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Line-of-sight analysis using voxelized discrete lidar

机译:使用体素化离散激光雷达的视线分析

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Modern small-footprint LIDAR systems have the ability to resolve structural details at sub-meter sizes, which make them ideal for collecting information to use in line-of-sight analysis. Many existing techniques used to map line-of-sight apply simple surface triangulation to the LIDAR point cloud, but are not well suited to scenes with significant 3D structure and overlapping objects. Newer voxel-based techniques have the ability to describe scene structure accurately, but typically suffer from a lack of information if all scene surfaces are not exhaustively sampled by the LIDAR. LIDAR instrument position is typically discarded after producing the point cloud, but we show how it can be used to identify areas in voxel maps where insufficient data are available. Using this knowledge of under-sampled areas we demonstrate construction of an improved line-of-sight map with metrics that indicate where and why errors in the line-of-sight are likely to occur. During the summer of 2010 an airborne experiment over the RIT campus collected both LIDAR and high resolution visible imagery. The LIDAR point cloud was sampled at several returns per square meter, and the accompanying visible imagery is used to provide context and truth information for LIDAR derived products. A realworld voxel line-of-sight map created from this LIDAR collection is presented along with an analysis of the associated derived errors.
机译:现代的小型LIDAR系统具有解析亚米级结构细节的能力,这使其成为收集信息以用于视线分析的理想选择。用于映射视线的许多现有技术将简单的表面三角剖分应用于LIDAR点云,但不适用于具有明显3D结构和重叠对象的场景。较新的基于体素的技术具有准确描述场景结构的能力,但是如果不能通过LIDAR详尽采样所有场景表面,通常会缺乏信息。 LIDAR仪器的位置通常在生成点云后被丢弃,但是我们展示了如何将其用于在体素贴图中识别可用数据不足的区域。借助对欠采样区域的了解,我们演示了如何构建改进的视线图,并使用度量标准指示视线中可能发生错误的位置和原因。在2010年夏季,在RIT校园内进行的一次机载实验收集了激光雷达和高分辨率可见图像。对LIDAR点云进行了采样,每平方米的回报率很高,并且随附的可见图像用于为LIDAR衍生产品提供上下文和真相信息。展示了从此LIDAR集合创建的真实体素视线图以及对相关派生错误的分析。

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