Litcius/Paper detail

Going Deeper than Tracking: A Survey of Computer-Vision Based Recognition of Animal Pain and Emotions

Sofia Broomé, Marcelo Feighelstein, Anna Zamansky, Gabriel Carreira Lencioni, Pia Haubro Andersen, Francisca Pessanha, Marwa Mahmoud, Hedvig Kjellström, Albert Ali Salah

2022International Journal of Computer Vision71 citationsDOIOpen Access PDF

Abstract

Abstract Advances in animal motion tracking and pose recognition have been a game changer in the study of animal behavior. Recently, an increasing number of works go ‘deeper’ than tracking, and address automated recognition of animals’ internal states such as emotions and pain with the aim of improving animal welfare, making this a timely moment for a systematization of the field. This paper provides a comprehensive survey of computer vision-based research on recognition of pain and emotional states in animals, addressing both facial and bodily behavior analysis. We summarize the efforts that have been presented so far within this topic—classifying them across different dimensions, highlight challenges and research gaps, and provide best practice recommendations for advancing the field, and some future directions for research.

Topics & Concepts

Field (mathematics)Tracking (education)Computer scienceFacial recognition systemArtificial intelligenceMotion (physics)Animal welfareHuman–computer interactionComputer visionPsychologyData sciencePattern recognition (psychology)Pure mathematicsMathematicsEcologyPedagogyBiologyAnimal Behavior and Welfare StudiesHuman-Animal Interaction StudiesVeterinary Pharmacology and Anesthesia