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Verification of road databases using multiple road models

机译:使用多种道路模型验证道路数据库

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In this paper a new approach for automatic road database verification based on remote sensing images is presented. In contrast to existing methods, the applicability of the new approach is not restricted to specific road types, context areas or geographic regions. This is achieved by combining several stateof-the-art road detection and road verification approaches that work well under different circumstances. Each one serves as an independent module representing a unique road model and a specific processing strategy. All modules provide independent solutions for the verification problem of each road object stored in the database in form of two probability distributions, the first one for the state of a database object (correct or incorrect), and a second one for the state of the underlying road model (applicable or not applicable). In accordance with the Dempster-Shafer Theory, both distributions are mapped to a new state space comprising the classes correct, incorrect and unknown. Statistical reasoning is applied to obtain the optimal state of a road object. A comparison with state-of-the-art road detection approaches using benchmark datasets shows that in general the proposed approach provides results with larger completeness. Additional experiments reveal that based on the proposed method a highly reliable semiautomatic approach for road data base verification can be designed. (C) 2017 Published by Elsevier B.V. on behalf of International Society for Photogrammetry and Remote Sensing, Inc. (ISPRS).
机译:本文提出了一种基于遥感图像的道路数据库自动验证的新方法。与现有方法相反,新方法的适用性不限于特定的道路类型,背景区域或地理区域。这是通过结合几种最先进的道路检测和道路验证方法来实现的,这些方法在不同情况下均能很好地发挥作用。每个模块都充当一个独立的模块,代表一个独特的道路模型和特定的处理策略。所有模块均以两种概率分布的形式为数据库中存储的每个道路对象的验证问题提供独立的解决方案,第一种用于数据库对象的状态(正确或不正确),第二种用于基础状态的分布。道路模型(适用或不适用)。根据Dempster-Shafer理论,两个分布都映射到一个新的状态空间,其中包括正确,错误和未知类。应用统计推理以获得道路对象的最佳状态。与使用基准数据集的最新道路检测方法的比较表明,总体而言,所提出的方法可提供更大完整性的结果。其他实验表明,基于所提出的方法,可以设计一种高度可靠的半自动道路数据库验证方法。 (C)2017年由Elsevier B.V.代表国际摄影测量与遥感学会(ISPRS)发行。

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