High-Throughput Plant Height Estimation from RGB Images Acquired with Aerial Platforms: A 3D Point Cloud Based Approach

Xun Li,Geoff Bull,Robert Coe, Sakda Eamkulworapong, Jamie Scarrow, Michael Salim,Michael Schaefer,Xavier Sirault

2019 Digital Image Computing: Techniques and Applications (DICTA)(2019)

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摘要
With the development of computer vision technologies, using images acquired by aerial platforms to measure large scale agricultural fields has been increasingly studied. In order to provide a more time efficient, light weight and low cost solution, in this paper we present a highly automated processing pipeline that performs plant height estimation based on a dense point cloud generated from aerial RGB images, requiring only a single flight. A previously acquired terrain model is not required as input. The process extracts a segmented plant layer and bare ground layer. Ground height estimation achieves sub 10cm accuracy. High throughput plant height estimation has been performed and results are compared with LiDAR based measurements.
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关键词
3D point cloud,high-throughput plant height estimation,LiDAR based measurements,ground height estimation,bare ground layer,segmented plant layer,terrain model,aerial RGB images,dense point cloud,plant height estimation,highly automated processing pipeline,agricultural fields,computer vision technologies
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