Litcius/Paper detail

Species-Agnostic Patterned Animal Re-identification by Aggregating Deep Local Features

Ekaterina Nepovinnykh, Ilia Chelak, Tuomas Eerola, Veikka Immonen, Heikki Kälviäinen, Maksim Kholiavchenko, Charles V. Stewart

2024International Journal of Computer Vision19 citationsDOIOpen Access PDF

Abstract

Abstract Access to large image volumes through camera traps and crowdsourcing provides novel possibilities for animal monitoring and conservation. It calls for automatic methods for analysis, in particular, when re-identifying individual animals from the images. Most existing re-identification methods rely on either hand-crafted local features or end-to-end learning of fur pattern similarity. The former does not need labeled training data, while the latter, although very data-hungry typically outperforms the former when enough training data is available. We propose a novel re-identification pipeline that combines the strengths of both approaches by utilizing modern learnable local features and feature aggregation. This creates representative pattern feature embeddings that provide high re-identification accuracy while allowing us to apply the method to small datasets by using pre-trained feature descriptors. We report a comprehensive comparison of different modern local features and demonstrate the advantages of the proposed pipeline on two very different species.

Topics & Concepts

Pipeline (software)Computer scienceIdentification (biology)Artificial intelligencePattern recognition (psychology)Feature (linguistics)CrowdsourcingSimilarity (geometry)Machine learningData miningImage (mathematics)LinguisticsBiologyProgramming languageBotanyWorld Wide WebPhilosophyIdentification and Quantification in FoodAdvanced Image and Video Retrieval TechniquesVideo Surveillance and Tracking Methods