TL;DR
TRACE is a novel framework that enables continuous, non-invasive measurement of CO2 emissions from livestock using thermal video, combining advanced attention mechanisms and a structured training approach.
Contribution
It introduces a unified system with domain-specific attention modules and a progressive training curriculum for accurate CO2 plume segmentation and emission flux classification.
Findings
Achieves an mIoU of 0.998 on CO2 plume segmentation
Outperforms state-of-the-art models in flux classification
Each component of TRACE is individually essential for performance
Abstract
Quantifying exhaled CO2 from free-roaming cattle is both a direct indicator of rumen metabolic state and a prerequisite for farm-scale carbon accounting, yet no existing system can deliver continuous, spatially resolved measurements without physical confinement or contact. We present TRACE (Thermal Recognition Attentive-Framework for CO2 Emissions from Livestock), the first unified framework to jointly address per-frame CO2 plume segmentation and clip-level emission flux classification from mid-wave infrared (MWIR) thermal video. TRACE contributes three domain-specific advances: a Thermal Gas-Aware Attention (TGAA) encoder that incorporates per-pixel gas intensity as a spatial supervisory signal to direct self-attention toward high-emission regions at each encoder stage; an Attention-based Temporal Fusion (ATF) module that captures breath-cycle dynamics through structured cross-frame…
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