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Automatic building exterior mapping using multilayer feature graphs

机译:使用多层特征图自动构建外部映射

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We develop algorithms that can assist robot to perform building exterior mapping, which is important for building energy retrofitting. In this task, a robot needs to identify building facades in its localization and mapping process, which in turn can be used to assist robot navigation. Existing localization and mapping algorithms rely on low level features such as point clouds and line segments and cannot be directly applied to our task. We attack this problem by employing a multiple layer feature graph (MFG), which contains five different features ranging from raw key points to planes and vanishing points in 3D, in an extended Kalman filter (EKF) framework. We analyze how errors are generated and propagated in the MFG construction process, and then apply MFG data as observations for the EKF to map building facades. We have implemented and tested our MFG-EKF method at three different sites. Experimental results show that building facades are successfully constructed in modern urban environments with mean relative errors of plane depth less than 4.66%.
机译:我们开发算法,可以帮助机器人进行建筑物外部映射,这对于建造能源改装很重要。在此任务中,机器人需要识别其本地化和映射过程中的构建立面,这又可以用于协助机器人导航。现有的本地化和映射算法依赖于低级功能,例如点云和线段,不能直接应用于我们的任务。我们通过使用多层特征图(MFG)来攻击此问题,其中包含五个不同的特征,范围从原始键点到3D中的平面和消失点,在扩展卡尔曼滤波器(EKF)框架中。我们分析了在MFG施工过程中生成并传播的错误,然后将MFG数据应用于EKF以映射建筑物外观。我们在三个不同的网站下实施并测试了我们的MFG-EKF方法。实验结果表明,建筑外墙在现代城市环境中成功构建,平均相对误差的平面深度小于4.66%。

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