arXiv Open Access 2025

Deep-Learning Investigation of Vibrational Raman Spectra for Plant-Stress Analysis

Anoop C. Patil Benny Jian Rong Sng Yu-Wei Chang Joana B. Pereira Chua Nam-Hai +4 lainnya
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Abstrak

Detecting stress in plants is crucial for both open-farm and controlled-environment agriculture. Biomolecules within plants serve as key stress indicators, offering vital markers for continuous health monitoring and early disease detection. Raman spectroscopy provides a powerful, non-invasive means to quantify these biomolecules through their molecular vibrational signatures. However, traditional Raman analysis relies on customized data-processing workflows that require fluorescence background removal and prior identification of Raman peaks of interest-introducing potential biases and inconsistencies. Here, we introduce DIVA (Deep-learning-based Investigation of Vibrational Raman spectra for plant-stress Analysis), a fully automated workflow based on a variational autoencoder. Unlike conventional approaches, DIVA processes native Raman spectra-including fluorescence backgrounds-without manual preprocessing, identifying and quantifying significant spectral features in an unbiased manner. We applied DIVA to detect a range of plant stresses, including abiotic (shading, high light intensity, high temperature) and biotic stressors (bacterial infections). By integrating deep learning with vibrational spectroscopy, DIVA paves the way for AI-driven plant health assessment, fostering more resilient and sustainable agricultural practices.

Topik & Kata Kunci

Penulis (9)

A

Anoop C. Patil

B

Benny Jian Rong Sng

Y

Yu-Wei Chang

J

Joana B. Pereira

C

Chua Nam-Hai

R

Rajani Sarojam

G

Gajendra Pratap Singh

I

In-Cheol Jang

G

Giovanni Volpe

Format Sitasi

Patil, A.C., Sng, B.J.R., Chang, Y., Pereira, J.B., Nam-Hai, C., Sarojam, R. et al. (2025). Deep-Learning Investigation of Vibrational Raman Spectra for Plant-Stress Analysis. https://arxiv.org/abs/2507.15772

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Tahun Terbit
2025
Bahasa
en
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arXiv
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Open Access ✓