Software, Data & Models used in "Identifying Animal Species in Camera Trap Images using Deep Learning and Citizen Science"
2018-08-28
Loading...
Persistent link to this item
Statistics
View StatisticsCollection period
Date completed
Date updated
Time period coverage
Geographic coverage
Source information
Journal Title
Journal ISSN
Volume Title
Title
Software, Data & Models used in "Identifying Animal Species in Camera Trap Images using Deep Learning and Citizen Science"
Published Date
2018-08-28
Author Contact
Willi, Marco
will5448@umn.edu
will5448@umn.edu
Type
Dataset
Programming Software Code
Statistical Computing Software Code
Programming Software Code
Statistical Computing Software Code
Abstract
This dataset provides the software, the models, and other data used in "Identifying Animal Species in Camera Trap Images using Deep
Learning and Citizen Science". This dataset contains the software to train convolutional neural networks, as well as all models trained for the study and code to apply them on new images. Additionally, data defining the conducted experiments are provided to ensure reproducibility.
Description
Referenced by
Willi M, Pitman R, Cardoso A, Locke C, Swanson A, Boyer A, Veldthuis M, Fortson L, Identifying Animal Species in Camera Trap Images using Deep Learning and Citizen Science, 2018, Methods in Ecology and Evolution
https://doi.org/10.1111/2041-210X.13099
https://doi.org/10.1111/2041-210X.13099
Replaces
item.page.isreplacedby
Publisher
Collections
Funding information
This study was partially supported by the NSF under award IIS 1619177
The development of the Zooniverse platform was partially supported by a Global Impact Award from Google.
We also acknowledge support from STFC under grant ST/N003179/1.
EE was funded by the University of Oxford’s Hertford College Mortimer May fund.
The development of the Zooniverse platform was partially supported by a Global Impact Award from Google.
We also acknowledge support from STFC under grant ST/N003179/1.
EE was funded by the University of Oxford’s Hertford College Mortimer May fund.
item.page.sponsorshipfunderid
item.page.sponsorshipfundingagency
item.page.sponsorshipgrant
Previously Published Citation
Other identifiers
Suggested citation
Willi, Marco; Pitman, Ross T; Cardoso, Anabelle W; Locke, Christina; Swanson, Alexandra; Boyer, Amy; Veldthuis, Marten; Fortson, Lucy. (2018). Software, Data & Models used in "Identifying Animal Species in Camera Trap Images using Deep Learning and Citizen Science". Retrieved from the Data Repository for the University of Minnesota (DRUM), https://doi.org/10.13020/D6P67B.
View/Download File
Content distributed via the University Digital Conservancy may be subject to additional license and use restrictions applied by the depositor. By using these files, users agree to the Terms of Use. Materials in the UDC may contain content that is disturbing and/or harmful. For more information, please see our statement on harmful content in digital repositories.