论文标题
Muti-View鼠标的社会行为识别具有深层图形模型
Muti-view Mouse Social Behaviour Recognition with Deep Graphical Model
论文作者
论文摘要
小鼠的家居社会行为分析是评估神经退行性疾病治疗功效的宝贵工具。尽管在研究界做出了巨大的努力,但单相机视频录制主要用于此类分析。由于有可能对鼠标社交行为进行丰富的描述,因此将多视频视频用于啮齿动物观察的使用越来越受到关注。但是,由于数据源缺乏信件,从各种观点中识别社交行为仍然具有挑战性。为了解决这个问题,我们在这里提出了一种新颖的多视图潜在注意力和动态判别模型,该模型共同学习了特定视图和视图共享的子结构,其中前者捕获了每种视图的独特动态,而后者则编码了视图之间的相互作用。此外,在学习获得的功能时,还引入了一种新型的多视图潜伏性变异自动编码器模型,从而使我们能够在每种视图中学习判别特征。标准CRMI13和我们的多视图帕金森氏病小鼠行为(PDMB)数据集的实验结果表明,我们的模型表现优于其他艺术技术,并有效地解决了不平衡的数据问题。
Home-cage social behaviour analysis of mice is an invaluable tool to assess therapeutic efficacy of neurodegenerative diseases. Despite tremendous efforts made within the research community, single-camera video recordings are mainly used for such analysis. Because of the potential to create rich descriptions of mouse social behaviors, the use of multi-view video recordings for rodent observations is increasingly receiving much attention. However, identifying social behaviours from various views is still challenging due to the lack of correspondence across data sources. To address this problem, we here propose a novel multiview latent-attention and dynamic discriminative model that jointly learns view-specific and view-shared sub-structures, where the former captures unique dynamics of each view whilst the latter encodes the interaction between the views. Furthermore, a novel multi-view latent-attention variational autoencoder model is introduced in learning the acquired features, enabling us to learn discriminative features in each view. Experimental results on the standard CRMI13 and our multi-view Parkinson's Disease Mouse Behaviour (PDMB) datasets demonstrate that our model outperforms the other state of the arts technologies and effectively deals with the imbalanced data problem.