We propose a novel framework for large-scale scene understanding in static camera surveillance. Our techniques combine fast rank-1 constrained robust PCA to compute the foreground, with non-parametric Bayesian models for inference. Clusters are extracted in foreground patterns using a joint multinomial+Gaussian Dirichlet process model (DPM). Since the multinomial distribution is normalized, the Gaussian mixture distinguishes between similar spatial patterns but different activity levels (eg. car vs bike). We propose a modification of the decayed MCMC technique for incremental inference, providing the ability to discover theoretically unlimited patterns in unbounded video streams. A promising by-product of our framework is online, abnormal a...
Automatically recognizing activities in video is a classic problem in vision and helps to understand...
Abstract In this paper, we address the problem of scene modeling for performing video surveillance. ...
Understanding the content of a video sequence is not a particularly difficult problem for humans. We...
We propose a novel framework for large-scale scene understanding in static camera surveillance. Our ...
We propose a novel method to model and learn the scene activity, observed by a static camera. The pr...
We propose a novel method to model and learn the scene activity, observed by a static camera. The pr...
We present a novel framework for learning patterns of motion and sizes of objects in static camera s...
We present a novel method for the discovery and statistical representation of motion patterns in a s...
Video surveillance is concerned with identifying abnormal or unusual activity at a scene. In this pa...
In data science, anomaly detection is the process of identifying the items, events or observations w...
In this dissertation, we address the problem of discovery and representation of motion patterns in a...
We propose a novel unsupervised learning framework to model activities and interactions in crowded a...
In data science, anomaly detection is the process of identifying the items, events or observations w...
In this paper we propose dense spatio-temporal features to capture scene dynamic statistics together...
2014-09-22Human action recognition in videos is a central problem of computer vision, with numerous ...
Automatically recognizing activities in video is a classic problem in vision and helps to understand...
Abstract In this paper, we address the problem of scene modeling for performing video surveillance. ...
Understanding the content of a video sequence is not a particularly difficult problem for humans. We...
We propose a novel framework for large-scale scene understanding in static camera surveillance. Our ...
We propose a novel method to model and learn the scene activity, observed by a static camera. The pr...
We propose a novel method to model and learn the scene activity, observed by a static camera. The pr...
We present a novel framework for learning patterns of motion and sizes of objects in static camera s...
We present a novel method for the discovery and statistical representation of motion patterns in a s...
Video surveillance is concerned with identifying abnormal or unusual activity at a scene. In this pa...
In data science, anomaly detection is the process of identifying the items, events or observations w...
In this dissertation, we address the problem of discovery and representation of motion patterns in a...
We propose a novel unsupervised learning framework to model activities and interactions in crowded a...
In data science, anomaly detection is the process of identifying the items, events or observations w...
In this paper we propose dense spatio-temporal features to capture scene dynamic statistics together...
2014-09-22Human action recognition in videos is a central problem of computer vision, with numerous ...
Automatically recognizing activities in video is a classic problem in vision and helps to understand...
Abstract In this paper, we address the problem of scene modeling for performing video surveillance. ...
Understanding the content of a video sequence is not a particularly difficult problem for humans. We...