Local Region Expansion: A Method For Analyzing And Refining Image Matches

IMAGE PROCESSING ON LINE(2017)

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摘要
We present a novel method for locating large amounts of local matches between images, with highly accurate localization. Point matching is one of the most fundamental tasks in computer vision, extensively used in applications such as object detection, object tracking and structure from motion. The major challenge in point matching is to preserve large numbers of accurate matches between corresponding scene locations under different geometric and radiometric conditions, while keeping the number of false positives low. Recent publications have shown that applying an affine transformation model on local regions is a particularly suitable approach for point matching. Yet, affine invariant methods are not used extensively for two reasons: first, because these methods are computationally demanding; and second because the derived affine estimations have limited accuracy. In this work, we propose a novel method of region expansion that enhances region matches detected by any state-of-the-art method. The method is based on accurate estimation of affine transformations, which are used to predict matching locations beyond initially detected matches. We use the improved estimations of affine transformations to locally verify tentative matches in an efficient way. We systematically reject false matches, while improving the localization of correct matches that are usually rejected by state-of-the-art methods.Source CodeThe source code and documentation are available from the web page of this article(1). The code is mainly a Matlab code that requires some Matlab toolboxes detailed in the ReadMe. txt file attached to the source code. Specific instructions on how to run the code, including some other dependencies, are also found in the ReadMe. txt file.
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关键词
local matching, affine transformation, outlier rejection, registration
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