Vanishing Points Detection with Line Segments of Gaussian Sphere

Kei Masaoka, Irawati Nurmala Sari, Weiwei Du
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Abstract

Depth estimation using vanishing points is important in computer vision and has been widely used in various applications such as robotics and autonomous driving. A vanishing point is a point in the image where parallel lines appear to converge to a single point in 3D space. The detection of vanishing points in images plays a crucial role in estimating the depth of a scene. However, the accuracy of vanishing point detection is often affected by noisy or unconverged line segments detected by the line detectors. The problem with using line detectors is that they can produce noisy or unconverged line segments, leading to a decrease in the accuracy of vanishing point detection. Therefore, it is important to develop a method to extract accurate vanishing points from noisy line segments. This paper proposes an algorithm to detect vanishing points by projecting line segments to Gaussian sphere. The proposed method follows the steps: (1) Line segment detection by Mobile LSD [1], (2) Classifying line segments based on their angle, and (3) Projecting the classified line segments onto a Gaussian sphere and converting them into a 2D image. In the context of this transformed 2D image, it is postulated that the vanishing point corresponds to the region in which the line segments exhibit the greatest degree of overlap. In other words, the proposal does not need to compute all intersection points from line segments and recognize the vanishing points from the intersection points. The proposal can not only improves the accuracy but also reduces the time in vanishing points detection by the experiments.
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高斯球线段的消失点检测
基于消失点的深度估计在计算机视觉中非常重要,在机器人和自动驾驶等领域有着广泛的应用。消失点是图像中的一个点,其中平行线似乎在三维空间中收敛到一个点。图像中消失点的检测是估计景深的关键。然而,消失点检测的准确性经常受到线检测器检测到的有噪声或不收敛线段的影响。使用线检测器的问题是,它们可以产生噪声或不收敛的线段,导致消失点检测的准确性下降。因此,开发一种从噪声线段中提取准确消失点的方法非常重要。提出了一种将线段投影到高斯球上检测消失点的算法。该方法采用移动LSD[1]进行线段检测,根据线段的角度对线段进行分类,将分类后的线段投影到高斯球上并转换成二维图像。在这个变换后的二维图像的背景下,假定消失点对应于线段表现出最大程度重叠的区域。换句话说,该方案不需要从线段中计算所有的交点,也不需要从交点中识别消失点。实验结果表明,该方法不仅提高了消失点检测的精度,而且缩短了消失点检测的时间。
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