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ULSD: Unified line segment detection across pinhole, fisheye, and spherical cameras

机译:ULSD:针孔,鱼眼和球形相机的统一线段检测

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摘要

Image line segment detection is a fundamental problem in computer vision and remote sensing. Although numerous state-of-the-art methods have shown great performance for straight line segment detection, line segment detection for distorted images without undistortion is still a challenging problem. Besides, there is a lack of a unified line segment detection framework for both distorted and undistorted images. To address these two problems, we propose a novel learning-based Unified Line Segment Detection method (i.e., ULSD) for distorted and undistorted images in this paper. Specifically, we first propose a novel equipartition point-based Bezier curve representation to model arbitrary distorted line segments. Then the line segment detection is tackled by equipartition point regression with an end-to-end trainable neural network. Consequently, the proposed ULSD is independent of camera distortion parameters and does not need any undistortion preprocessing. In the experiments, the proposed method is firstly evaluated on the pinhole, fisheye, and spherical image datasets, respectively, as well as trained and tested on the mixed dataset with differently distorted images. The experimental results on each distortion model show that the proposed ULSD is more competitive than the state-of-the-art methods for both accuracy and efficiency, especially for the results of the unified model trained on the mixed datasets, thus demonstrating the effectiveness and generality of the proposed ULSD to real-world scenarios.
机译:图像线段检测是计算机视觉和遥感的基本问题。虽然众多最先进的方法对直线段检测的表现良好,但是没有未定义的扭曲图像的线段检测仍然是一个具有挑战性的问题。此外,缺乏统一的线段检测框架,用于扭曲和未变形图像。为了解决这两个问题,我们提出了一种新的基于学习的统一线段检测方法(即,ULSD),用于本文中的扭曲和未变形图像。具体地,我们首先提出基于新的ectipartition点的Bezier曲线表示来模拟任意扭曲的线段。然后通过与端到端培训神经网络的ecipartIgent点回归来解决线段检测。因此,所提出的ULSD与相机失真参数无关,并且不需要任何未定义的预处理。在实验中,首先在针孔,鱼眼和球形图像数据集上评估所提出的方法,以及培训并在混合数据集上进行训练,并具有不同扭曲的图像。每个失真模型的实验结果表明,所提出的ULSD比准确性和效率的最先进方法更竞争,特别是对于在混合数据集上培训的统一模型的结果,从而展示了效率和效果拟议的ULSD的一般性到现实世界的情景。

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