Author:
Bergler Christian,Gebhard Alexander,Towers Jared R.,Butyrev Leonid,Sutton Gary J.,Shaw Tasli J. H.,Maier Andreas,Nöth Elmar
Abstract
AbstractBiometric identification techniques such as photo-identification require an array of unique natural markings to identify individuals. From 1975 to present, Bigg’s killer whales have been photo-identified along the west coast of North America, resulting in one of the largest and longest-running cetacean photo-identification datasets. However, data maintenance and analysis are extremely time and resource consuming. This study transfers the procedure of killer whale image identification into a fully automated, multi-stage, deep learning framework, entitled FIN-PRINT. It is composed of multiple sequentially ordered sub-components. FIN-PRINT is trained and evaluated on a dataset collected over an 8-year period (2011–2018) in the coastal waters off western North America, including 121,000 human-annotated identification images of Bigg’s killer whales. At first, object detection is performed to identify unique killer whale markings, resulting in 94.4% recall, 94.1% precision, and 93.4% mean-average-precision (mAP). Second, all previously identified natural killer whale markings are extracted. The third step introduces a data enhancement mechanism by filtering between valid and invalid markings from previous processing levels, achieving 92.8% recall, 97.5%, precision, and 95.2% accuracy. The fourth and final step involves multi-class individual recognition. When evaluated on the network test set, it achieved an accuracy of 92.5% with 97.2% top-3 unweighted accuracy (TUA) for the 100 most commonly photo-identified killer whales. Additionally, the method achieved an accuracy of 84.5% and a TUA of 92.9% when applied to the entire 2018 image collection of the 100 most common killer whales. The source code of FIN-PRINT can be adapted to other species and will be publicly available.
Publisher
Springer Science and Business Media LLC
Reference91 articles.
1. Jain, A. K., Ross, A. & Prabhakar, S. An introduction to biometric recognition. IEEE Trans. Circuits Syst. Video Technol. Special Issue on Image- Video-Based Biom. 14 (2004).
2. Tripathi, K. P. A comparative study of biometric technologies with reference to human interface. Int. J. Comput. Appl. 14, 10–15 (2011).
3. Frisch, A. J. & Hobbs, J. A. Photographic identification based on unique, polymorphic colour patterns: A novel method for tracking a marine crustacean. J. Exp. Mar. Biol. Ecol. 351, 294–299 (2007).
4. Hammond, P. S., Mizroch, S. A., Donovan, G. P. & Commission, I. W. Individual Recognition of Cetaceans: Use of Photo-identification and Other Techniques to Estimate Population Parameters : Incorporating the Proceedings of the Symposium and Workshop on Individual Recognition and the Estimation of Cetacean Population Parameters. Reports of the International Whaling Commission: Special issue (International Whaling Commission, 1990). https://books.google.de/books?id=xMccAQAAIAAJ.
5. Patton, F. J. & Campbell, P. E. Using eye and profile wrinkles to identify individual white rhinos. Pachyderm 50, 84–86 (2011).
Cited by
9 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献