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Connectivity-Enforcing Hough Transform for the Robust Extraction of Line Segments

机译:增强连接性的霍夫变换,可稳健提取线段

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摘要

Global voting schemes based on the Hough transform (HT) have been widely used to robustly detect lines in images. However, since the votes do not take line connectivity into account, these methods do not deal well with cluttered images. On the other hand, the so-called local methods enforce connectivity but lack robustness to deal with challenging situations that occur in many realistic scenarios, e.g., when line segments cross or when long segments are corrupted. We address the critical limitations of the HT as a line segment extractor by incorporating connectivity in the voting process. This is done by only accounting for the contributions of edge points lying in increasingly larger neighborhoods and whose position and directional information agree with potential line segments. As a result, our method, which we call segment extraction by connectivity-enforcing HT (STRAIGHT), extracts the longest connected segments in each location of the image, thus also integrating into the HT voting process the usually separate step of individual segment extraction. The usage of the Hough space mapping and a corresponding hierarchical implementation make our approach computationally feasible. We present experiments that illustrate, with synthetic and real images, how STRAIGHT succeeds in extracting complete segments in situations where current methods fail.
机译:基于霍夫变换(HT)的全局投票方案已广泛用于稳健地检测图像中的线条。但是,由于投票不考虑线路连接性,因此这些方法不能很好地处理混乱的图像。另一方面,所谓的局部方法增强了连接性,但是缺乏鲁棒性以应对在许多现实情况下发生的挑战性情况,例如,当线段交叉或长段损坏时。我们通过在投票过程中引入连通性来解决HT作为线段提取器的关键局限性。这仅通过考虑位于越来越大的邻域中且其位置和方向信息与潜在线段一致的边缘点的贡献来完成。因此,我们的方法(称为通过连通性增强HT(STRAIGHT)进行分段提取)提取图像每个位置中连接时间最长的分段,从而将通常独立的分段提取步骤集成到HT投票过程中。霍夫空间映射的使用和相应的分层实现使我们的方法在计算上可行。我们提供的实验用合成图像和真实图像说明了STRAIGHT如何在当前方法失败的情况下成功提取完整片段。

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