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Robust and efficient change detection algorithm based on 3D line segments

机译:基于3D线段的鲁棒高效的变化检测算法

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In this paper we examine and improve a new approach for change detection (introduced in [1]) which is based on the appearance and disappearance of 3D line segments as seen in a new image. These 3D line segments are estimated from a set of learning images taken from arbitrary viewpoints and under arbitrary light conditions in an unsupervised manner. The main advantage of the proposed method lies in the fact that the change detection is performed by comparing line segments, and not surfaces or gray levels. Computing 3D surfaces in an image can be computationally intensive, and other methods such as image subtraction or cross-correlation are sensitive to lighting conditions and changes in viewpoints. Moreover, most man-made objects such as buildings, cars, and even cities viewed from above consist mainly of straight lines, and therefore this method is highly applicable for such structures. The proposed algorithm first focuses on the reconstruction of a set of 3D line segments forming a certain 3D scene using a set of 2D line segments obtained from the learning images in an unsupervised manner, without any prior knowledge on the cameras' positions or relative distance. In the change detection stage, we use the reconstructed 3D scene of line segments to check if changes, such as appearance or disappearance of objects, have occurred in a given test image. This test image can be taken from arbitrary viewpoint and under arbitrary lighting conditions. Our change detection algorithm not only distinguishes between the states of "changed" and "not-changed" line segments, it also classifies the "changed" line segments as appeared — objects that entered the scene in the test image, and disappeared — objects that left the 3D scene reconstructed from the lines of the learning images.
机译:在本文中,我们研究和改进了一种新的变化检测方法(在[1]中引入),该方法基于在新图像中看到的3D线段的出现和消失。从任意视点和在任意光照条件下以无监督方式拍摄的一组学习图像估计这些3D线段。所提出的方法的主要优点在于,通过比较线段而不是表面或灰度来执行变化检测。计算图像中的3D表面可能需要大量计算,并且其他方法(例如图像减法或互相关)对光照条件和视点变化敏感。此外,大多数人造物体,例如建筑物,汽车,甚至从上方观看的城市,都主要由直线组成,因此该方法非常适用于此类结构。所提出的算法首先着重于使用无监督方式从学习图像中获得的一组2D线段来重建形成某个3D场景的3D线段集,而无需事先了解相机的位置或相对距离。在变化检测阶段,我们使用重建的线段3D场景来检查给定测试图像中是否发生了变化,例如对象的外观或消失。可以从任意视点和任意光照条件下拍摄该测试图像。我们的变化检测算法不仅可以区分“变化的”线段和“未变化的”线段的状态,还可以将“变化的”线段分类为出现的对象(在测试图像中进入场景的对象和消失的对象)留下了根据学习图像的线条重建的3D场景。

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