Machine Learning Methods for Automatic Segmentation of Images of Field- and Glasshouse-Based Plants for High-Throughput Phenotyping

被引:7
|
作者
Okyere, Frank Gyan [1 ,2 ]
Cudjoe, Daniel [1 ,2 ]
Sadeghi-Tehran, Pouria [1 ]
Virlet, Nicolas [1 ]
Riche, Andrew B. B. [1 ]
Castle, March [1 ]
Greche, Latifa [1 ]
Mohareb, Fady [2 ]
Simms, Daniel [2 ]
Mhada, Manal [3 ]
Hawkesford, Malcolm John [1 ]
机构
[1] Rothamsted Res, Sustainable Soils & Crops, Harpenden AL5 2JQ, England
[2] Cranfield Univ, Sch Water Energy & Environm Soil Agrifood & Biosci, Bedford MK43 0AL, England
[3] Univ Mohammed VI Polytech, African Integrated Plant & Soil Sci, Agrobiosci, Lot 660, Ben Guerir 43150, Morocco
来源
PLANTS-BASEL | 2023年 / 12卷 / 10期
基金
英国生物技术与生命科学研究理事会;
关键词
feature extraction; imaging; machine learning; phenotyping; segmentation; COLOR INDEXES; CLASSIFICATION; VEGETATION; NETWORKS; RESIDUE; SOIL;
D O I
10.3390/plants12102035
中图分类号
Q94 [植物学];
学科分类号
071001 ;
摘要
Image segmentation is a fundamental but critical step for achieving automated high- throughput phenotyping. While conventional segmentation methods perform well in homogenous environments, the performance decreases when used in more complex environments. This study aimed to develop a fast and robust neural-network-based segmentation tool to phenotype plants in both field and glasshouse environments in a high-throughput manner. Digital images of cowpea (from glasshouse) and wheat (from field) with different nutrient supplies across their full growth cycle were acquired. Image patches from 20 randomly selected images from the acquired dataset were transformed from their original RGB format to multiple color spaces. The pixels in the patches were annotated as foreground and background with a pixel having a feature vector of 24 color properties. A feature selection technique was applied to choose the sensitive features, which were used to train a multilayer perceptron network (MLP) and two other traditional machine learning models: support vector machines (SVMs) and random forest (RF). The performance of these models, together with two standard color-index segmentation techniques (excess green (ExG) and excess green-red (ExGR)), was compared. The proposed method outperformed the other methods in producing quality segmented images with over 98%-pixel classification accuracy. Regression models developed from the different segmentation methods to predict Soil Plant Analysis Development (SPAD) values of cowpea and wheat showed that images from the proposed MLP method produced models with high predictive power and accuracy comparably. This method will be an essential tool for the development of a data analysis pipeline for high-throughput plant phenotyping. The proposed technique is capable of learning from different environmental conditions, with a high level of robustness.
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页数:22
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