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Automatic Homographic Registration of a Pair of Images, with A Contrario Elimination of Outliers

机译:一对图像的自动同位配准,并消除了异常值

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The RANSAC algorithm (RANdom SAmple Consensus) is a robust method to estimate parameters of a model fitting the data, in presence of outliers among the data. Its random nature is due only to complexity considerations. It iteratively extracts a random sample out of all data, of minimal size sufficient to estimate the parameters. At each such trial, the number of inliers (data that fits the model within an acceptable error threshold) is counted. In the end, the set of parameters maximizing the number of inliers is accepted.The variant proposed by Moisan and Stival consists in introducing an a contrario criterion to avoid the hard thresholds for inlier/outlier discrimination. It has three consequences: The threshold for inlier/outlier discrimination is adaptive, it does not need to be fixed. It gives a decision on the adequacy of the final model: it does not provide a wrong set of parameters if it does not have enough confidence. The procedure to draw a new sample can be amended as soon as one set of parameters is deemed meaningful: the new sample can be drawn among the inliers of this model.In this particular instantiation, we apply it to the estimation of the homography registering two images of the same scene. The homography is an 8-parameter model arising in two situations when using a pinhole camera: the scene is planar (a painting, a facade, etc.) or the viewpoint location is fixed (pure rotation around the optical center). When the homography is found, it is used to stitch the images in the coordinate frame of the second image and build a panorama. The point correspondences between images are computed by the SIFT algorithm
机译:RANSAC算法(随机抽样共识)是一种健壮的方法,可以在数据中存在异常值的情况下估算拟合数据的模型的参数。它的随机性仅是出于复杂性考虑。迭代地从所有数据中提取一个随机样本,样本的大小要足以估计参数。在每次这样的试验中,计算内线数(在可接受的误差阈值内适合模型的数据)。最后,接受了最大化内线数的参数集。Moisan和Stival提出的变体包括引入一个反向准则,以避免对内线/离群值判别的硬阈值。它具有三个结果:内在/外在区分的阈值是自适应的,不需要固定。它决定了最终模型的适当性:如果没有足够的置信度,则不会提供错误的参数集。只要认为一组参数有意义,就可以修改绘制新样本的过程:可以在模型的内部值之间绘制新样本。在此特定实例中,我们将其应用于单应性估计,即记录两个同一场景的图像。在使用针孔相机的两种情况下,单应性是一种8参数模型:场景是平面的(绘画,立面等)或视点位置是固定的(围绕光学中心的纯旋转)。找到单应性后,将其用于在第二个图像的坐标框中缝合图像并建立全景图。图像之间的点对应关系通过SIFT算法计算

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