Authors
Zhen Zhang 1, Dong Sam Ha 1, Gota Morota 1,2 and Sook Shin1, 1 Virginia Tech, USA, 2 The University of Tokyo, Japan
Abstract
This study proposes a behavior-specific filtering method to improve behavior classification accuracy in Precision Livestock Farming. While traditional filtering methods, such as wavelet denoising, achieved an accuracy of 91.58%, they apply uniform processing to all behaviors. In contrast, the proposed behavior specific filtering method combines Wavelet Denoising with a Low Pass Filter, tailored to active and inactive pig behaviors, and achieved a peak accuracy of 94.73%. These results highlight the effectiveness of behavior-specific filtering in enhancing animal behavior monitoring, supporting better health management and farm efficiency.
Keywords
Precision Livestock Farming, Behavior-Specific Filtering, Behavior Classification, Sensor Data