A Non-Invasive Alternative to RFID: Self-Sufficient 3D Identification of Group-Housed Livestock
Shiva Paudel, TsungCheng Tsai, Dongyi Wang
TLDR
This paper introduces TARA, a non-invasive 3D vision system that achieves 100% accuracy for identifying group-housed livestock, replacing RFID.
Key contributions
- Proposes TARA, a novel semi-supervised 3D vision system for non-invasive livestock identification.
- TARA uses dynamic recalibration to maintain identity despite animal morphological changes.
- Employs visit-level majority voting to generate high-fidelity pseudo-labels for training.
- Achieves 100% identification accuracy on a real-world commercial sow dataset.
Why it matters
This paper presents a crucial, non-invasive alternative to RFID for livestock identification, improving animal welfare and farm efficiency. Its vision-based 3D system overcomes current limitations, enabling fully autonomous animal monitoring.
Original Abstract
Accurate identification of individual farm animals in group-housed environments is a cornerstone of precision livestock management. However, current industry standards rely heavily on Radio Frequency Identification (RFID) ear tags, which are invasive, prone to loss, and restricted by the spatial limitations of antenna fields. In this paper, we propose a non-intrusive, vision-based identification system leveraging 3D point cloud data captured within a commercial electronic feeding station (EFS). Departing from traditional supervised frame-level inference, we introduce the Temporal Adaptive Recognition Architecture (TARA), a self-sufficient, semi-supervised framework designed to maintain identity consistency over time. TARA employs a dynamic recalibration mechanism that updates individual identity profiles to account for morphological changes in the livestock. To facilitate training in label-scarce environments, we utilize a visit-level majority voting strategy to generate high-fidelity pseudo-labels from raw temporal sequences. Experimental results on a group housed sow dataset collected from an operational commercial barn demonstrate that our approach achieves 100% identification accuracy at the visit level. These results suggest that vision-based 3D point cloud analysis offers a robust, superior alternative to RFID-based systems, paving the way for fully autonomous individual animal monitoring.
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