We here present a multi-sensor data fusion architecture that takes into account the performance of video sensors in detecting moving targets for video surveillance purposes. Target detection and tracking is performed via classification by an ensemble of classifiers learned online using heterogeneous features for each target. A novel approach s then used to estimate he position of the target on the ground plane map by temporally fusing likelihood maps, then by approximating likelihoods analytically by a Gaussian function, and eventually projecting and fusing the likelihood functions. Experimental results are shown on real-world video sequences
Video target tracking is the process of estimating the current state, and predicting the future stat...
This paper presents a multisensor fusion framework for video activities recognition based on statist...
Sensor and data fusion is a process of paramount importance for many domains and applications. Its p...
Real-time detection, tracking, recognition, and activity understanding of moving objects from multip...
In this paper, a multisensor data fusion system for object tracking is presented. It is able to trac...
This thesis proposes and applies numerous fusion based approaches in image and video processing for ...
In this correspondence, we address the problem of fusing data for object tracking for video surveill...
Multiple sensor measurement has gained in popularity for computer vision tasks such as visual object...
Single sensor systems and standard optical—usually RGB CCTV video cameras—fail to provid...
An attractive approach to improve tracking performance for visual surveillance is to use information...
The performances of the systems that fuse multiple data coming from different sources are deemed to ...
In this work, we propose a framework for multimodal data fusion at decision level under a multilayer...
This work applies the Gaussian Mixture Probability Hypothesis Density (GMPHD) Filter to multi-object...
An attractive approach to improve tracking performance for visual surveillance is to use information...
Tracking of video targets is the process of estimating the current and predicting the future state o...
Video target tracking is the process of estimating the current state, and predicting the future stat...
This paper presents a multisensor fusion framework for video activities recognition based on statist...
Sensor and data fusion is a process of paramount importance for many domains and applications. Its p...
Real-time detection, tracking, recognition, and activity understanding of moving objects from multip...
In this paper, a multisensor data fusion system for object tracking is presented. It is able to trac...
This thesis proposes and applies numerous fusion based approaches in image and video processing for ...
In this correspondence, we address the problem of fusing data for object tracking for video surveill...
Multiple sensor measurement has gained in popularity for computer vision tasks such as visual object...
Single sensor systems and standard optical—usually RGB CCTV video cameras—fail to provid...
An attractive approach to improve tracking performance for visual surveillance is to use information...
The performances of the systems that fuse multiple data coming from different sources are deemed to ...
In this work, we propose a framework for multimodal data fusion at decision level under a multilayer...
This work applies the Gaussian Mixture Probability Hypothesis Density (GMPHD) Filter to multi-object...
An attractive approach to improve tracking performance for visual surveillance is to use information...
Tracking of video targets is the process of estimating the current and predicting the future state o...
Video target tracking is the process of estimating the current state, and predicting the future stat...
This paper presents a multisensor fusion framework for video activities recognition based on statist...
Sensor and data fusion is a process of paramount importance for many domains and applications. Its p...