期刊文献+
共找到1篇文章
< 1 >
每页显示 20 50 100
Efficient Noninvasive FHB Estimation using RGB Images from a Novel Multiyear,Multirater Dataset
1
作者 DominikRößle LukasPrey +4 位作者 ludwigramgraber AnjaHanemann DanielCremers Patrick OleNoack TorstenSchön 《Plant Phenomics》 SCIE EI CSCD 2023年第3期533-545,共13页
Fusarium head blight(FHB)is one of the most prevalent wheat diseases,causing substantial yield losses and health risks.Efficient phenotyping of FHB is crucial for accelerating resistance breeding,but currently used me... Fusarium head blight(FHB)is one of the most prevalent wheat diseases,causing substantial yield losses and health risks.Efficient phenotyping of FHB is crucial for accelerating resistance breeding,but currently used methods are time-consuming and expensive.The present article suggests a noninvasive classification model for FHB severity estimation using red–green–blue(RGB)images,without requiring extensive preprocessing.The model accepts images taken from consumer-grade,low-cost RGB cameras and classifies the FHB severity into 6 ordinal levels.In addition,we introduce a novel dataset consisting of around 3,000 images from 3 different years(2020,2021,and 2022)and 2 FHB severity assessments per image from independent raters.We used a pretrained EfficientNet(size b0),redesigned as a regression model.The results demonstrate that the interrater reliability(Cohen’s kappa,κ)is substantially lower than the achieved individual network-to-rater results,e.g.,0.68 and 0.76 for the data captured in 2020,respectively.The model shows a generalization effect when trained with data from multiple years and tested on data from an independent year.Thus,using the images from 2020 and 2021 for training and 2022 for testing,we improved the F_(1)^(w) score by 0.14,the accuracy by 0.11,κ by 0.12,and reduced the root mean squared error by 0.5 compared to the best network trained only on a single year’s data.The proposed lightweight model and methods could be deployed on mobile devices to automatically and objectively assess FHB severity with images from low-cost RGB cameras.The source code and the dataset are available at https://github.com/cvims/FHB_classification. 展开更多
关键词 NETWORK consuming BREEDING
原文传递
上一页 1 下一页 到第
使用帮助 返回顶部