Automated video-based pain recognition in cats using facial landmarks.

Journal: Scientific reports
PMID:

Abstract

Affective states are reflected in the facial expressions of all mammals. Facial behaviors linked to pain have attracted most of the attention so far in non-human animals, leading to the development of numerous instruments for evaluating pain through facial expressions for various animal species. Nevertheless, manual facial expression analysis is susceptible to subjectivity and bias, is labor-intensive and often necessitates specialized expertise and training. This challenge has spurred a growing body of research into automated pain recognition, which has been explored for multiple species, including cats. In our previous studies, we have presented and studied artificial intelligence (AI) pipelines for automated pain recognition in cats using 48 facial landmarks grounded in cats' facial musculature, as well as an automated detector of these landmarks. However, so far automated recognition of pain in cats used solely static information obtained from hand-picked single images of good quality. This study takes a significant step forward in fully automated pain detection applications by presenting an end-to-end AI pipeline that requires no manual efforts in the selection of suitable images or their landmark annotation. By working with video rather than still images, this new pipeline approach also optimises the temporal dimension of visual information capture in a way that is not practical to preform manually. The presented pipeline reaches over 70% and 66% accuracy respectively in two different cat pain datasets, outperforming previous automated landmark-based approaches using single frames under similar conditions, indicating that dynamics matter in cat pain recognition. We further define metrics for measuring different dimensions of deficiencies in datasets with animal pain faces, and investigate their impact on the performance of the presented pain recognition AI pipeline.

Authors

  • George Martvel
    Information Systems Department, University of Haifa, Haifa, Israel.
  • Teddy Lazebnik
    Department of Mathematics, Ariel University, Ariel, Israel.
  • Marcelo Feighelstein
    Information Systems Department, University of Haifa, Haifa, Israel.
  • Lea Henze
    Department of Small Animal Medicine and Surgery, University of Veterinary Medicine Hannover, Hanover, Germany.
  • Sebastian Meller
    Department of Small Animal Medicine and Surgery, University of Veterinary Medicine Hannover, Hannover, Germany.
  • Ilan Shimshoni
    Information Systems Department, University of Haifa, Haifa, Israel.
  • Friederike Twele
    Department of Small Animal Medicine and Surgery, University of Veterinary Medicine Hannover, Hanover, Germany.
  • Alexandra Schütter
    Department of Small Animal Medicine and Surgery, University of Veterinary Medicine Hannover, Hanover, Germany.
  • Nora Foraita
    Department of Small Animal Medicine and Surgery, University of Veterinary Medicine Hannover, Hanover, Germany.
  • Sabine Kästner
    Department of Small Animal Medicine and Surgery, University of Veterinary Medicine Hannover, Hanover, Germany.
  • Lauren Finka
    Cats Protection, National Cat Centre, Sussex, United Kingdom.
  • Stelio P L Luna
    School of Veterinary Medicine and Animal Science, São Paulo State University (Unesp), São Paulo, Brazil.
  • Daniel S Mills
    Joseph Bank Laboratories, School of Life Sciences, University of Lincoln, Lincoln, United Kingdom.
  • Holger A Volk
    Department of Small Animal Medicine and Surgery, University of Veterinary Medicine Hannover, Hannover, Germany.
  • Anna Zamansky
    Information Systems Department, University of Haifa, Haifa, Israel.