CVMay 7, 2023

CatFLW: Cat Facial Landmarks in the Wild Dataset

arXiv:2305.04232v111 citations
Originality Synthesis-oriented
AI Analysis

This addresses a gap in animal affective computing for researchers, though it is incremental as it builds on existing efforts in animal tracking and facial analysis.

The paper tackles the lack of datasets for automated facial analysis of animals by presenting CatFLW, a dataset with 2016 images of cat faces annotated with 48 facial landmarks, which is the largest such dataset available.

Animal affective computing is a quickly growing field of research, where only recently first efforts to go beyond animal tracking into recognizing their internal states, such as pain and emotions, have emerged. In most mammals, facial expressions are an important channel for communicating information about these states. However, unlike the human domain, there is an acute lack of datasets that make automation of facial analysis of animals feasible. This paper aims to fill this gap by presenting a dataset called Cat Facial Landmarks in the Wild (CatFLW) which contains 2016 images of cat faces in different environments and conditions, annotated with 48 facial landmarks specifically chosen for their relationship with underlying musculature, and relevance to cat-specific facial Action Units (CatFACS). To the best of our knowledge, this dataset has the largest amount of cat facial landmarks available. In addition, we describe a semi-supervised (human-in-the-loop) method of annotating images with landmarks, used for creating this dataset, which significantly reduces the annotation time and could be used for creating similar datasets for other animals. The dataset is available on request.

Foundations

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