IVCVGRSYNov 1, 2025

Image-based ground distance detection for crop-residue-covered soil

arXiv:2511.00548v1h-index: 10
Originality Incremental advance
AI Analysis

This addresses a specific challenge in conservation agriculture for farmers or machinery operators, though it is an incremental improvement over existing sensor-based methods.

The paper tackles the problem of precisely controlling seeding depth on soil covered with crop residues by developing an image-based method to detect ground distance, achieving a measurement error within ±3mm.

Conservation agriculture features a soil surface covered with crop residues, which brings benefits of improving soil health and saving water. However, one significant challenge in conservation agriculture lies in precisely controlling the seeding depth on the soil covered with crop residues. This is constrained by the lack of ground distance information, since current distance measurement techniques, like laser, ultrasonic, or mechanical displacement sensors, are incapable of differentiating whether the distance information comes from the residue or the soil. This paper presents an image-based method to get the ground distance information for the crop-residues-covered soil. This method is performed with 3D camera and RGB camera, obtaining depth image and color image at the same time. The color image is used to distinguish the different areas of residues and soil and finally generates a mask image. The mask image is applied to the depth image so that only the soil area depth information can be used to calculate the ground distance, and residue areas can be recognized and excluded from ground distance detection. Experimentation shows that this distance measurement method is feasible for real-time implementation, and the measurement error is within plus or minus 3mm. It can be applied in conservation agriculture machinery for precision depth seeding, as well as other depth-control-demanding applications like transplant or tillage.

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