PointRAFT: 3D deep learning for high-throughput prediction of potato tuber weight from partial point clouds
Pieter M. Blok, Haozhou Wang, Hyun Kwon Suh, Peicheng Wang, James Burridge, Wei Guo

TL;DR
PointRAFT is a novel deep learning model that directly predicts potato tuber weight from partial 3D point clouds, significantly improving accuracy and speed over existing methods, and supporting high-throughput agricultural applications.
Contribution
It introduces PointRAFT, a regression network with an object height embedding that accurately estimates tuber weight from incomplete point clouds without full 3D reconstruction.
Findings
Achieved 12.0 g MAE on test set
Processed up to 150 tubers per second
Outperformed baseline models in accuracy
Abstract
Potato yield is a key indicator for optimizing cultivation practices in agriculture. Potato yield can be estimated on harvesters using RGB-D cameras, which capture three-dimensional (3D) information of individual tubers moving along the conveyor belt. However, point clouds reconstructed from RGB-D images are incomplete due to self-occlusion, leading to systematic underestimation of tuber weight. To address this, we introduce PointRAFT, a high-throughput point cloud regression network that directly predicts continuous 3D shape properties, such as tuber weight, from partial point clouds. Rather than reconstructing full 3D geometry, PointRAFT infers target values directly from raw 3D data. Its key architectural novelty is an object height embedding that incorporates tuber height as an additional geometric cue, improving weight prediction under practical harvesting conditions. PointRAFT was…
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Taxonomy
TopicsSmart Agriculture and AI · Plant Disease Management Techniques · Potato Plant Research
