TL;DR
This paper presents an embedded robotic system that automatically captures and labels large-scale plant image datasets from various angles, significantly accelerating data generation for machine learning in agriculture.
Contribution
The authors developed a novel embedded system capable of rapid, automated plant image collection and labeling, addressing data scarcity in agricultural ML applications.
Findings
Generated over 34,000 labeled plant images.
Trained a model to distinguish grasses from non-grasses.
System can produce thousands of images per day.
Abstract
A lack of sufficient training data, both in terms of variety and quantity, is often the bottleneck in the development of machine learning (ML) applications in any domain. For agricultural applications, ML-based models designed to perform tasks such as autonomous plant classification will typically be coupled to just one or perhaps a few plant species. As a consequence, each crop-specific task is very likely to require its own specialized training data, and the question of how to serve this need for data now often overshadows the more routine exercise of actually training such models. To tackle this problem, we have developed an embedded robotic system to automatically generate and label large datasets of plant images for ML applications in agriculture. The system can image plants from virtually any angle, thereby ensuring a wide variety of data; and with an imaging rate of up to one…
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