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Bibliographic Details
Main Author: Gaba, Parth
Format: Recurso digital
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Published: Zenodo 2026
Online Access:https://doi.org/10.5281/zenodo.19293834
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  • <p>This dataset contains processed field deployment data associated with a multimodal machine learning system for non-invasive detection of Varroa destructor infestations in Apis mellifera (honey bee) colonies.</p> <p>The dataset includes three real-world deployments representing distinct colony health conditions:</p> <ul> <li>A 30-day continuous deployment on a confirmed healthy colony (0 mites per 100 bees), used to validate baseline system behavior and false positive rates.</li> <li>A 30-day deployment on a mildly infested colony (2–4 mites per 100 bees), capturing early-stage distributional shifts without threshold-triggered alerts.</li> <li>A 1-day deployment on a clearly infested colony (8+ mites per 100 bees), demonstrating threshold exceedance and alert generation under high infestation conditions.</li> </ul> <p>Each dataset consists of timestamped fused probability scores generated from a confidence-weighted fusion of multiple sensing modalities, along with corresponding alert flags and hive status labels. The fused score represents the system’s estimate of infestation likelihood at each observation interval.</p> <p>Due to the large size of raw multimodal recordings (~300 GB), this release provides a processed and downsampled dataset suitable for reproducing the analysis and results reported in the associated study.</p> <p>This dataset enables evaluation of system performance across varying infestation levels and provides evidence of real-world deployment behavior under continuous monitoring conditions.</p>