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Scalable visibility color map construction in spatial databases

机译:空间数据库中可扩展的可见性彩色地图构建

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摘要

Recent advances in 3D modeling provide us with real 3D datasets to answer queries, such as "What is the best position for a new billboard?' and "Which hotel room has the best view?" in the presence of obstacles. These applications require measuring and differentiating the visibility of an object (target) from different viewpoints in a dataspace, e.g., a billboard may be seen from many points but is readable only from a few points closer to it. In this paper, we formulate the above problem of quantifying the visibility of (from) a target object from (of) the surrounding area with a visibility color map (VCM). A VCM is essentially defined as a surface color map of the space, where each viewpoint of the space is assigned a color value that denotes the visibility measure of the target from that viewpoint. Measuring the visibility of a target even from a single viewpoint is an expensive operation, as we need to consider factors such as distance, angle, and obstacles between the viewpoint and the target. Hence, a straightforward approach to construct the VCM that requires visibility computation for every viewpoint of the surrounding space of the target is prohibitively expensive in terms of both I/Os and computation, especially for a real dataset comprising thousands of obstacles. We propose an efficient approach to compute the VCM based on a key property of the human vision that eliminates the necessity for computing the visibility for a large number of viewpoints of the space. To further reduce the computational overhead, we propose two approximations; namely, minimum bounding rectangle and tangential approaches with guaranteed error bounds. Our extensive experiments demonstrate the effectiveness and efficiency of our solutions to construct the VCM for real 2D and 3D datasets.
机译:3D建模的最新进展为我们提供了真正的3D数据集来回答查询,例如“新广告牌的最佳位置是什么?”这些应用程序需要从数据空间中的不同角度测量并区分对象(目标)的可见性,例如,可以从多个角度看到广告牌,但是在本文中,我们用可见度颜色图(VCM)公式化了上述问题,以量化目标对象(从目标对象到周围区域)的可见性。定义为空间的表面颜色图,其中为空间的每个视点分配一个颜色值,该颜色值表示从该视点观察到的目标的可见性度量,即使从单个视点测量目标的可见性也是一项昂贵的操作,因为我们需要考虑视点与目标之间的距离,角度和障碍物等因素,因此,一种简单的构造VCM的方法要求对周围每个视点进行可见性计算在I / O和计算方面,目标的目标空间非常昂贵,尤其是对于包含数千个障碍的真实数据集而言。我们提出了一种基于人类视觉的关键属性来计算VCM的有效方法,从而消除了计算大量空间视点的可见性的必要性。为了进一步减少计算开销,我们提出了两种近似方法:也就是说,最小边界矩形和切线方法具有保证的误差范围。我们广泛的实验证明了我们为真实2D和3D数据集构建VCM的解决方案的有效性和效率。

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