Dear MARMAM readers, on-behalf of my co-authors, I am pleased to share our new 
publication:


Advanced image recognition: a fully automated, high-accuracy 
photo-identification matching system for humpback whales. 



Authors: Cheeseman T, Southerland K, Park J, Olio M, Flynn K, Calambokidis J, 
Jones L, Garrigue C, Frisch Jordán A, Howard A, Reade W, Neilson J, Gabriele C, 
Clapham P (2021) 

Mamm Biol 2021 1–15. doi: 10.1007/S42991-021-00180-9

An online (but not downloadable) full version is available here: 
https://rdcu.be/cCOtw or send me an email if you’d like a pdf

We describe the development and application of a new convolutional neural 
network-based photo-identification algorithm for individual humpback whales 
(Megaptera novaeangliae). The method uses a Densely Connected Convolutional 
Network (DenseNet) to extract special keypoints of an image of the ventral 
surface of the fluke and then a separate DenseNet trained to look for features 
within these keypoints. The extracted features are then compared against those 
of the reference set of previously known humpback whales for similarity. This 
offers the potential to successfully automate recognition of individuals in 
large photographic datasets such as in ocean basin-wide marine mammal studies. 
The algorithm requires minimal image pre-processing and is capable of accurate, 
rapid matching of fair to high-quality humpback fluke photographs. In real 
world testing compared to manual image matching, the algorithm reduces image 
management time by at least 98% and reduces error rates of missing potential 
matches from approximately 6–9% to 1–3%. The success of this new system permits 
automated comparisons to be made for the first time across photo-identification 
datasets with tens to hundreds of thousands of individually identified 
encounters, with profound implications for long-term and large population 
studies of the species.

…or more succinctly: we built a magic box that can ID most any humpback whale 
fluke nearly instantly and have now aggregated in Happywhale.com a database of 
over 64000 individuals in one global dataset. We believe this tool is bettering 
the lot of marine conservation; that’s the goal.

Yay whales :)
Ted

—
Ted Cheeseman
[email protected]
www.Happywhale.com
https://www.facebook.com/happywhales/

** know your whales :) **

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