An Efficient Ground-aerial Transportation System for Pest Control Enabled by AI-based Autonomous Nano-UAVs
Luca Crupi, Luca Butera, Alberto Ferrante, Alessandro Giusti, and Daniele Palossi

TL;DR
This paper presents an AI-enabled nano-UAV system for early pest detection in agriculture, combining a tiny CNN for pest identification with advanced path planning, significantly reducing operational time compared to traditional methods.
Contribution
The authors develop a highly efficient, real-time CNN for pest detection on nano-UAVs and integrate it with a global+local path planning system for optimized pest control operations.
Findings
CNN achieves 0.79 mAP with 32x fewer operations
Real-time detection at 6.8 fps with 33 mW power consumption
System reduces operational time by up to 20 hours in vineyard pest control
Abstract
Efficient crop production requires early detection of pest outbreaks and timely treatments; we consider a solution based on a fleet of multiple autonomous miniaturized unmanned aerial vehicles (nano-UAVs) to visually detect pests and a single slower heavy vehicle that visits the detected outbreaks to deliver treatments. To cope with the extreme limitations aboard nano-UAVs, e.g., low-resolution sensors and sub-100 mW computational power budget, we design, fine-tune, and optimize a tiny image-based convolutional neural network (CNN) for pest detection. Despite the small size of our CNN (i.e., 0.58 GOps/inference), on our dataset, it scores a mean average precision (mAP) of 0.79 in detecting harmful bugs, i.e., 14% lower mAP but 32x fewer operations than the best-performing CNN in the literature. Our CNN runs in real-time at 6.8 frame/s, requiring 33 mW on a GWT GAP9 System-on-Chip aboard…
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