A Low-Cost UAV Deep Learning Pipeline for Integrated Apple Disease Diagnosis,Freshness Assessment, and Fruit Detection
By: Soham Dutta , Soham Banerjee , Sneha Mahata and more
Potential Business Impact:
Helps farmers check apples and trees easily.
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.
Similar Papers
Vision-based automatic fruit counting with UAV
Robotics
Drones count fruit automatically for farms.
Explainable AI-Enhanced Deep Learning for Pumpkin Leaf Disease Detection: A Comparative Analysis of CNN Architectures
CV and Pattern Recognition
Finds pumpkin plant sickness faster and better.
Reliable Detection of Minute Targets in High-Resolution Aerial Imagery across Temporal Shifts
CV and Pattern Recognition
Helps farmers find tiny plants from flying cameras.