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Unsupervised detection of mouse behavioural anomalies using two-stream convolutional autoencoders

Version 4 2024-03-12, 19:43
Version 3 2023-10-29, 16:59
journal contribution
posted on 2024-03-12, 19:43 authored by Ezechukwu I Nwokedi, Rasneer S Bains, Luc Bidaut, Sara Wells, Xujiong Ye, James BrownJames Brown
<p>This paper explores the application of unsupervised learning to detecting anomalies in mouse video data. The two models presented in this paper are a dual stream, 3D convolutional autoencoder (with residual connections) and a dual stream, 2D convolutional autoencoder. The publicly available dataset used here contains twelve videos of a single home-caged mice alongside frame level annotations. Under the pretext that the autoencoder only sees normal events, the video data was handcrafted to treat each behaviour as a pseudo-anomaly thereby eliminating them from the others during training. The results are presented for one conspicuous behaviour (hang) and one inconspicuous behaviour (groom). The performance of these models is compared to a single stream autoencoder and a supervised learning model, which are both based on the custom CAE encoder. Both models are also tested on the CUHK Avenue dataset were found to perform as well as some state-of-the-art architectures.</p>

History

School affiliated with

  • School of Computer Science (Research Outputs)

Publication Title

arXiv

ISSN

2331-8422

Date Submitted

2021-10-05

Date Accepted

2021-05-28

Date of First Publication

2021-05-28

Date of Final Publication

2021-05-28

Date Document First Uploaded

2021-09-16

ePrints ID

46515