Self-supervised Learning for Hyperspectral Images of Trees
Rahman, Moqsadur, Kumar, Saurav, Palmate, Santosh S., Hossain, M. Shahriar
–arXiv.org Artificial Intelligence
Aerial remote sensing using multispectral and RGB imagers has provided a critical impetus to precision agriculture. Analysis of the hyperspectral images with limited or no labels is challenging. This paper focuses on self-supervised learning to create neural network embeddings reflecting vegetation properties of trees from aerial hyperspectral images of crop fields. Experimental results demonstrate that a constructed tree representation, using a vegetation property-related embedding space, performs better in downstream machine learning tasks compared to the direct use of hyperspectral vegetation properties as tree representations.
arXiv.org Artificial Intelligence
Sep-9-2025
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