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High-Throughput Rice Density Estimation from Transplantation to Tillering Stages Using Deep Networks

Rice density is closely related to yield estimation, growth diagnosis, cultivated area statistics, and management and damage evaluation. Currently, rice density estimation heavily relies on manual sampling and counting, which is inefficient and inaccurate. With the prevalence of digital imagery, com...

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Detalles Bibliográficos
Autores principales: Liu, Liang, Lu, Hao, Li, Yanan, Cao, Zhiguo
Formato: Online Artículo Texto
Lenguaje:English
Publicado: AAAS 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7706318/
https://www.ncbi.nlm.nih.gov/pubmed/33313541
http://dx.doi.org/10.34133/2020/1375957
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author Liu, Liang
Lu, Hao
Li, Yanan
Cao, Zhiguo
author_facet Liu, Liang
Lu, Hao
Li, Yanan
Cao, Zhiguo
author_sort Liu, Liang
collection PubMed
description Rice density is closely related to yield estimation, growth diagnosis, cultivated area statistics, and management and damage evaluation. Currently, rice density estimation heavily relies on manual sampling and counting, which is inefficient and inaccurate. With the prevalence of digital imagery, computer vision (CV) technology emerges as a promising alternative to automate this task. However, challenges of an in-field environment, such as illumination, scale, and appearance variations, render gaps for deploying CV methods. To fill these gaps towards accurate rice density estimation, we propose a deep learning-based approach called the Scale-Fusion Counting Classification Network (SFC(2)Net) that integrates several state-of-the-art computer vision ideas. In particular, SFC(2)Net addresses appearance and illumination changes by employing a multicolumn pretrained network and multilayer feature fusion to enhance feature representation. To ameliorate sample imbalance engendered by scale, SFC(2)Net follows a recent blockwise classification idea. We validate SFC(2)Net on a new rice plant counting (RPC) dataset collected from two field sites in China from 2010 to 2013. Experimental results show that SFC(2)Net achieves highly accurate counting performance on the RPC dataset with a mean absolute error (MAE) of 25.51, a root mean square error (MSE) of 38.06, a relative MAE of 3.82%, and a R(2) of 0.98, which exhibits a relative improvement of 48.2% w.r.t. MAE over the conventional counting approach CSRNet. Further, SFC(2)Net provides high-throughput processing capability, with 16.7 frames per second on 1024 × 1024 images. Our results suggest that manual rice counting can be safely replaced by SFC(2)Net at early growth stages. Code and models are available online at https://git.io/sfc2net.
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spelling pubmed-77063182020-12-10 High-Throughput Rice Density Estimation from Transplantation to Tillering Stages Using Deep Networks Liu, Liang Lu, Hao Li, Yanan Cao, Zhiguo Plant Phenomics Research Article Rice density is closely related to yield estimation, growth diagnosis, cultivated area statistics, and management and damage evaluation. Currently, rice density estimation heavily relies on manual sampling and counting, which is inefficient and inaccurate. With the prevalence of digital imagery, computer vision (CV) technology emerges as a promising alternative to automate this task. However, challenges of an in-field environment, such as illumination, scale, and appearance variations, render gaps for deploying CV methods. To fill these gaps towards accurate rice density estimation, we propose a deep learning-based approach called the Scale-Fusion Counting Classification Network (SFC(2)Net) that integrates several state-of-the-art computer vision ideas. In particular, SFC(2)Net addresses appearance and illumination changes by employing a multicolumn pretrained network and multilayer feature fusion to enhance feature representation. To ameliorate sample imbalance engendered by scale, SFC(2)Net follows a recent blockwise classification idea. We validate SFC(2)Net on a new rice plant counting (RPC) dataset collected from two field sites in China from 2010 to 2013. Experimental results show that SFC(2)Net achieves highly accurate counting performance on the RPC dataset with a mean absolute error (MAE) of 25.51, a root mean square error (MSE) of 38.06, a relative MAE of 3.82%, and a R(2) of 0.98, which exhibits a relative improvement of 48.2% w.r.t. MAE over the conventional counting approach CSRNet. Further, SFC(2)Net provides high-throughput processing capability, with 16.7 frames per second on 1024 × 1024 images. Our results suggest that manual rice counting can be safely replaced by SFC(2)Net at early growth stages. Code and models are available online at https://git.io/sfc2net. AAAS 2020-08-21 /pmc/articles/PMC7706318/ /pubmed/33313541 http://dx.doi.org/10.34133/2020/1375957 Text en Copyright © 2020 Liang Liu et al. http://creativecommons.org/licenses/by/4.0/ Exclusive Licensee Nanjing Agricultural University. Distributed under a Creative Commons Attribution License (CC BY 4.0).
spellingShingle Research Article
Liu, Liang
Lu, Hao
Li, Yanan
Cao, Zhiguo
High-Throughput Rice Density Estimation from Transplantation to Tillering Stages Using Deep Networks
title High-Throughput Rice Density Estimation from Transplantation to Tillering Stages Using Deep Networks
title_full High-Throughput Rice Density Estimation from Transplantation to Tillering Stages Using Deep Networks
title_fullStr High-Throughput Rice Density Estimation from Transplantation to Tillering Stages Using Deep Networks
title_full_unstemmed High-Throughput Rice Density Estimation from Transplantation to Tillering Stages Using Deep Networks
title_short High-Throughput Rice Density Estimation from Transplantation to Tillering Stages Using Deep Networks
title_sort high-throughput rice density estimation from transplantation to tillering stages using deep networks
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7706318/
https://www.ncbi.nlm.nih.gov/pubmed/33313541
http://dx.doi.org/10.34133/2020/1375957
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