Automated social behaviour analysis of mice has become an increasingly popular research area in behavioural neuroscience. Recently, pose information (i.e., locations of keypoints or skeleton) has been used to interpret social behaviours of mice. Nevertheless, effective encoding and decoding of social interaction information underlying the keypoints of mice has been rarely investigated in the existing methods. In particular, it is challenging to model complex social interactions between mice due to highly deformable body shapes and ambiguous movement patterns. To deal with the interaction modelling problem, we here propose a Cross-Skeleton Interaction Graph Aggregation Network (CS-IGANet) to learn abundant dynamics of freely interacting mice, where a Cross-Skeleton Node-level Interaction module (CS-NLI) is used to model multi-level interactions (i.e., intra-, inter- and cross-skeleton interactions). Furthermore, we design a novel Interaction-Aware Transformer (IAT) to dynamically learn the graph-level representation of social behaviours and update the node-level representation, guided by our proposed interaction-aware self-attention mechanism. Finally, to enhance the representation ability of our model, an auxiliary self-supervised learning task is proposed for measuring the similarity between cross-skeleton nodes. Experimental results on the standard CRMI13-Skeleton and our PDMB-Skeleton datasets show that our proposed model outperforms several other state-of-the-art approaches.
翻译:对小鼠的社会行为自动化分析已成为行为神经科学中越来越受欢迎的研究领域。最近,利用信息(即关键点或骨架的位置)来解释小鼠的社会行为。然而,在现有方法中,很少调查小鼠关键点背后的社会互动信息的有效编码和解码;特别是,由于高度变形的体形和模棱两可的移动模式,很难模拟小鼠之间的复杂社会互动。为了处理互动建模问题,我们在此建议建立一个跨斯克莱顿互动图象聚合网络(CS-IGANet)来学习自由互动小鼠的丰富动态,在那里使用跨斯克莱顿点点(CS-NLI)层次互动模块来模拟多层次互动(即内部、间和跨斯凯勒顿互动)。此外,我们设计了一个新的互动软件变异器(IAT)来动态地学习社会行为的图形级代表性,并更新节级代表制,以我们拟议的互动觉悟自觉机制为指导。最后,在跨斯克莱顿级互动互动互动模块互动模块(CS-NLILI)互动模块(S-S-S-Simlestrualmocial laimal laimal)中,用以测量其他模型学习标准任务之间的模拟。S-S-S-ex-ex-ex-exmlational-exmal-exmal-exmal-exmal-exmal-ex-ex-ex-ex-ex-ex-ex-ex-ex-ex-exmmmmmmmmmmmmal-ex-smmmal-legalismal-lemental-lemental-lemental