Real Time Detector for Unusual Behaviour |
Real Time Detector for unusual behaviourLeader: Tamas Sziranyi, MTA SzTAKI
Summary: Visual surveillance and activity analysis has attained great interest in the field of computer vision research. Several algorithm libraries are available on-line (open-source or proprietary), however their integration into a complex system is hindered by the inhomogeneity of the implementation language, format, processing speed, etc. The aim of this work is to produce a flexible, transparent system for activity analysis. The system provides a transparent interface to heterogeneous modules with different input-output requirements. The setup is hierarchical thus helping the scalability of the whole framework. The actual implementation integrates diverse algorithms forming a test-bed for unusual activity detection. Various complex surveillance related algorithms, such as human and body action, tracking and motion activity algorithms are integrated into one system.The architecture according to the current trend and software tools is as flexible as possible. The modules can be distributed over the network; they are organized into a hierarchical structure. The structure can be separated into four main entities: a) the client’s web interface, b) the server (possibly but not necessarily including the web server) c) the controller and d) the communication interface embedded into the user module (see Fig.2). Each component operates autonomously communication through RPC requests over TCP/IP. (iv) Multi-modal Method for Detecting Fight Among People at Unattended Places (BILKENT): Recently, intelligent video analysis systems capable of detecting humans, cars etc were developed. Such systems mostly use HMMs or SVMs to reach decisions. (v) Unusual motion pattern detection (MTA-SZTAKI): Intelligent visual surveillance is an increasingly important part of computer vision research. One of the most important goals of visual surveillance systems is to analyze the activity of the observed objects in order to detect anomalies, predict future behaviors, or predict potential unusual events before they occur. There have been a lot of approaches to model the activity of dynamic scenes. Analysis of motion patterns is an effective approach for learning the observed activity. For the most of the time, objects in the scene do not move randomly. They usually follow well-defined motion patterns. Knowledge of usual motion patterns can be used to detect anomalous motion patterns of objects. More information about this showcase and the contributors can be found here . An explanatory presentation of the showcase can be reached from here. A demonstrative video of the Real time detection of unusual behaviour showcase for the recognition of |