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Multi-source image fusion method based on enhanced learning

A technology of reinforcement learning and fusion method, applied in the field of multi-source image fusion based on reinforcement learning, can solve the problems of poor signal reconstruction stability, different fusion precision, reliability and accuracy need to be improved, etc., to improve reliability. and accuracy, resolving image quality degradation, and stabilizing the fusion and reconstruction process

Active Publication Date: 2018-08-24
中国航天电子技术研究院
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AI Technical Summary

Problems solved by technology

[0006] 1) In UAV aerial reconnaissance, the images acquired by multi-image sensors are susceptible to external interference such as atmosphere, light and shaking, resulting in a decrease in the quality of the acquired images;
[0007] 2) Different fusion methods have different emphases on image data, and the accuracy of fusion is also different, and the fusion results may not obtain ideal results;
[0008] 3) In the process of image decomposition, it is easy to lose information or generate redundant information, and the signal reconstruction stability in the fusion process is poor;
[0009] In the process of image fusion and reconstruction, the reliability and accuracy of the weighted weight estimation of fusion coefficients need to be improved

Method used

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Embodiment 1

[0040]The invention adopts the combination of enhanced learning and wavelet transform to complete the fusion of multi-source images of drones, and the images include visible light images, infrared images, SAR images and multi-spectral images acquired by drones. Among them, image enhancement technology is firstly used to enhance the multi-source image, and then the wavelet transform technology is used to decompose the multi-source image, and the Q learning algorithm in the reinforcement learning is used to learn the weights of the decomposed high and low frequency coefficients, and finally the high and low frequency The coefficients are weighted and reconstructed to obtain the fused image. The overall process of the algorithm is as follows: figure 1 shown.

[0041] The algorithm can be summarized in the following steps:

[0042] 1) Enhance multi-source images, the processing process includes dehazing processing and Gaussian filter denoising processing;

[0043] 2) Low-pass fi...

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Abstract

The invention relates to the field of image processing, and specifically relates to a multi-source image fusion method based on enhanced learning. The method comprises the steps: decomposing a multi-source image to obtain a high-frequency coefficient signal and a low-frequency coefficient signal, and performing weighted reconstruction of the high-frequency coefficient signal and the low-frequencycoefficient signal to obtain a fusion image. The method adopts a Q learning algorithm in enhanced learning for the training of the weights of the high-frequency coefficient signal and the low-frequency coefficient signal, selects a weight which enables the fusion evaluation criteria to be optimal for the weighted fusion, and obtains the fusion coefficient signal. The fusion image is reconstructedto obtain the fusion image. Based on the Q learning algorithm, the method achieves the training of the weights of the high-frequency coefficient signal and the low-frequency coefficient signal obtained through the decomposition of the multi-source image, and improves the reliability and accuracy of weight estimation.

Description

technical field [0001] The invention relates to the field of image processing, in particular to a multi-source image fusion method based on reinforcement learning. Background technique [0002] In recent years, military drones have been widely used in combat reconnaissance and precision strikes due to their unique advantages. With the development of military high-tech, the scope of the UAV battlefield has expanded to land, sea, air and electromagnetic and other multi-dimensional spaces. The battlefield environment has become increasingly complex. More and more attention has been paid to the multi-source image fusion technology that integrates the information of multiple image sensors to obtain a comprehensive and detailed description of the same target or scene. [0003] Multi-source image fusion technology is an important content of UAV intelligence processing technology. Its core idea is to integrate multi-source images obtained by multiple sensors under different conditi...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06T5/50G06K9/62
CPCG06T5/50G06T2207/20221G06T2207/20064G06T2207/10004G06T2207/10048G06T2207/10032G06T2207/20024G06F18/232
Inventor 吴国强包文龙尹中义黄坤李晓明赵甲
Owner 中国航天电子技术研究院
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