| Literature DB >> 30259577 |
Robert Bogucki1, Marek Cygan2, Christin Brangwynne Khan3, Maciej Klimek1, Jan Kanty Milczek1, Marcin Mucha2.
Abstract
Photo identification is an important tool for estimating abundance and monitoring population trends over time. However, manually matching photographs to known individuals is time-consuming. Motivated by recent developments in image recognition, we hosted a data science challenge on the crowdsourcing platform Kaggle to automate the identification of endangered North Atlantic right whales (Eubalaena glacialis). The winning solution automatically identified individual whales with 87% accuracy with a series of convolutional neural networks to identify the region of interest on an image, rotate, crop, and create standardized photographs of uniform size and orientation and then identify the correct individual whale from these passport-like photographs. Recent advances in deep learning coupled with this fully automated workflow have yielded impressive results and have the potential to revolutionize traditional methods for the collection of data on the abundance and distribution of wild populations. Presenting these results to a broad audience should further bridge the gap between the data science and conservation science communities.Entities:
Keywords: Kaggle competition; Kaggle 网站竞赛; algorithm; algoritmo; aprendizaje automático; automated image recognition; competencia Kaggle; computer vision; convolutional neural networks; identificación fotográfica; machine learning; photo identification; reconocimiento automatizado de imágenes; redes neurales convolucionales; visión computarizada; 卷积神经网络; 机器学习; 照片识别; 算法; 自动图像识别; 计算机视觉
Year: 2018 PMID: 30259577 DOI: 10.1111/cobi.13226
Source DB: PubMed Journal: Conserv Biol ISSN: 0888-8892 Impact factor: 6.560