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首页> 外文期刊>International Journal of Pattern Recognition and Artificial Intelligence >Scene Matching for Infrared and Visible Images with Compressive Sensing SIFT Feature Representation in Bandelet Domain
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Scene Matching for Infrared and Visible Images with Compressive Sensing SIFT Feature Representation in Bandelet Domain

机译:用于红外和可见图像的场景与Bandelet域中的压缩传感SIFT特征表示

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摘要

Aimed at scene matching problem for taking infrared image as the actual data and the visible image as the referenced data, a multi-resolution matching algorithm which fuses compressive sensing Scale Invariant Feature Transform (SIFT) feature is presented based on Bandelet transform. Two kinds of images are separately transformed into Bandelet domain to compress the feature search space of scene matching based on the best sparse representation of natural images by Bandelet transform. On the basis of adaptive Bayes threshold denoising for infrared image, the concept of sparse feature representation of compressive sensing theory is introduced into SIFT algorithm. For low-frequency image in Bandelet domain, high-dimensional SIFT key point feature description vector is projected on compressive sensing random measurement matrix to achieve dimensionality reduction. Then, the improved Genetic Algorithm (GA) to overcome premature phenomena is used as the search strategy, and the L-1 distance measure of SIFT feature vectors of compressive sensing for two kinds of images is applied to the search similarity criterion to match low-frequency image of high scale in Bandelet domain. The matching result is used as the guidance of the matching process for low-frequency image of low scale, and the matching result of full-resolution image is obtained iteratively. Experimental results show that the proposed method has not only high matching accuracy and fast matching speed, but also better robustness in comparison with some classic matching algorithms, which can resist the geometric distortion of rotation for actual image.
机译:旨在将红外图像作为实际数据和可见图像作为所引用的数据的场景匹配问题,基于Bandelet变换呈现了一种多分析匹配算法,其呈现了保留压缩感测尺度不变特征变换(SIFT)特征。两种图像被分别转换成带状域,基于Bandelet变换的最佳自然图像的最佳稀疏表示压缩场景匹配的特征搜索空间。基于自适应贝叶斯阈值去噪对红外图像,引入了压缩传感理论的稀疏特征表示的概念,以SIFT算法引入。对于Bandelet域中的低频图像,高维SIFT键点特征描述向量被投影在压缩感测随机测量矩阵上以实现维数减少。然后,将改进的遗传算法(GA)克服过早现象用作搜索策略,并且将两种图像的压缩感传感的SIFT特征向量的L-1距离测量应用于搜索相似标准以匹配低 - Bandelet域中大规模的频率图像。匹配结果用作低频率低频图像的匹配过程的指导,并且迭代地获得全分辨率图像的匹配结果。实验结果表明,该方法不仅具有高匹配的精度和快速匹配的速度,而且与一些经典匹配算法相比,这也能抵抗实际图像的旋转几何失真的更好的鲁棒性。

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