Published November 22, 2022 | Version v1.0
Dataset Open

Images and 4-class labels for semantic segmentation of Sentinel-2 and Landsat RGB, NIR, and SWIR satellite images of coasts (water, whitewater, sediment, other)

  • 1. Marda Science LLC

Description

Images and 4-class labels for semantic segmentation of Sentinel-2 and Landsat RGB, NIR, and SWIR satellite images of coasts (water, whitewater, sediment, other)

Description

579 images and 579 associated labels for semantic segmentation of Sentinel-2 and Landsat RGB satellite images of coasts. The 4 classes are 0=water, 1=whitewater, 2=sediment, 3=other

These images and labels have been made using the Doodleverse software package, Doodler*. These images and labels could be used within numerous Machine Learning frameworks for image segmentation, but have specifically been made for use with the Doodleverse software package, Segmentation Gym**.

Some (422) of these images and labels were originally included in the Coast Train*** data release, and have been modified from their original by reclassifying from the original classes to the present 4 classes.

The label images are a subset of the following data release**** https://doi.org/10.5281/zenodo.7335647

Imagery comes from the following 10 sand beach sites:

  1. Duck, NC, Hatteras NC, USA
  2. Santa Cruz CA, USA
  3. Galveston TX, USA
  4. Truc Vert,France
  5. Sunset State Beach CA, USA
  6. Torrey Pines CA, USA
  7. Narrabeen, NSW, Australia
  8. Elwha WA, USA
  9. Ventura region, CA, USA
  10. Klamath region, CA USA

Imagery are a mixture of 10-m Sentinel-2 and 15-m pansharpened Landsat 7, 8, and 9 visible-band imagery of various sizes. Red, Green, Blue, NIR, and SWIR bands only

File descriptions

  1. classes.txt, a file containing the class names
  2. images.zip, a zipped folder containing the 3-band RGB images of varying sizes and extents
  3. nir.zip, a zipped folder containing the corresponding near-infrared (NIR) imagery
  4. swir.zip, a zipped folder containing the corresponding shortwave-infrared (SWIR) imagery
  5. labels.zip, a zipped folder containing the 1-band label images
  6. overlays.zip, a zipped folder containing a semi-transparent overlay of the color-coded label on the image (blue=0=water, red=1=whitewater, yellow=2=sediment, green=3=other)
  7. resized_images.zip, RGB images resized to 512x512x3 pixels
  8. resized_nir.zip, NIR images resized to 512x512x3 pixels
  9. resized_swir.zip, SWIR images resized to 512x512x3 pixels
  10. resized_labels.zip, label images resized to 512x512 pixels

References

*Doodler: Buscombe, D., Goldstein, E.B., Sherwood, C.R., Bodine, C., Brown, J.A., Favela, J., Fitzpatrick, S., Kranenburg, C.J., Over, J.R., Ritchie, A.C. and Warrick, J.A., 2021. Human‐in‐the‐Loop Segmentation of Earth Surface Imagery. Earth and Space Science, p.e2021EA002085https://doi.org/10.1029/2021EA002085. See https://github.com/Doodleverse/dash_doodler.

**Segmentation Gym: Buscombe, D., & Goldstein, E. B. (2022). A reproducible and reusable pipeline for segmentation of geoscientific imagery. Earth and Space Science, 9, e2022EA002332. https://doi.org/10.1029/2022EA002332 See: https://github.com/Doodleverse/segmentation_gym

***Coast Train data release: Wernette, P.A., Buscombe, D.D., Favela, J., Fitzpatrick, S., and Goldstein E., 2022, Coast Train--Labeled imagery for training and evaluation of data-driven models for image segmentation: U.S. Geological Survey data release, https://doi.org/10.5066/P91NP87I. See https://coasttrain.github.io/CoastTrain/ for more information

**** Buscombe, Daniel, Goldstein, Evan, Bernier, Julie, Bosse, Stephen, Colacicco, Rosa, Corak, Nick, Fitzpatrick, Sharon, del Jesús González Guillén, Anais, Ku, Venus, Paprocki, Julie, Platt, Lindsay, Steele, Bethel, Wright, Kyle, & Yasin, Brandon. (2022). Images and 4-class labels for semantic segmentation of Sentinel-2 and Landsat RGB satellite images of coasts (water, whitewater, sediment, other) (v1.0) [Data set]. Zenodo. https://doi.org/10.5281/zenodo.7335647

Files

classes.txt

Files (359.5 MB)

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