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Geometric Image Parsing in Man-Made Environments

机译:人造环境中的几何图像解析

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We present a new parsing framework for the line-based geometric analysis of a single image coming from a man-made environment. This parsing framework models the scene as a composition of geometric primitives spanning different layers from low level (edges) through mid-level (lines and vanishing points) to high level (the zenith and the horizon). The inference in such a model thus jointly and simultaneously estimates a) the grouping of edges into the straight lines, b) the grouping of lines into parallel families, and c) the positioning of the horizon and the zenith in the image. Such a unified treatment means that the uncertainty information propagates between the layers of the model. This is in contrast to most previous approaches to the same problem, which either ignore the middle levels (lines) all together, or use the bottom-up step-by-step pipeline. For the evaluation, we consider a publicly available York Urban dataset of "Manhattan" scenes, and also introduce a new, harder dataset of 103 urban outdoor images containing many non-Manhattan scenes. The comparative evaluation for the horizon estimation task demonstrate higher accuracy and robustness attained by our method when compared to the current state-of-the-art approaches.
机译:我们提出了一个新的解析框架,用于对来自人造环境的单个图像进行基于行的几何分析。该解析框架将场景建模为几何图元的组合,这些几何图元跨越从低层(边缘)到中层(线和消失点)到高层(天顶和地平线)的不同层。因此,在这种模型中的推论共同并同时地估计a)将边缘分组为直线,b)将线分组为平行族,以及c)图像中地平线和天顶的位置。这样的统一处理意味着不确定性信息在模型的各层之间传播。这与以前大多数针对同一问题的方法形成了对比,后者要么完全忽略中间层(线),要么使用自下而上的循序渐进管道。为了进行评估,我们考虑了可公开获得的“曼哈顿”场景的约克城市数据集,并且还引入了一个新的更难的数据集,其中包含103个包含许多非曼哈顿场景的城市户外图像。与当前最先进的方法相比,对视野估计任务的比较评估证明了我们的方法具有更高的准确性和鲁棒性。

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