4.7 Article

Image-Aided LiDAR Mapping Platform and Data Processing Strategy for Stockpile Volume Estimation

期刊

REMOTE SENSING
卷 14, 期 1, 页码 -

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MDPI
DOI: 10.3390/rs14010231

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stockpile; volume estimation; LiDAR; terrestrial laser scanner (TLS); segmentation; registration; rotation estimation

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Stockpile quantity monitoring is crucial for agencies and businesses to maintain inventory of bulk materials. Traditional approaches are inaccurate, while modern remote sensing platforms equipped with camera and LiDAR units have limitations in challenging environmental conditions. The new mapping platform SMART provides a time-efficient and cost-effective solution for stockpile monitoring by fusing camera and LiDAR data, enabling accurate volume estimation even in challenging conditions.
Stockpile quantity monitoring is vital for agencies and businesses to maintain inventory of bulk material such as salt, sand, aggregate, lime, and many other materials commonly used in agriculture, highways, and industrial applications. Traditional approaches for volumetric assessment of bulk material stockpiles, e.g., truckload counting, are inaccurate and prone to cumulative errors over long time. Modern aerial and terrestrial remote sensing platforms equipped with camera and/or light detection and ranging (LiDAR) units have been increasingly popular for conducting high-fidelity geometric measurements. Current use of these sensing technologies for stockpile volume estimation is impacted by environmental conditions such as lack of global navigation satellite system (GNSS) signals, poor lighting, and/or featureless surfaces. This study addresses these limitations through a new mapping platform denoted as Stockpile Monitoring and Reporting Technology (SMART), which is designed and integrated as a time-efficient, cost-effective stockpile monitoring solution. The novel mapping framework is realized through camera and LiDAR data-fusion that facilitates stockpile volume estimation in challenging environmental conditions. LiDAR point clouds are derived through a sequence of data collections from different scans. In order to handle the sparse nature of the collected data at a given scan, an automated image-aided LiDAR coarse registration technique is developed followed by a new segmentation approach to derive features, which are used for fine registration. The resulting 3D point cloud is subsequently used for accurate volume estimation. Field surveys were conducted on stockpiles of varying size and shape complexity. Independent assessment of stockpile volume using terrestrial laser scanners (TLS) shows that the developed framework had close to 1% relative error.

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