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Published:2026/1/1 19:22:39

リンゴ🍎をITで守る!低コストUAVシステム、すごいって!

超要約: ドローン&AIでリンゴ園を丸ごとチェック!病気、鮮度、収穫量もバッチリ👍

🌟 ギャル的キラキラポイント✨ ● RGBカメラ(普通のカメラ)だけで、色々できちゃうのがスゴくない?✨ ● オフラインで動くから、ネット環境に左右されないのもイイね!通信料も節約💸 ● 病気とか鮮度とか、全部まとめてチェックできるのが最強!😎

詳細解説

背景 リンゴ園🍎って、病気になったり、鮮度が落ちたり大変じゃん?それを、ドローン(UAV)とAI(深層学習)で解決しちゃおうって研究なの!高価なセンサーじゃなくて、普通のカメラを使うから、お財布にも優しい💰

続きは「らくらく論文」アプリで

A Low-Cost UAV Deep Learning Pipeline for Integrated Apple Disease Diagnosis,Freshness Assessment, and Fruit Detection

Soham Dutta / Soham Banerjee / Sneha Mahata / Anindya Sen / Sayantani Datta

Apple orchards require timely disease detection, fruit quality assessment, and yield estimation, yet existing UAV-based systems address such tasks in isolation and often rely on costly multispectral sensors. This paper presents a unified, low-cost RGB-only UAV-based orchard intelligent pipeline integrating ResNet50 for leaf disease detection, VGG 16 for apple freshness determination, and YOLOv8 for real-time apple detection and localization. The system runs on an ESP32-CAM and Raspberry Pi, providing fully offline on-site inference without cloud support. Experiments demonstrate 98.9% accuracy for leaf disease classification, 97.4% accuracy for freshness classification, and 0.857 F1 score for apple detection. The framework provides an accessible and scalable alternative to multispectral UAV solutions, supporting practical precision agriculture on affordable hardware.

cs / cs.CV