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Deep learning classification of landforms from lidar-derived elevation models in the glaciated portion of the northern Delaware River Basin of New Jersey, New York, and Pennsylvania

Metadata Updated: January 22, 2026

The Delaware River Basin (DRB) covers portions of five states (Delaware, Maryland, New Jersey, New York, and Pennsylvania) and several geologic provinces, encompassing much of the complex geology of the Mid-Atlantic region. This data release focuses on the recently glaciated northern DRB, which includes portions of New Jersey, New York, and Pennsylvania. Groundwater storage is conceptualized to be greatest in the glacial surficial aquifers in the upper part of the basin, thus characterization of this critical zone is of primary importance for USGS Next Generation Water Observing System (NGWOS) modeling of baseflow to the upper Delaware River. In support of this effort, we trained four deep learning models to classify surficial materials in unique physiographic areas of the northern DRB, using previously published surficial geologic maps as training data. First, we compiled existing digital surficial geologic map data at various scales (1:100,000 to 1:24,000), with high-resolution data taking precedent where available. Next, we generalized the compiled map data to the following categories: alluvium, anthropogenic, bedrock, colluvium, drumlins, glaciofluvial, glaciolacustrine (coarse), ice-contact stratified, marsh, moraine, pre-Illinoian glacial, till, and water bodies.
We then compiled lidar data for the entire northern DRB and generated a derivative RGB composite raster to facilitate the training and running of convolutional neural networks (Odom and Doctor, 2023; Maxwell et al., 2023). The resultant geologic data and imagery were then clipped to four distinct physiographic areas: "Eastern Valley and Ridge", "Northern Glaciated Plateau", "Terminal Moraine Plateau", & "Western Valley and Ridge". We then trained a DeepLabV3+ pixel classification model for each region, reserving 10% of geologic training polygons for validation during the training process. The resultant models, which had training times ranging from 21-41 hours, featured F1 values ranging from 0.85-0.91 at the final epoch of training. External validation using geologic maps likewise demonstrated satisfactory performance. The trained models were then run on their respective physiographic areas, and the results joined in a mosaic classification of the northern DRB. References: Maxwell, A.M., Odom, W.E., Shobe, C.M., Doctor, D.H., Bester, M.S., Ore, T.M, 2023. Exploring the Influence of Input Feature Space on CNN-Based Geomorphic Feature Extraction From Digital Terrain Data. Earth and Space Science, 10. https://doi.org/10.1029/2023EA002845 Odom, W.E., Doctor, D.H., 2023. Rapid estimation of minimum depth-to-bedrock from lidar leveraging deep-learning-derived surficial material maps. Applied Computing and Geosciences, 18. https://doi.org/10.1016/j.acags.2023.100116

Access & Use Information

Public: This dataset is intended for public access and use. License: No license information was provided. If this work was prepared by an officer or employee of the United States government as part of that person's official duties it is considered a U.S. Government Work.

Downloads & Resources

Dates

Metadata Created Date January 11, 2026
Metadata Updated Date January 22, 2026

Metadata Source

Harvested from DOI USGS DCAT-US

Additional Metadata

Resource Type Dataset
Metadata Created Date January 11, 2026
Metadata Updated Date January 22, 2026
Publisher U.S. Geological Survey
Maintainer
Identifier http://datainventory.doi.gov/id/dataset/USGS_6703f8c0d34eabaa4a39b91b
Data Last Modified 2024-12-20T00:00:00Z
Category geospatial
Public Access Level public
Bureau Code 010:12
Metadata Context https://project-open-data.cio.gov/v1.1/schema/catalog.jsonld
Metadata Catalog ID https://ddi.doi.gov/usgs-data.json
Schema Version https://project-open-data.cio.gov/v1.1/schema
Catalog Describedby https://project-open-data.cio.gov/v1.1/schema/catalog.json
Datagov Dedupe Retained 20260122015221
Harvest Object Id 7b3456a6-468e-4d0a-a8c2-e91b5322c5e7
Harvest Source Id 2b80d118-ab3a-48ba-bd93-996bbacefac2
Harvest Source Title DOI USGS DCAT-US
Metadata Type geospatial
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Source Datajson Identifier True
Source Hash dbc1ccc4139bcdfb4b35dec3db335b1e08e37af3369d7452e8dffe708306ec35
Source Schema Version 1.1
Spatial {"type": "Polygon", "coordinates": -76.1046, 40.7279, -76.1046, 42.4613, -74.3527, 42.4613, -74.3527, 40.7279, -76.1046, 40.7279}

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