arXiv Open Access 2023

Physics-assisted machine learning for THz spectroscopy: sensing moisture on plant leaves

Milan Koumans Daan Meulendijks Haiko Middeljans Djero Peeters Jacob C. Douma +1 lainnya
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Abstrak

Signal processing techniques are of vital importance to bring THz spectroscopy to a maturity level to reach practical applications. In this work, we illustrate the use of machine learning techniques for THz time-domain spectroscopy assisted by domain knowledge based on light-matter interactions. We aim at the potential agriculture application to determine the amount of free water on plant leaves, so-called leaf wetness. This quantity is important for understanding and predicting plant diseases that need leaf wetness for disease development. The overall transmission of a moist plant leaf for 12,000 distinct water patterns was experimentally acquired using THz time-domain spectroscopy. We report on key insights of applying decision trees and convolutional neural networks to the data using physics-motivated choices. Eventually, we discuss the generalizability of these models to determine leaf wetness after testing them on cases with increasing deviations from the training set.

Penulis (6)

M

Milan Koumans

D

Daan Meulendijks

H

Haiko Middeljans

D

Djero Peeters

J

Jacob C. Douma

D

Dook van Mechelen

Format Sitasi

Koumans, M., Meulendijks, D., Middeljans, H., Peeters, D., Douma, J.C., Mechelen, D.v. (2023). Physics-assisted machine learning for THz spectroscopy: sensing moisture on plant leaves. https://arxiv.org/abs/2310.04056

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Tahun Terbit
2023
Bahasa
en
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arXiv
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Open Access ✓