Accurate Crop Yield Estimation of Blueberries using Deep Learning and Smart Drones
Hieu D. Nguyen, Brandon McHenry, Thanh Nguyen, Harper Zappone, and Anthony Thompson, Chau Tran, Anthony Segrest, Luke Tonon

TL;DR
This paper introduces an AI-powered drone system with deep learning models to accurately detect and count blueberries, improving crop yield estimation through intelligent image capture and analysis.
Contribution
The paper develops a novel drone-based AI pipeline with YOLO models for blueberry detection, enhancing yield estimation accuracy and deployment strategies.
Findings
High precision and recall in blueberry detection
Effective field mapping with sampling strategies
Addressed challenges in small object annotation
Abstract
We present an AI pipeline that involves using smart drones equipped with computer vision to obtain a more accurate fruit count and yield estimation of the number of blueberries in a field. The core components are two object-detection models based on the YOLO deep learning architecture: a Bush Model that is able to detect blueberry bushes from images captured at low altitudes and at different angles, and a Berry Model that can detect individual berries that are visible on a bush. Together, both models allow for more accurate crop yield estimation by allowing intelligent control of the drone's position and camera to safely capture side-view images of bushes up close. In addition to providing experimental results for our models, which show good accuracy in terms of precision and recall when captured images are cropped around the foreground center bush, we also describe how to deploy our…
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Taxonomy
TopicsSmart Agriculture and AI · Greenhouse Technology and Climate Control
