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首页> 外文期刊>IEEE Transactions on Signal Processing >Fundamental Limits in Multi-Image Alignment
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Fundamental Limits in Multi-Image Alignment

机译:多图像对齐的基本限制

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The performance of multiimage alignment, bringing different images into one coordinate system, is critical in many applications with varied signal-to-noise ratio (SNR) conditions. A great amount of effort is being invested into developing methods to solve this problem. Several important questions thus arise, including: Which are the fundamental limits in multiimage alignment performance? Does having access to more images improve the alignment? Theoretical bounds provide a fundamental benchmark to compare methods and can help establish whether improvements can be made. In this work, we tackle the problem of finding the performance limits in image registration when multiple shifted and noisy observations are available. We derive and analyze the Cramér-Rao and Ziv-Zakai lower bounds under different statistical models for the underlying image. We show the existence of different behavior zones depending on the difficulty level of the problem, given by the SNR conditions of the input images. The analysis we present here brings further insight into the fundamental limitations of the multiimage alignment problem.
机译:在具有变化的信噪比(SNR)条件的许多应用中,将不同图像放入一个坐标系的多图像对齐性能至关重要。为了解决这个问题,人们投入了大量的精力来开发方法。因此出现了几个重要的问题,包括:多图像对齐性能的基本限制是什么?是否可以访问更多图像以改善对齐方式?理论界限为比较方法提供了基本基准,并且可以帮助确定是否可以进行改进。在这项工作中,我们解决了在出现多个偏移和嘈杂的观测结果时在图像配准中发现性能极限的问题。我们得出并分析了针对基础图像的不同统计模型下的Cramér-Rao和Ziv-Zakai下界。根据输入图像的SNR条件,我们根据问题的难度级别显示了不同的行为区域。我们在此进行的分析使您进一步了解多图像对齐问题的基本局限性。

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