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FEATURE MATCHING ENHANCEMENT OF UAV IMAGES USING GEOMETRIC CONSTRAINTS

机译:使用几何约束增强无人机图像的特征匹配

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Preliminary matching of image features is based on the distance between their descriptors. Matches are further filtered using RANSAC, or a similar method that fits the matches to a model; usually the fundamental matrix and rejects matches not belonging to that model. There are a few issues with this scheme. First, mismatches are no longer considered after RANSAC rejection. Second, RANSAC might fail to detect an accurate model if the number of outliers is significant. Third, a fundamental matrix model could be degenerate even if the matches are all inliers. To address these issues, a new method is proposed that relies on the prior knowledge of the images’ geometry, which can be obtained from the orientation sensors or a set of initial matches. Using a set of initial matches, a fundamental matrix and a global homography can be estimated. These two entities are then used with a detect-and-match strategy to gain more accurate matches. Features are detected in one image, then the locations of their correspondences in the other image are predicted using the epipolar constraints and the global homography. The feature correspondences are then corrected with template matching. Since global homography is only valid with a plane-to-plane mapping, discrepancy vectors are introduced to represent an alternative to local homographies. The method was tested on Unmanned Aerial Vehicle (UAV) images, where the images are usually taken successively, and differences in scale and orientation are not an issue. The method promises to find a well-distributed set of matches over the scene structure, especially with scenes of multiple depths. Furthermore; the number of outliers is reduced, encouraging to use a least square adjustment instead of RANSAC, to fit a non-degenerate model.
机译:图像特征的初步匹配基于其描述符之间的距离。使用RANSAC或类似的将模型匹配到模型的方法进一步过滤匹配。通常是基本矩阵,并且拒绝不属于该模型的匹配项。此方案存在一些问题。首先,在RANSAC拒绝之后不再考虑不匹配。其次,如果异常值数量很大,RANSAC可能无法检测到准确的模型。第三,即使匹配全部是内在的,基本矩阵模型也可能会退化。为了解决这些问题,提出了一种新方法,该方法依赖于图像几何形状的先验知识,该知识可以从方向传感器或一组初始匹配中获得。使用一组初始匹配,可以估计基本矩阵和全局单应性。然后,将这两个实体与“检测并匹配”策略一起使用,以获取更准确的匹配。在一张图像中检测到特征,然后使用对极约束和全局单应性预测它们在另一张图像中的对应位置。然后用模板匹配来校正特征对应。由于全局单应性仅在平面到平面映射中有效,因此引入了差异矢量来表示局部单应性的替代方法。该方法在无人飞行器(UAV)图像上进行了测试,该图像通常是连续拍摄的,并且比例和方向的差异不是问题。该方法有望在场景结构上找到一组分布良好的匹配项,尤其是对于多个深度的场景。此外;减少了异常值,鼓励使用最小二乘平差代替RANSAC来拟合非退化模型。

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