Agtech Framework for Cranberry-Ripening Analysis Using Vision Foundation Models
Faith Johnson, Ryan Meegan, Jack Lowry, Peter Oudemans, Kristin Dana

TL;DR
This paper presents a novel AI-based framework using vision models and drone imaging to analyze cranberry ripening, enabling detailed phenotyping and supporting crop breeding and disease detection.
Contribution
It introduces a new multi-modal imaging framework with vision transformers and dimensionality reduction for cranberry ripening analysis, applicable to other crops.
Findings
Effective berry appearance tracking over time
Quantitative ripening metrics derived from visual features
Comparison of cranberry varieties based on ripening paths
Abstract
Agricultural domains are being transformed by recent advances in AI and computer vision that support quantitative visual evaluation. Using aerial and ground imaging over a time series, we develop a framework for characterizing the ripening process of cranberry crops, a crucial component for precision agriculture tasks such as comparing crop breeds (high-throughput phenotyping) and detecting disease. Using drone imaging, we capture images from 20 waypoints across multiple bogs, and using ground-based imaging (hand-held camera), we image same bog patch using fixed fiducial markers. Both imaging methods are repeated to gather a multi-week time series spanning the entire growing season. Aerial imaging provides multiple samples to compute a distribution of albedo values. Ground imaging enables tracking of individual berries for a detailed view of berry appearance changes. Using vision…
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