Generative models-based data labeling for deep networks regression: application to seed maturity estimation from UAV multispectral images
Eric Dericquebourg, Adel Hafiane, Raphael Canals

TL;DR
This paper introduces a novel automatic data labeling method using generative models for deep learning-based seed maturity estimation from UAV multispectral images, improving robustness and performance.
Contribution
It presents a new weak labeling approach based on parametric and non-parametric models to enhance deep neural network training for crop maturity assessment.
Findings
Non-parametric kernel density estimator improves neural network generalization.
The proposed method achieves good performance in seed maturity estimation.
Automatic labeling reduces manual effort and enhances model robustness.
Abstract
Monitoring seed maturity is an increasing challenge in agriculture due to climate change and more restrictive practices. Seeds monitoring in the field is essential to optimize the farming process and to guarantee yield quality through high germination. Traditional methods are based on limited sampling in the field and analysis in laboratory. Moreover, they are time consuming and only allow monitoring sub-sections of the crop field. This leads to a lack of accuracy on the condition of the crop as a whole due to intra-field heterogeneities. Multispectral imagery by UAV allows uniform scan of fields and better capture of crop maturity information. On the other hand, deep learning methods have shown tremendous potential in estimating agronomic parameters, especially maturity. However, they require large labeled datasets. Although large sets of aerial images are available, labeling them with…
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Taxonomy
TopicsSmart Agriculture and AI · Leaf Properties and Growth Measurement · Spectroscopy and Chemometric Analyses
