Abstract

Soil erosion on agricultural land causes severe environmental problems and damages crop plants. Structure-from-motion with multiview stereo (SfM-MVS) together with data obtained via unmanned aerial vehicles (UAVs) helps understand spatiotemporal changes in the ground surface if there is enough precise data. However, installing ground control points in the field is labor intensive and disturbs field conditions. Here, images georeferenced using the Real-Time Kinematic (RTK) method were further improved using Post-Processing Kinematic (PPK) analysis. This study aims to verify whether the UAV-RTK-PPK method can create precise digital surface models to evaluate topographic changes owing to erosion without ground control points. The effects of the camera's interior orientation parameters settings and the addition of oblique images to nadiral images on the precision were also examined to reduce the positional error by the doming and bowling phenomena. Field observations were conducted in a 150 m × 25 m potato field with 156 poles to consider the three-dimensional object shapes in the verification. The doming or bowling phenomena occurred using only the nadiral images. The precision of the digital surface model was approximately 0.40 and 0.20 m (in the Z-direction) using the estimated and fixed camera's interior orientation parameters, respectively. In contrast, the digital surface models produced by adding oblique images to the nadiral images had a precision of approximately 0.04 m, regardless of the camera's interior orientation parameters. Thus, a high-precision digital surface model was obtained from images acquired using the UAV-RTK-PPK and SfM-MVS methods without ground control points. The digital surface model positional precision was improved by adding oblique images to the nadiral images without having to consider the camera's interior orientation parameters. Topographic changes >0.05 m after erosion by heavy rainfall were evaluated without ground control points using the UAV-RTK-PPK method with oblique and nadiral images. Therefore, our method can monitor the erosion of agricultural fields that may cause crop damage, such as the greening of potatoes.

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