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Robust Fitting in Computer Vision: Easy or Hard?

机译:稳固地适应计算机视觉:容易还是困难?

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Robust model fitting plays a vital role in computer vision, and research into algorithms for robust fitting continues to be active. Arguably the most popular paradigm for robust fitting in computer vision is consensus maximisation, which strives to find the model parameters that maximise the number of inliers. Despite the significant developments in algorithms for consensus maximisation, there has been a lack of fundamental analysis of the problem in the computer vision literature. In particular, whether consensus maximisation is "tractable" remains a question that has not been rigorously dealt with, thus making it difficult to assess and compare the performance of proposed algorithms, relative to what is theoretically achievable. To shed light on these issues, we present several computational hardness results for consensus maximisation. Our results underline the fundamental intractability of the problem, and resolve several ambiguities existing in the literature.
机译:稳健模型拟合在计算机视觉中起着至关重要的作用,并且对稳健拟合算法的研究仍然很活跃。可以说,在计算机视觉中进行鲁棒拟合的最流行的范例是共识最大化,该共识努力寻找能够最大化内线数的模型参数。尽管在最大化共识算法方面取得了重大进展,但是在计算机视觉文献中仍缺乏对该问题的基本分析。特别是,共识最大化是否“易于处理”仍然是一个尚未严格解决的问题,因此相对于理论上可实现的问题,很难评估和比较所提出算法的性能。为了阐明这些问题,我们提出了多个计算硬度结果,以实现共识最大化。我们的结果强调了该问题的根本难点,并解决了文献中存在的一些歧义。

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