This paper presents a spatiotemporal deep learning approach for mouse behavioural classification in the home-cage. Using a series of dual-stream architectures with assorted modifications to increase performance, we introduce a novel feature sharing approach that jointly processes the streams at regular intervals throughout the network. To investigate the efficacy of this approach, models were evaluated by dissociating the streams and training/testing in the same rigorous manner as the main classifiers. Using an annotated, publicly available dataset of a singly-housed mice, we achieve prediction accuracy of 86.47% using an ensemble of a Inception-based network and an attention-based network, both of which utilize this feature sharing. We also demonstrate through ablation studies that for all models, the feature-sharing architectures consistently perform better than conventional ones having separate streams. The best performing models were further evaluated on other activity datasets, both mouse and human. Future work will investigate the effectiveness of feature sharing to behavioural classification in the unsupervised anomaly detection domain.
翻译:本文介绍了在家庭笼子里对老鼠行为分类的零星深入学习方法。我们使用一系列双流结构,并采用各种修改来提高性能。我们采用了一种新的特征共享方法,在整个网络中定期联合处理流流。为调查这一方法的功效,以与主要分类者同样严格的方式将流体分离和培训/测试,对模型进行了评价。我们使用一个有注释的、公开的单体小鼠数据集,利用一个基于感知的网络和关注的网络的组合,实现了86.47%的预测准确性,两者都利用了这种特征共享。我们还通过通缩研究表明,对所有模型而言,特征共享结构的一贯性优于有不同流的常规结构。对其他活动数据集,包括鼠类和人类类,进一步评估了最佳的运行模型。未来工作将调查特征共享在未受监督的异常探测领域的行为分类方面的有效性。