dc.description.abstract |
Abnormal event detection is a non-trivial task in machine learning.
The primary reason behind this is that the abnormal class occurs
sparsely, and its temporal location may not be available. In this paper, we propose a multiple feature-based approach for CitySCENE
challenge-based anomaly detection. For motion and context information, Res3D and Res101 architectures are used. Object-level
information is extracted by object detection feature-based pooling.
Fusion of three channels above gives relatively high performance
on the challenge Test set for the general anomaly task. We also
show how our method can be used for temporal localisation of the
abnormal activity event in a video. |
en_US |