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A Comparative Study of Hybrid Machine-Learning vs. Deep-Learning Approaches for Mite Detection and Counting. | LitMetric

A Comparative Study of Hybrid Machine-Learning vs. Deep-Learning Approaches for Mite Detection and Counting.

Sensors (Basel)

Lehrstuhl Kognitive Integrierte Sensorsysteme, Fachbereich Elektrotechnik und Informationstechnik, RPTU Kaiserslautern-Landau, 67663 Kaiserslautern, Germany.

Published: August 2025


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Article Abstract

This study presents a comparative evaluation of traditional machine-learning (ML) and deep-learning (DL) approaches for detecting and counting mites in hyperspectral images. As infestations pose a serious threat to honeybee health, accurate and efficient detection methods are essential. The ML pipeline-based on Principal Component Analysis (PCA), k-Nearest Neighbors (kNN), and Support Vector Machine (SVM)-was previously published and achieved high performance (precision = 0.9983, recall = 0.9947), with training and inference completed in seconds on standard CPU hardware. In contrast, the DL approach, employing Faster R-CNN with ResNet-50 and ResNet-101 backbones, was fine-tuned on the same manually annotated images. Despite requiring GPU acceleration, longer training times, and presenting a reproducibility challenges, the deep-learning models achieved precision of 0.966 and 0.971, recall of 0.757 and 0.829, and F1-Score of 0.848 and 0.894 for ResNet-50 and ResNet-101, respectively. Qualitative results further demonstrate the robustness of the ML method under limited-data conditions. These findings highlight the differences between ML and DL approaches in resource-constrained scenarios and offer practical guidance for selecting suitable detection strategies.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC12390549PMC
http://dx.doi.org/10.3390/s25165075DOI Listing

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