A framework for river connectivity classification using temporal image processing and attention based neural networks
Timothy James Becker, Derin Gezgin, Jun Yi He Wu, Mary Becker

TL;DR
This paper presents an automated system using image processing and attention-based neural networks to classify river connectivity from trail camera images, improving accuracy and reducing manual effort.
Contribution
It introduces a novel framework combining temporal image processing and vision transformers for river connectivity classification, enhancing accuracy on unseen site images.
Findings
Achieved 90% accuracy with the proposed method
Effective classification of unseen river images
Improved over baseline accuracy of 75%
Abstract
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…
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Taxonomy
TopicsWater Quality Monitoring Technologies · Underwater Vehicles and Communication Systems
MethodsAttention Is All You Need · Softmax · Layer Normalization · Linear Layer · Dense Connections · Residual Connection · Multi-Head Attention · Diffusion · Balanced Selection · Vision Transformer
