The MacqD deep-learning-based model for automatic detection of socially housed laboratory macaques

被引:0
|
作者
Genevieve Jiawei Moat [1 ]
Maxime Gaudet-Trafit [2 ]
Julian Paul [2 ]
Jaume Bacardit [1 ]
Suliann Ben Hamed [2 ]
Colline Poirier [3 ]
机构
[1] Newcastle University,School of Computing
[2] CNRS-Université Claude Bernard Lyon I,Institut des Sciences Cognitives Marc Jeannerod, UMR5229
[3] Newcastle University,Biosciences Institute Centre for Behaviour and Evolution, Faculty of Medical Sciences
关键词
Animal behaviour; Deep learning; Automatic detection; Non-human primate; Macaques; Pair-housed;
D O I
10.1038/s41598-025-95180-x
中图分类号
学科分类号
摘要
Despite advancements in video-based behaviour analysis and detection models for various species, existing methods are suboptimal to detect macaques in complex laboratory environments. To address this gap, we present MacqD, a modified Mask R-CNN model incorporating a SWIN transformer backbone for enhanced attention-based feature extraction. MacqD robustly detects macaques in their home-cage under challenging scenarios, including occlusions, glass reflections, and overexposure to light. To evaluate MacqD and compare its performance against pre-existing macaque detection models, we collected and analysed video frames from 20 caged rhesus macaques at Newcastle University, UK. Our results demonstrate MacqD’s superiority, achieving a median F1-score of 99% for frames with a single macaque in the focal cage (surpassing the next-best model by 21%) and 90% for frames with two macaques. Generalisation tests on frames from a different set of macaques from the same animal facility yielded median F1-scores of 95% for frames with a single macaque (surpassing the next-best model by 15%) and 81% for frames with two macaques (surpassing the alternative approach by 39% ). Finally, MacqD was applied to videos of paired macaques from another facility and resulted in F1-score of 90%, reflecting its strong generalisation capacity. This study highlights MacqD’s effectiveness in accurately detecting macaques across diverse settings.
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