Uav Based Estimation Of Forest Leaf Area Index (Lai) Through Oblique Photogrammetry

REMOTE SENSING(2021)

Cited 14|Views10
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Abstract
As a key canopy structure parameter, the estimation method of the Leaf Area Index (LAI) has always attracted attention. To explore a potential method to estimate forest LAI from 3D point cloud at low cost, we took photos from different angles of the drone and set five schemes (O (0 degrees), T15 (15 degrees), T30 (30 degrees), OT15 (0 degrees and 15 degrees) and OT30 (0 degrees and 30 degrees)), which were used to reconstruct 3D point cloud of forest canopy based on photogrammetry. Subsequently, the LAI values and the leaf area distribution in the vertical direction derived from five schemes were calculated based on the voxelized model. Our results show that the serious lack of leaf area in the middle and lower layers determines that the LAI estimate of O is inaccurate. For oblique photogrammetry, schemes with 30 degrees photos always provided better LAI estimates than schemes with 15 degrees photos (T30 better than T15, OT30 better than OT15), mainly reflected in the lower part of the canopy, which is particularly obvious in low-LAI areas. The overall structure of the single-tilt angle scheme (T15, T30) was relatively complete, but the rough point cloud details could not reflect the actual situation of LAI well. Multi-angle schemes (OT15, OT30) provided excellent leaf area estimation (OT15: R-2 = 0.8225, RMSE = 0.3334 m(2)/m(2); OT30: R-2 = 0.9119, RMSE = 0.1790 m(2)/m(2)). OT30 provided the best LAI estimation accuracy at a sub-voxel size of 0.09 m and the best checkpoint accuracy (OT30: RMSE [H] = 0.2917 m, RMSE [V] = 0.1797 m). The results highlight that coupling oblique photography and nadiral photography can be an effective solution to estimate forest LAI.
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Key words
Leaf Area Index (LAI), 3D point clouds, photogrammetry, oblique photography, structure from motion (SFM), voxelized model
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