A framework for river connectivity classification using temporal image processing and attention based neural networks
Measuring the connectivity of water in rivers and streams is essential for effective water resource management. Increased extreme weather events associated with climate change can result in alterations to river and stream connectivity. While traditional stream flow gauges are costly to deploy and li...
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Main Authors | , , , |
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Format | Journal Article |
Language | English |
Published |
01.02.2025
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Subjects | |
Online Access | Get full text |
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Summary: | Measuring the connectivity of water in rivers and streams is essential for
effective water resource management. Increased extreme weather events
associated with climate change can result in alterations to river and stream
connectivity. While traditional stream flow gauges are costly to deploy and
limited to large river bodies, trail camera methods are a low-cost and easily
deployed alternative to collect hourly data. Image capturing, however requires
stream ecologists to manually curate (select and label) tens of thousands of
images per year. To improve this workflow, we developed an automated instream
trail camera image classification system consisting of three parts: (1) image
processing, (2) image augmentation and (3) machine learning. The image
preprocessing consists of seven image quality filters, foliage-based luma
variance reduction, resizing and bottom-center cropping. Images are balanced
using variable amount of generative augmentation using diffusion models and
then passed to a machine learning classification model in labeled form. By
using the vision transformer architecture and temporal image enhancement in our
framework, we are able to increase the 75% base accuracy to 90% for a new
unseen site image. We make use of a dataset captured and labeled by staff from
the Connecticut Department of Energy and Environmental Protection between
2018-2020. Our results indicate that a combination of temporal image processing
and attention-based models are effective at classifying unseen river
connectivity images. |
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DOI: | 10.48550/arxiv.2502.00474 |