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摘要:
In many animal-related studies, a high-performance animal behavior recognition system can help researchers reduce or get rid of the limitation of human assessments and make the experiments easier to reproduce. Recently, although deep learning models are holding state-of-the-art performances in human action recognition tasks, these models are not well-studied in applying to animal behavior recognition tasks. One reason is the lack of extensive datasets which are required to train these deep models for good performances. In this research, we investigated two current state-of-the-art deep learning models in human action recognition tasks, the I3D model and the R(2 + 1)D model, in solving a mouse behavior recognition task. We compared their performances with other models from previous researches and the results showed that the deep learning models that pre-trained using human action datasets then fine-tuned using the mouse behavior dataset can outperform other models from previous researches. It also shows promises of applying these deep learning models to other animal behavior recognition tasks without any significant modification in the models’ architecture, all we need to do is collecting proper datasets for the tasks and fine-tuning the pre-trained models using the collected data.
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篇名 Applying Deep Learning Models to Mouse Behavior Recognition
来源期刊 生物医学工程(英文) 学科 医学
关键词 MOUSE Behavior RECOGNITION DEEP LEARNING I3D MODELS R(2 + 1)D MODELS
年,卷(期) 2019,(2) 所属期刊栏目
研究方向 页码范围 183-196
页数 14页 分类号 R73
字数 语种
DOI
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研究主题发展历程
节点文献
MOUSE
Behavior
RECOGNITION
DEEP
LEARNING
I3D
MODELS
R(2
+
1)D
MODELS
研究起点
研究来源
研究分支
研究去脉
引文网络交叉学科
相关学者/机构
期刊影响力
生物医学工程(英文)
月刊
1937-6871
武汉市江夏区汤逊湖北路38号光谷总部空间
出版文献量(篇)
252
总下载数(次)
1
总被引数(次)
0
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