Evaluating The Ability Of Multi-Sensor Techniques To Capture Topographic Complexity

Hannah M Cooper,Thad Wasklewicz,Zhen Zhu, William Lewis, Karley LeCompte, Madison Heffentrager, Rachel Smaby, Julian Brady,Robert Howard

SENSORS(2021)

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摘要
This study provides an evaluation of multiple sensors by examining their precision and ability to capture topographic complexity. Five different small unmanned aerial systems (sUAS) were evaluated, each with a different camera, Global Navigation Satellite System (GNSS), and Inertial Measurement Unit (IMU). A lidar was also used on the largest sUAS and as a mobile scanning system. The quality of each of the seven platforms were compared to actual surface measurements gathered with real-time kinematic (RTK)-GNSS and terrestrial laser scanning. Rigorous field and photogrammetric assessment workflows were designed around a combination of structure-from-motion to align images, Monte Carlo simulations to calculate spatially variable error, object-based image analysis to create objects, and MC32-PM algorithm to calculate vertical differences between two dense point clouds. The precision of the sensors ranged 0.115 m (minimum of 0.11 m for MaRS with Sony A7iii camera and maximum of 0.225 m for Mavic2 Pro). In a heterogenous test location with varying slope and high terrain roughness, only three of the seven mobile platforms performed well (MaRS, Inspire 2, and Phantom 4 Pro). All mobile sensors performed better for the homogenous test location, but the sUAS lidar and mobile lidar contained the most noise. The findings presented herein provide insights into cost-benefit of purchasing various sUAS and sensors and their ability to capture high-definition topography.
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关键词
structure-from-motion, terrestrial laser scanning, lidar, OBIA, UAS, precision
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