This paper addresses the problem of aplying powerful statistical pattern classification algorithms based on kernels to target tracking. Rather than directly adapting a recognizer, we develop a localizer directly using the regression form of the Support Vector Machines (SVM). The proposed approach considers using dynamic model together as feature vectors and makes the hyperplane and the support vectors follow the changes in these features. The performance of the tracker is demostrated in a sensor network scenario with a moving target in a polynomial route
A successful approach for object tracking has been kernel based object tracking [1] by Comaniciu et ...
Mean shift-based algorithms perform well when the tracked object is in the vicinity of the current l...
In this paper, a novel tracking algorithm based on the cooperative operation of online appearance mo...
Kernel-based mean shift (MS) trackers have proven to be a promising alternative to stochastic partic...
This paper addresses the problem of applying powerful pattern recognition algorithms based on kernel...
Kernel-based mean shift (MS) trackers have proven to be a promising alternative to stochastic partic...
Abstract—A new approach toward target representation and localization, the central component in visu...
The standard approach to tracking an object of interest in a video stream is to use an object detect...
The unpredictable noise in received signal strength indicator (RSSI) measurements in indoor environm...
An SVM (support vector machine) classifier is used to classify the pixels and generate a reliable ta...
We present a solution for realtime tracking of a planar pattern. Tracking is seen as the estimation ...
Abstract- Received Signal Strength (RSS) based positioning systems are potential candidates to enabl...
Target tracking is one of the nontrivial application of wireless sensor network(WSN) which can be de...
Abstract – A vast majority of localization techniques proposed for sensor networks are based on tria...
This paper extends the use of statistical learning algorithms for object lo-calization. It has been ...
A successful approach for object tracking has been kernel based object tracking [1] by Comaniciu et ...
Mean shift-based algorithms perform well when the tracked object is in the vicinity of the current l...
In this paper, a novel tracking algorithm based on the cooperative operation of online appearance mo...
Kernel-based mean shift (MS) trackers have proven to be a promising alternative to stochastic partic...
This paper addresses the problem of applying powerful pattern recognition algorithms based on kernel...
Kernel-based mean shift (MS) trackers have proven to be a promising alternative to stochastic partic...
Abstract—A new approach toward target representation and localization, the central component in visu...
The standard approach to tracking an object of interest in a video stream is to use an object detect...
The unpredictable noise in received signal strength indicator (RSSI) measurements in indoor environm...
An SVM (support vector machine) classifier is used to classify the pixels and generate a reliable ta...
We present a solution for realtime tracking of a planar pattern. Tracking is seen as the estimation ...
Abstract- Received Signal Strength (RSS) based positioning systems are potential candidates to enabl...
Target tracking is one of the nontrivial application of wireless sensor network(WSN) which can be de...
Abstract – A vast majority of localization techniques proposed for sensor networks are based on tria...
This paper extends the use of statistical learning algorithms for object lo-calization. It has been ...
A successful approach for object tracking has been kernel based object tracking [1] by Comaniciu et ...
Mean shift-based algorithms perform well when the tracked object is in the vicinity of the current l...
In this paper, a novel tracking algorithm based on the cooperative operation of online appearance mo...