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Training instance segmentation neural network with synthetic datasets for crop seed phenotyping

Agriculture

Training instance segmentation neural network with synthetic datasets for crop seed phenotyping

Y. Toda, F. Okura, et al.

This groundbreaking research by Yosuke Toda, Fumio Okura, Jun Ito, Satoshi Okada, Toshinori Kinoshita, Hiroyuki Tsuji, and Daisuke Saisho reveals a novel method for training neural networks in plant phenotyping using synthetic datasets. Achieving impressive performance metrics, this approach significantly lowers the manual labor needed for data annotation in agricultural analysis, paving the way for more efficient crop studies.

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~3 min • Beginner • English
Abstract
In order to train the neural network for plant phenotyping, a sufficient amount of training data must be prepared, which requires time-consuming manual data annotation process that often becomes the limiting step. Here, we show that an instance segmentation neural network aimed to phenotype the barley seed morphology of various cultivars, can be sufficiently trained purely by a synthetically generated dataset. Our attempt is based on the concept of domain randomization, where a large amount of image is generated by randomly orienting the seed object to a virtual canvas. The trained model showed 96% recall and 95% average Precision against the real-world test dataset. We show that our approach is effective also for various crops including rice, lettuce, oat, and wheat. Constructing and utilizing such synthetic data can be a powerful method to alleviate human labor costs for deploying deep learning-based analysis in the agricultural domain.
Publisher
Communications Biology
Published On
Apr 15, 2020
Authors
Yosuke Toda, Fumio Okura, Jun Ito, Satoshi Okada, Toshinori Kinoshita, Hiroyuki Tsuji, Daisuke Saisho
Tags
neural networks
plant phenotyping
synthetic datasets
instance segmentation
agricultural analysis
deep learning
domain randomization
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