Review of Automatic Feature Extraction from High-Resolution Optical Sensor Data for UAV-Based Cadastral Mapping

Remote. Sens. Pub Date : 2016-08-22 DOI:10.3390/rs8080689
S. Crommelinck, R. Bennett, M. Gerke, F. Nex, M. Yang, G. Vosselman
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引用次数: 140

Abstract

Unmanned Aerial Vehicles (UAVs) have emerged as a rapid, low-cost and flexible acquisition system that appears feasible for application in cadastral mapping: high-resolution imagery, acquired using UAVs, enables a new approach for defining property boundaries. However, UAV-derived data are arguably not exploited to its full potential: based on UAV data, cadastral boundaries are visually detected and manually digitized. A workflow that automatically extracts boundary features from UAV data could increase the pace of current mapping procedures. This review introduces a workflow considered applicable for automated boundary delineation from UAV data. This is done by reviewing approaches for feature extraction from various application fields and synthesizing these into a hypothetical generalized cadastral workflow. The workflow consists of preprocessing, image segmentation, line extraction, contour generation and postprocessing. The review lists example methods per workflow step—including a description, trialed implementation, and a list of case studies applying individual methods. Furthermore, accuracy assessment methods are outlined. Advantages and drawbacks of each approach are discussed in terms of their applicability on UAV data. This review can serve as a basis for future work on the implementation of most suitable methods in a UAV-based cadastral mapping workflow.
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基于无人机的地籍测绘高分辨率光学传感器数据特征自动提取研究进展
无人机(uav)作为一种快速、低成本和灵活的采集系统出现,似乎适用于地籍测绘:使用无人机获取的高分辨率图像为定义财产边界提供了一种新方法。然而,无人机衍生的数据并没有充分发挥其潜力:基于无人机数据,地籍边界被视觉检测和人工数字化。从无人机数据中自动提取边界特征的工作流程可以增加当前制图程序的速度。本文介绍了一种适用于无人机数据自动边界划分的工作流程。这是通过回顾各种应用领域的特征提取方法并将其综合到一个假设的广义地籍工作流中来完成的。该工作流包括预处理、图像分割、线条提取、轮廓生成和后处理。审查列出了每个工作流步骤的示例方法,包括描述、经过试验的实现和应用单个方法的案例研究列表。此外,还概述了精度评估方法。从对无人机数据的适用性角度讨论了每种方法的优缺点。该综述可以作为未来在基于无人机的地籍测绘工作流程中实现最合适方法的工作基础。
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