in the same area.

[0050] Step 2, median filtering.

[0051]2a) Determine the square window: select a remote sensing image in step 1, take a certain pixel point in the image as the center, and select a square window of Nu×Nu, where Nu is an odd number, and in the embodiment of the present invention, select one 3×3 square window.

[0052] 2b) Determine the filter value: Arrange the gray values ​​of all pixels in the square window in descending order to form a gray sequence, and select the gray value in the middle of the gray sequence as the filter value.

[0053] 2c) Filtering: replace the grayscale value of the pixel in step 2a) with the filtered value.

[0054] 2d) Step 2a) to step 2c) are repeated until all pixels in the image are processed.

[0055] 2e) According to step 2a) to step 2d), anoth...

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Abstract

The invention discloses a Treelet curvelet domain denoising- based method for change detection of a remote sensing image. The method comprises the following steps: (1), reading data; (2), carrying out median filtering; (3), constructing a logarithm difference image; (4), constructing an absolute value difference image; (5), carrying out fast discrete curvelet decomposition; (6), carrying out classification on curvelet transform coefficients; (7), assigning all the curvelet transform coefficients of a Fine scale layer a value of zero ; (8), carrying out denoising on a Detail scale layer; (9), carrying out curvelet transform; (10), calculating a change proportion threshold; (11), carrying out classification; and (12) obtaining a change detection result graph. According to the invention, themethod has good robustness on noises; marginal information of a change area can be well maintained and fake change information is reduced; and the method has a high detection precision; moreover, themethod can be applied to fields including disaster monitoring, forest coverage rate assessment and city planning and the like.

Description

technical field [0001] The invention belongs to the technical field of image processing, and further relates to a remote sensing image change detection method based on Treelet curvelet domain denoising. This method can be applied to disaster monitoring and assessment in natural disasters, forest coverage monitoring and assessment, urban planning and other fields. Background technique [0002] Change detection is the process of identifying differences in state by observing an object or phenomenon at different times. With the development of remote sensing technology and information technology, remote sensing image change detection has become an important research direction of remote sensing image analysis. [0003] Remote sensing image change detection methods can be divided into two categories: first classification and then comparison method and first comparison and then classification method. The advantage of the method of classification first and then comparison is that i...

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06T7/00G06T5/00
Inventor 王桂婷焦李成万义萍公茂果钟桦张小华田小林侯彪王爽
Owner XIDIAN UNIV
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