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Morphologically Invariant Matching of Structures with the Complete Rank Transform

机译:具有完全秩变换的结构的形态学不变匹配

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Invariances are one of the key concepts to render computer vision algorithms robust against severe illumination changes. However, there is no free lunch: With any invariance comes an unavoidable loss of information. The goal of our paper is to introduce two novel descriptors which minimise this loss: the complete rank transform and the complete census transform. They are invariant under monotonically increasing intensity rescalings, while containing a maximum possible amount of information. To analyse our descriptors, we embed them as constancy assumptions into a variational framework for optic flow computation. As a suitable regularisation term, we choose total generalised variation that favours piecewise affine solutions. Our experiments focus on the KITTI benchmark where robustness w.r.t. illumination changes is one of the main issues. The results demonstrate that our descriptors yield state-of-the-art accuracy.
机译:不变性是使计算机视觉算法对于严重的光照变化具有鲁棒性的关键概念之一。但是,这里没有免费的午餐:任何不变性都会不可避免地导致信息丢失。我们本文的目标是引入两个新颖的描述符,以最大程度地减少这种损失:完整秩变换和完整普查变换。它们在单调递增的强度重缩放下是不变的,同时包含尽可能多的信息。为了分析描述符,我们将它们作为不变性假设嵌入到用于光流计算的变分框架中。作为合适的正则化术语,我们选择有利于分段仿射解的总广义变化。我们的实验着重于KITTI基准测试,该基准测试的鲁棒性为光照变化是主要问题之一。结果表明,我们的描述符产生了最新的准确性。

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