Anomalous Motion Detection on Highway Using Deep Learning
- URL: http://arxiv.org/abs/2006.08143v1
- Date: Mon, 15 Jun 2020 05:40:11 GMT
- Title: Anomalous Motion Detection on Highway Using Deep Learning
- Authors: Harpreet Singh, Emily M. Hand, Kostas Alexis
- Abstract summary: This paper presents a new anomaly detection dataset - the Highway Traffic Anomaly (HTA) dataset.
We evaluate state-of-the-art deep learning anomaly detection models and propose novel variations to these methods.
- Score: 14.617786106427834
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Research in visual anomaly detection draws much interest due to its
applications in surveillance. Common datasets for evaluation are constructed
using a stationary camera overlooking a region of interest. Previous research
has shown promising results in detecting spatial as well as temporal anomalies
in these settings. The advent of self-driving cars provides an opportunity to
apply visual anomaly detection in a more dynamic application yet no dataset
exists in this type of environment. This paper presents a new anomaly detection
dataset - the Highway Traffic Anomaly (HTA) dataset - for the problem of
detecting anomalous traffic patterns from dash cam videos of vehicles on
highways. We evaluate state-of-the-art deep learning anomaly detection models
and propose novel variations to these methods. Our results show that
state-of-the-art models built for settings with a stationary camera do not
translate well to a more dynamic environment. The proposed variations to these
SoTA methods show promising results on the new HTA dataset.
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