In this paper we present an adaptive multi-camera system for real time object detection able to efficiently adjust the computational requirements of video processing blocks to the available processing power and the activity of the scene. The system is based on a two level adaptation strategy that works at local and at global level. Object detection is based on a Gaussian mixtures model background subtraction algorithm. Results show that the system can efficiently adapt the algorithm parameters without a significant loss in the detection accuracy
In this paper we report a new method to detect both moving objects and new stationary objects in vid...
Video surveillance systems are widely employed in diverse areas such as protection of vital national...
Gaussian mixture models (GMM) is used to represent the dynamic background in a surveillance video to...
In this paper we present an adaptive multi-camera system for real time object detection able to effi...
In this paper we present an adaptive multi-camera system for real time object detection able to effi...
We present an adaptive and efficient background modeling strategy for real-time object detection in ...
An approach to detect and track moving objects with a stationary camera is presented in this paper. ...
This paper describes computer vision algorithms for detection, identification, and tracking of movin...
Detection of Moving Objects and Tracking is one of the most concerned issue and is being vastly used...
Video surveillance is an active research topic in computer vision that tries to detect, recognize an...
Adaptive background modelling based object detection techniques are widely used in machine vision ap...
This project aims to evaluate current human and object detection and tracking methods in surveillanc...
Abstract: Object detection and tracking is an important task within the field of computer vision due...
Moving object detection is essential in many computer vision systems as it is generally first proces...
Abstract—Video object segmentation is an important part of real time surveillance system. For any vi...
In this paper we report a new method to detect both moving objects and new stationary objects in vid...
Video surveillance systems are widely employed in diverse areas such as protection of vital national...
Gaussian mixture models (GMM) is used to represent the dynamic background in a surveillance video to...
In this paper we present an adaptive multi-camera system for real time object detection able to effi...
In this paper we present an adaptive multi-camera system for real time object detection able to effi...
We present an adaptive and efficient background modeling strategy for real-time object detection in ...
An approach to detect and track moving objects with a stationary camera is presented in this paper. ...
This paper describes computer vision algorithms for detection, identification, and tracking of movin...
Detection of Moving Objects and Tracking is one of the most concerned issue and is being vastly used...
Video surveillance is an active research topic in computer vision that tries to detect, recognize an...
Adaptive background modelling based object detection techniques are widely used in machine vision ap...
This project aims to evaluate current human and object detection and tracking methods in surveillanc...
Abstract: Object detection and tracking is an important task within the field of computer vision due...
Moving object detection is essential in many computer vision systems as it is generally first proces...
Abstract—Video object segmentation is an important part of real time surveillance system. For any vi...
In this paper we report a new method to detect both moving objects and new stationary objects in vid...
Video surveillance systems are widely employed in diverse areas such as protection of vital national...
Gaussian mixture models (GMM) is used to represent the dynamic background in a surveillance video to...