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!😎
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💰
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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.