Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

Learning Temporal Regularity in Video Sequences

About

Perceiving meaningful activities in a long video sequence is a challenging problem due to ambiguous definition of 'meaningfulness' as well as clutters in the scene. We approach this problem by learning a generative model for regular motion patterns, termed as regularity, using multiple sources with very limited supervision. Specifically, we propose two methods that are built upon the autoencoders for their ability to work with little to no supervision. We first leverage the conventional handcrafted spatio-temporal local features and learn a fully connected autoencoder on them. Second, we build a fully convolutional feed-forward autoencoder to learn both the local features and the classifiers as an end-to-end learning framework. Our model can capture the regularities from multiple datasets. We evaluate our methods in both qualitative and quantitative ways - showing the learned regularity of videos in various aspects and demonstrating competitive performance on anomaly detection datasets as an application.

Mahmudul Hasan, Jonghyun Choi, Jan Neumann, Amit K. Roy-Chowdhury, Larry S. Davis• 2016

Related benchmarks

TaskDatasetResultRank
Video Anomaly DetectionCUHK Avenue (Ave) (test)
AUC80
203
Video Anomaly DetectionShanghaiTech (test)
AUC0.609
194
Abnormal Event DetectionUCSD Ped2 (test)
AUC90
146
Abnormal Event DetectionUCSD Ped2
AUC90
132
Video Anomaly DetectionUCF-Crime
AUC50.6
129
Video Anomaly DetectionUCF-Crime (test)
AUC51.2
122
Video Anomaly DetectionXD-Violence (test)
AP31.25
119
Anomaly DetectionUCF-Crime (test)
AUC0.506
99
Video Anomaly DetectionAvenue (test)
AUC (Micro)70.2
85
Anomaly DetectionShanghaiTech
AUROC0.609
68
Showing 10 of 56 rows

Other info

Code

Follow for update