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A multi-threshold approach and a realistic error measure for vanishing point detection in natural landscapes

机译:用于自然景观消失点检测的多阈值方法和实际误差度量

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摘要

Vanishing Point (VP) detection is a computer vision task that can be useful in many different fields of application. In this work, we present a VP detection algorithm for natural landscape images based on an multi-threshold edge extraction process that combines several representations of an image, and on novel clustering and cluster refinement procedures. Our algorithm identifies a VP candidate in images with single-point perspective and improves detection results on two datasets that have already been tested for this task. Furthermore, we study how VP detection results have been reported in literature, pointing out the main drawbacks of previous approaches. To overcome these drawbacks, we present a novel error measure that is based on a probabilistic consistency measure between edges and VP hypothesis, and that can be tuned to vary the strictness on the results. Our reasoning on how our measure is more correct is supported by an intuitive analysis, simulations and an experimental validation.
机译:消失点(VP)检测是一项计算机视觉任务,可以在许多不同的应用领域中使用。在这项工作中,我们提出了一种自然景观图像的VP检测算法,该算法基于结合了图像的几种表示形式的多阈值边缘提取过程,以及新颖的聚类和聚类优化程序。我们的算法可识别具有单点视角的图像中的VP候选者,并改善已经针对此任务进行过测试的两个数据集的检测结果。此外,我们研究了文献中如何报告VP检测结果,指出了先前方法的主要缺点。为了克服这些缺点,我们提出了一种新颖的误差度量,该误差度量基于边和VP假设之间的概率一致性度量,并且可以进行调整以改变结果的严格性。直观的分析,模拟和实验验证支持了我们关于如何更正确地进行测量的推理。

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