PanicleNeRF: low-cost, high-precision in-field phenotypingof rice panicles with smartphone
Xin Yang (1, 2), Xuqi Lu (1, 2), Pengyao Xie (1, 2), Ziyue, Guo (1, 2), Hui Fang (1), Haowei Fu (3), Xiaochun Hu (4), Zhenbiao Sun, (4), Haiyan Cen (1, 2) ((1) College of Biosystems Engineering, Food, Science, Zhejiang University, (2) Key Laboratory of Spectroscopy Sensing,

TL;DR
PanicleNeRF is a cost-effective smartphone-based method that accurately reconstructs 3D rice panicles in the field, enabling high-throughput phenotyping and improving rice breeding efficiency.
Contribution
This paper introduces PanicleNeRF, combining segmentation and NeRF-based 3D reconstruction for in-field rice panicle phenotyping using smartphones, outperforming traditional methods.
Findings
Achieved 86.9% F1 score in segmentation accuracy.
Outperformed traditional SfM-MVS methods in point cloud quality.
Strong correlation between 3D traits and grain yield metrics.
Abstract
The rice panicle traits significantly influence grain yield, making them a primary target for rice phenotyping studies. However, most existing techniques are limited to controlled indoor environments and difficult to capture the rice panicle traits under natural growth conditions. Here, we developed PanicleNeRF, a novel method that enables high-precision and low-cost reconstruction of rice panicle three-dimensional (3D) models in the field using smartphone. The proposed method combined the large model Segment Anything Model (SAM) and the small model You Only Look Once version 8 (YOLOv8) to achieve high-precision segmentation of rice panicle images. The NeRF technique was then employed for 3D reconstruction using the images with 2D segmentation. Finally, the resulting point clouds are processed to successfully extract panicle traits. The results show that PanicleNeRF effectively…
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Taxonomy
TopicsSmart Agriculture and AI
MethodsYou Only Look Once
