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Published December 2, 2020 | Version 2
Dataset Open

Semantic Segmentation of Time Series Imagery Using Deep Convolutional Neural Networks: A Case Study of Sandbars in Grand Canyon

  • 1. Northern Arizona University
  • 2. Marda Science LLC
  • 3. U.S. Geological Survey
  • 4. Southern Utah University

Description

This dataset contains imagery used to train and test Deep Convolutional Neural Networks for the purpose of binary semantic segmentation of a time series of oblique imagery capturing sandbar monitoring sites in The Grand Canyon. In addition the scripts needed for removing image distortion, registering, rectifying, and labeling imagery is present. 

Files

WRR_Segmentation_Data.zip

Files (2.0 GB)

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md5:fe87b297c8d52858aacbb7a1d6d4981e
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