A Fast Mutual Information Image Matching Method Based on Statistical Correlation

A technology of statistical correlation and matching methods, applied in computing, computer components, instruments, etc., can solve problems such as the impact of matching accuracy, high initial point requirements, loss of image grayscale information, etc., to achieve improved real-time performance, good speed-up effect, Effect of Calculation Reduction

Active Publication Date: 2019-12-10
XIAN PEIHUA UNIV
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  • Description
  • Claims
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Problems solved by technology

Among the above methods, the grayscale compression method and the feature extraction method will lose part of the grayscale information of the image and affect the matching accuracy, while the particle swarm optimization method is easy to fall into local extremum and affect the matching accuracy. The Powell method has higher requirements for the initial point. The selection of the initial point will directly affect the final search for the optimal value
In short, most of the traditional fast mutual information matching algorithms speed up the matching speed by reducing the grayscale or reducing the number of pixels participating in the mutual information measurement calculation, which will affect the matching accuracy to a certain extent.

Method used

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  • A Fast Mutual Information Image Matching Method Based on Statistical Correlation
  • A Fast Mutual Information Image Matching Method Based on Statistical Correlation
  • A Fast Mutual Information Image Matching Method Based on Statistical Correlation

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Embodiment 1

[0100] Embodiment 1: Apply the ergodic mutual information matching method of the present invention and the traditional ergodic mutual information matching method to the matching of visible light and SAR images, such as image 3 shown, where image 3 (a) is the visible light reference map I, the size is 422*358; image 3 (b) is the SAR measured image A1, the size is 150*150, image 3 (c) is the SAR measured image A2, the size is 100*90, image 3 (d) is the matching and positioning result of the measured map on the reference map; Table 1 is the statistical result of part of the calculation amount of position when the column direction is matched in this embodiment, and Table 2 is the statistical result of part of the position calculation when the direction is matched in this embodiment. Table 3 shows the total matching time in this embodiment.

[0101] Table 1. Statistical results of partial position calculations in Example 1 when matching in the column direction

[0102] ...

Embodiment 2

[0108] Embodiment 2: Apply the ergodic mutual information matching method of the present invention and the traditional ergodic mutual information matching method to the matching of visible light and infrared images, such as Figure 4 shown, where Figure 4 (a) is the visible light reference map I, the size is 473*734; Figure 4 (b) is the infrared measured image A1, the size is 80*80, Figure 4 (c) is the infrared measured image A2, the size is 120*120, Figure 4 (d) is the matching positioning result of the actual measurement map on the reference map; Table 4 is the statistical result of part of the calculation amount of position when the column direction is matched in this embodiment, and Table 5 is the statistical result of the part of the position calculation when the direction is matched in this embodiment. Table 6 shows the matching results and matching time in this embodiment.

[0109] Table 4. Statistical results of partial position calculations in Example 2 when ma...

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Abstract

The invention discloses a fast mutual information image matching method based on statistical correlation. First, the traditional method is used to calculate the respective histograms and entropy of the measured image and the first position reference subimage, and the joint histogram, joint entropy, and mutual information of the two images. Then, during the traversal search process, using the correlation between adjacent reference subgraphs, the histogram, entropy and joint entropy of the previous position reference subgraph are used as the benchmark, and the current value is calculated by the difference method The histogram, entropy and the joint entropy of the position reference subgraph and the actual measurement map, and calculate the mutual information; finally, find out the position with the maximum mutual information value in all search positions as the final matching and positioning result; In addition to a position reference sub-graph, the histogram, entropy and joint entropy of other position sub-graphs are all sequentially obtained based on the difference method, which improves the speed of mutual information matching while ensuring the matching accuracy; in addition, it can also be compared with existing methods. Combine to speed up matching in multiple ways.

Description

technical field [0001] The invention belongs to the technical fields of image matching and image positioning, and in particular relates to a fast mutual information image matching method based on statistical correlation. Background technique [0002] Image matching technology is a new technology developed on the basis of aerospace technology, satellite application technology, sensor technology, computer technology, image processing and pattern recognition. It has important application value in military fields such as terminal guidance, image target search and tracking. At present, matching technology is widely used in industrial control, medical image processing, remote sensing image processing, cartography, target recognition and other fields. In applications such as vision-based aircraft navigation and guidance, remote sensing satellite disaster monitoring and environmental monitoring, and medical image analysis, it is often necessary to match heterogeneous images acquire...

Claims

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Application Information

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Patent Type & Authority Patents(China)
IPC IPC(8): G06K9/62
CPCG06V10/758G06F18/22
Inventor 符艳军田孝华张伟刘小虎
Owner XIAN PEIHUA UNIV
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