A deep-learning framework for spray pattern segmentation and estimation in agricultural spraying systems

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Abstract

This work focuses on leveraging deep learning for agricultural applications, especially for spray pattern segmentation and spray cone angle estimation. These two characteristics are important to understanding the sprayer system such as nozzles used in agriculture. The core of this work includes three deep-learning convolution-based models. These models are trained and their performances are compared. After the best model is selected based on its performance, it is used for spray region segmentation and spray cone angle estimation. The output from the selected model provides a binary image representing the spray region. This binary image is further processed using image processing to estimate the spray cone angle. The validation process is designed to compare results obtained from this work with manual measurements.

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Acharya, P., Burgers, T., & Nguyen, K. D. (2023). A deep-learning framework for spray pattern segmentation and estimation in agricultural spraying systems. Scientific Reports, 13(1). https://doi.org/10.1038/s41598-023-34320-7

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