Behavior-Specific Filtering for Enhanced Pig Behavior Classification in Precision Livestock Farming
By: Zhen Zhang , Dong Sam Ha , Gota Morota and more
Potential Business Impact:
Helps farmers know exactly what pigs are doing.
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.
Similar Papers
A Computer Vision Pipeline for Individual-Level Behavior Analysis: Benchmarking on the Edinburgh Pig Dataset
CV and Pattern Recognition
Watches farm animals to check if they are healthy.
Pig behavior dataset and Spatial-temporal perception and enhancement networks based on the attention mechanism for pig behavior recognition
CV and Pattern Recognition
Helps farmers watch pigs better with smart cameras.
Benchmarking pig detection and tracking under diverse and challenging conditions
CV and Pattern Recognition
Helps farmers automatically watch pigs in barns.