Images and annotations to automate the classification of avian species
June 29, 2023
This dataset is a collection of cropped avian images that pair with species identification annotation values.
Citation Information
Publication Year | 2023 |
---|---|
Title | Images and annotations to automate the classification of avian species |
DOI | 10.5066/P9YL80R6 |
Authors | Zhongqi Miao, Luke J Fara, Dave Fronczak, Kyle L Landolt, Anna M Bragger, Mark Koneff, Barb Lubinski, Larry R Robinson, Sarah F Yates |
Product Type | Data Release |
Record Source | USGS Digital Object Identifier Catalog |
USGS Organization | Upper Midwest Environmental Sciences Center |
Related Content
Challenges and solutions for automated avian recognition in aerial imagery
Remote aerial sensing provides a non-invasive, large geographical-scale technology for avian monitoring, but the manual processing of images limits its development and applications. Artificial Intelligence (AI) methods can be used to mitigate this manual image processing requirement. The implementation of AI methods, however, has several challenges: (1) imbalanced (i.e., long-tailed) data distribu
Authors
Zhonqgi Miao, Stella X Yu, Kyle Lawrence Landolt, Mark D. Koneff, Timothy White, Luke J. Fara, Enrika Hlavacek, Bradley A. Pickens, Travis J. Harrison, Wayne M. Getz
Related Content
Challenges and solutions for automated avian recognition in aerial imagery
Remote aerial sensing provides a non-invasive, large geographical-scale technology for avian monitoring, but the manual processing of images limits its development and applications. Artificial Intelligence (AI) methods can be used to mitigate this manual image processing requirement. The implementation of AI methods, however, has several challenges: (1) imbalanced (i.e., long-tailed) data distribu
Authors
Zhonqgi Miao, Stella X Yu, Kyle Lawrence Landolt, Mark D. Koneff, Timothy White, Luke J. Fara, Enrika Hlavacek, Bradley A. Pickens, Travis J. Harrison, Wayne M. Getz