Plant Phenomics (Jan 2023)

Rice Plant Counting, Locating, and Sizing Method Based on High-Throughput UAV RGB Images

  • Xiaodong Bai,
  • Pichao Liu,
  • Zhiguo Cao,
  • Hao Lu,
  • Haipeng Xiong,
  • Aiping Yang,
  • Zhe Cai,
  • Jianjun Wang,
  • Jianguo Yao

DOI
https://doi.org/10.34133/plantphenomics.0020
Journal volume & issue
Vol. 5

Abstract

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Rice plant counting is crucial for many applications in rice production, such as yield estimation, growth diagnosis, disaster loss assessment, etc. Currently, rice counting still heavily relies on tedious and time-consuming manual operation. To alleviate the workload of rice counting, we employed an UAV (unmanned aerial vehicle) to collect the RGB images of the paddy field. Then, we proposed a new rice plant counting, locating, and sizing method (RiceNet), which consists of one feature extractor frontend and 3 feature decoder modules, namely, density map estimator, plant location detector, and plant size estimator. In RiceNet, rice plant attention mechanism and positive–negative loss are designed to improve the ability to distinguish plants from background and the quality of the estimated density maps. To verify the validity of our method, we propose a new UAV-based rice counting dataset, which contains 355 images and 257,793 manual labeled points. Experiment results show that the mean absolute error and root mean square error of the proposed RiceNet are 8.6 and 11.2, respectively. Moreover, we validated the performance of our method with two other popular crop datasets. On these three datasets, our method significantly outperforms state-of-the-art methods. Results suggest that RiceNet can accurately and efficiently estimate the number of rice plants and replace the traditional manual method.