Opportunity ID: 316818
General Information
Document Type: | Grants Notice |
Funding Opportunity Number: | USGS-19-FA-0203 |
Funding Opportunity Title: | Deep Learning for Automated Detection and Classification of Waterfowl, Seabirds, and other Wildlife from Digital Aerial Imagery |
Opportunity Category: | Discretionary |
Opportunity Category Explanation: | – |
Funding Instrument Type: | Cooperative Agreement |
Category of Funding Activity: | Natural Resources |
Category Explanation: | – |
Expected Number of Awards: | 1 |
Assistance Listings: | 15.808 — U.S. Geological Survey Research and Data Collection |
Cost Sharing or Matching Requirement: | No |
Version: | Synopsis 1 |
Posted Date: | Jun 07, 2019 |
Last Updated Date: | Jun 07, 2019 |
Original Closing Date for Applications: | Jun 17, 2019 |
Current Closing Date for Applications: | Jun 17, 2019 |
Archive Date: | Jul 17, 2019 |
Estimated Total Program Funding: | $85,000 |
Award Ceiling: | $85,000 |
Award Floor: | $85,000 |
Eligibility
Eligible Applicants: | Public and State controlled institutions of higher education |
Additional Information on Eligibility: | – |
Additional Information
Agency Name: | Geological Survey |
Description: |
The Bureau of Ocean Energy Management (BOEM), and the US Fish and Wildlife Service (USFWS) Division of Migratory Bird Management (DMBM), Branch of Migratory Bird Surveys, and US Geological Survey (USGS) are funding and collaborating on studies to develop deep learning algorithms that automate the process of detecting and classifying waterfowl, seabirds, and other marine wildlife species. BOEM has prioritized the use of Outer Continental Shelf Program funds by USGS in FY19, FY20, and FY21 to advance development of an imagery and annotation database and development of deep learning algorithms (DLA) (https://www.boem.gov/Environmental-Stewardship/Environmental-Studies/Partnerships/Partner-USGS.aspx). This project will advance the application of computer vision and deep learning methods to automated detection and classification of waterfowl, seabirds, and other marine wildlife species from digital aerial imagery. |
Link to Additional Information: | – |
Grantor Contact Information: | If you have difficulty accessing the full announcement electronically, please contact:
Desiree T Santa
Grant Specialist Phone 703-648-7382 Email:dsanta@usgs.gov |
Version History
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