Robust multi-sensor image alignment

M. Irani, P. Anandan
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引用次数: 267

Abstract

This paper presents a method for alignment of images acquired by sensors of different modalities (e.g., EO and IR). The paper has two main contributions: (i) It identifies an appropriate image representation, for multi-sensor alignment, i.e., a representation which emphasizes the common information between the two multi-sensor images, suppresses the non-common information, and is adequate for coarse-to-fine processing. (ii) It presents a new alignment technique which applies global estimation to any choice of a local similarity measure. In particular, it is shown that when this registration technique is applied to the chosen image representation with a local normalized-correlation similarity measure, it provides a new multi-sensor alignment algorithm which is robust to outliers, and applies to a wide variety of globally complex brightness transformations between the two images. Our proposed image representation does not rely on sparse image features (e.g., edge, contour, or point features). It is continuous and does not eliminate the detailed variations within local image regions. Our method naturally extends to coarse-to-fine processing, and applies even in situations when the multi-sensor signals are globally characterized by low statistical correlation.
鲁棒多传感器图像对齐
本文提出了一种由不同模态(例如,EO和IR)传感器获得的图像对齐方法。本文有两个主要贡献:(i)它确定了一种合适的图像表示,用于多传感器校准,即强调两个多传感器图像之间的共同信息,抑制非共同信息,并且足以进行粗到精处理的表示。(ii)提出了一种新的对齐技术,将全局估计应用于任何局部相似性度量的选择。特别是,当将该配准技术应用于具有局部归一化相关相似性度量的选定图像表示时,它提供了一种新的多传感器对准算法,该算法对异常值具有鲁棒性,并且适用于两幅图像之间的各种全局复杂亮度变换。我们提出的图像表示不依赖于稀疏图像特征(例如,边缘、轮廓或点特征)。它是连续的,不能消除局部图像区域内的细节变化。我们的方法自然地扩展到粗到精的处理,甚至适用于多传感器信号具有低统计相关性的全局特征的情况。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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