红外技术, 2015, 37 (5): 418, 网络出版: 2015-06-11  

基于ST与量子理论模型的红外与可见光图像融合

Fusion for Infrared and Visible Light Images Based on Shearlet Transform and Quantum Theory Model
作者单位
信阳农林学院计算机系, 河南 信阳 464000
摘要
针对传统的红外与可见光图像融合方法计算复杂度高、运行机制过于机械的问题,提出一种基于剪切波变换(ST)与量子理论(QT)模型的红外与可见光图像融合方法.该方法利用ST 优越的图像信息捕捉性能对源图像进行多尺度多方向分解;其次,采用QT 理论针对低频子带图像和一系列高频子带图像进行融合;最后,采取ST 反变换获得最终融合结果图像.
Abstract
In order to settle the drawbacks including high computational complexities and the unreasonable mechanism of traditional fusion methods for infrared and visible light images,a novel fusion technique for infrared and visible light images based on shearlet transform(ST) and quantum theory(QT) model is proposed in this paper.Due to the better competence of image information capturing,ST is utilized to conduct the multi-scale and multi-directional decomposition of source images.In addition,the fusion of low-frequency sub-images and a series of high-frequency ones is conducted by using QT.Finally,the final fused image can be obtained by using inverse ST.
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张耀军, 吴桂玲, 栗磊. 基于ST与量子理论模型的红外与可见光图像融合[J]. 红外技术, 2015, 37(5): 418. ZHANG Yao-jun, WU Gui-ling, LI Lei. Fusion for Infrared and Visible Light Images Based on Shearlet Transform and Quantum Theory Model[J]. Infrared Technology, 2015, 37(5): 418.

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