CVSep 20, 2016

Automated Visual Fin Identification of Individual Great White Sharks

arXiv:1609.06323v252 citations
AI Analysis

This addresses the need for efficient individual animal tracking in marine biology, representing a novel application rather than an incremental improvement in computer vision.

The paper tackles the problem of automated visual identification of individual great white sharks from dorsal fin images, establishing the first fully automated contour-based system in animal biometrics and reporting recognition results on thousands of unconstrained images.

This paper discusses the automated visual identification of individual great white sharks from dorsal fin imagery. We propose a computer vision photo ID system and report recognition results over a database of thousands of unconstrained fin images. To the best of our knowledge this line of work establishes the first fully automated contour-based visual ID system in the field of animal biometrics. The approach put forward appreciates shark fins as textureless, flexible and partially occluded objects with an individually characteristic shape. In order to recover animal identities from an image we first introduce an open contour stroke model, which extends multi-scale region segmentation to achieve robust fin detection. Secondly, we show that combinatorial, scale-space selective fingerprinting can successfully encode fin individuality. We then measure the species-specific distribution of visual individuality along the fin contour via an embedding into a global `fin space'. Exploiting this domain, we finally propose a non-linear model for individual animal recognition and combine all approaches into a fine-grained multi-instance framework. We provide a system evaluation, compare results to prior work, and report performance and properties in detail.

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