Multi-Cat Monitoring System Based on Concept Drift Adaptive Machine Learning Architecture

Sensors (Basel). 2023 Oct 31;23(21):8852. doi: 10.3390/s23218852.

Abstract

In multi-cat households, monitoring individual cats' various behaviors is essential for diagnosing their health and ensuring their well-being. This study focuses on the defecation and urination activities of cats, and introduces an adaptive cat identification architecture based on deep learning (DL) and machine learning (ML) methods. The architecture comprises an object detector and a classification module, with the primary focus on the design of the classification component. The DL object detection algorithm, YOLOv4, is used for the cat object detector, with the convolutional neural network, EfficientNetV2, serving as the backbone for our feature extractor in identity classification with several ML classifiers. Additionally, to address changes in cat composition and individual cat appearances in multi-cat households, we propose an adaptive concept drift approach involving retraining the classification module. To support our research, we compile a comprehensive cat body dataset comprising 8934 images of 36 cats. After a rigorous evaluation of different combinations of DL models and classifiers, we find that the support vector machine (SVM) classifier yields the best performance, achieving an impressive identification accuracy of 94.53%. This outstanding result underscores the effectiveness of the system in accurately identifying cats.

Keywords: animal monitoring; cat identification; computer vision; machine learning; model retraining.

MeSH terms

  • Algorithms
  • Machine Learning*
  • Monitoring, Physiologic
  • Neural Networks, Computer*
  • Support Vector Machine

Grants and funding

This research was funded by Ministry of Science and ICT(MSIT, Korea), grant number RS_2023_00227552.