Early and accurate plant stress prediction is fundamental in precision agriculture to optimize resources use and crop yield. Herein, we introduce a multimodal framework for classifying water stress in tomato plants by exploiting data from novel in-vivo biosensors and plant images. We combine electronic features from the biosensors with RGB and NIR images captured from different points, exploiting a Transformer for the biosensor data and pretrained CLIP-based encoders for visual data, and we fuse them together before a cross-attention mechanism is applied. The system classifies plant health status into four health statuses. The results demonstrate better performance of multimodal model over single-modal baselines, and good results also in distinguishing ambiguous statuses. This demonstrates the effectiveness of the proposed multimodal framework for smart agriculture, with implications for sustainable crop management and water stress mitigation.

In-Vivo Biosensors and Visual Data for Precision Agriculture: a Multimodal Approach for Water Stress Detection in Tomato Plants

Giovanni Panella;Francesco Denaro;Riccardo Pecori
2026-01-01

Abstract

Early and accurate plant stress prediction is fundamental in precision agriculture to optimize resources use and crop yield. Herein, we introduce a multimodal framework for classifying water stress in tomato plants by exploiting data from novel in-vivo biosensors and plant images. We combine electronic features from the biosensors with RGB and NIR images captured from different points, exploiting a Transformer for the biosensor data and pretrained CLIP-based encoders for visual data, and we fuse them together before a cross-attention mechanism is applied. The system classifies plant health status into four health statuses. The results demonstrate better performance of multimodal model over single-modal baselines, and good results also in distinguishing ambiguous statuses. This demonstrates the effectiveness of the proposed multimodal framework for smart agriculture, with implications for sustainable crop management and water stress mitigation.
2026
Inglese
Yi Mei, Chao Qian, Quan Bai, Bing Xue, Sankalp Khanna
PRICAI 2025: Trends in Artificial Intelligence
contributo
ELETTRONICO
16452
22nd Pacific Rim International Conference on Artificial Intelligence
693
701
9
https://link.springer.com/chapter/10.1007/978-981-95-7072-0_50
Springer Nature
Singapore
Comitato scientifico
November 2025
Wellington, New Zealand
Internazionale
Multimodal Learning, Smart Agriculture, CLIP, In-vivo biosensor
none
Panella, Giovanni; Luca Bernardi, Mario; Cimitile, Marta; Janni, Michela; Vurro, Filippo; Denaro, Francesco; Bettelli, Manuele; Pecori, Riccardo...espandi
273
info:eu-repo/semantics/conferenceObject
8
4 Contributo in Atti di Convegno (Proceeding)::4.1 Contributo in Atti di convegno
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11389/84375
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