Lightweight Image Segmentation for Sustainable Smart Farming using Cloud–Edge AI Collaboration


Date Published : 29 April 2026

Contributors

Thirumalaiah

Lincoln University of College
Author

Weiwei Jiang

Author

Shashi Kant Guptha

Lincoln University College
Author

Keywords

Edge AI image segmentation MobileNetV3 precision agriculture multispectral imaging Raspberry Pi

Proceeding

Track

Engineering and Sciences

License

Copyright (c) 2026 Sustainable Global Societies Initiative

Creative Commons License

This work is licensed under a Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International License.

Abstract

Precision agriculture requires accurate, real-time crop and disease segmentation to enable site-specific management with minimal resource use. This paper consolidates our proposed Cloud–Edge collaborative approach for lightweight semantic segmentation on resource-constrained devices. We combine classical image pre-processing (median filtering and resizing) with a compact deep model tailored for edge deployment and evaluate the pipeline on four horticultural crops (mango, sweet orange, chilli, and tomato). We demonstrate feasibility on a Raspberry Pi edge node, present qualitative results, confidence/precision–recall curves, and a normalized confusion matrix extracted from the experimental dashboard. The study highlights the design choices that favor energy- and memory-efficient inference without cloud dependence, and discusses remaining challenges in generalization, dataset diversity, and multispectral sensing.

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How to Cite

G, T., Weiwei Jiang, W. J., & Guptha, S. K. (2026). Lightweight Image Segmentation for Sustainable Smart Farming using Cloud–Edge AI Collaboration. Sustainable Global Societies Initiative, 1(3). https://vectmag.com/sgsi/paper/view/269