This paper addresses the issue of tracking translation and rotation simultaneously. Starting with a kernel-based spatial-spectral model for object representation, we define an -norm similarity measure between the target object and the observation, and derive a new formulation to the tracking of translational and rotational object. Based on the tracking formulation, an iterative procedure is proposed. We also develop an adaptive kernel model to cope with varying appearance. Experimental results are presented for both synthetic data and real-world traffic video. 1
Kernel-based mean shift (MS) trackers have proven to be a promising alternative to stochastic partic...
We propose a kernel-density based scheme that incorporates the object colors with their spatial rele...
Abstract—Traditional kernel-based object tracking methods are useful for estimating the position of ...
In today's world, the rapid developments in computing technology have generated a great deal of inte...
We extend the concept of kernel-based tracking by modeling the spatial structure of multiple tracked...
Abstract—A new approach toward target representation and localization, the central component in visu...
The objective of the paper is to embed perception rules into the kernel-based target tracking algori...
A successful approach for object tracking has been kernel based object tracking [1] by Comaniciu et ...
In this paper, we present an object tracking algorithm for the low-frame-rate video in which objects...
In tracking tasks, representing a target region as a weighted histogram has opened possibilities whi...
Abstract: Object tracking is the problem of determining (estimating) the positions and other relevan...
Abstract: One of the most popular areas of video processing is object tracking. The main purpose of ...
We present a solution for realtime tracking of a planar pattern. Tracking is seen as the estimation ...
Abstract—The problem of tracking Euclidean motion is formu-lated as a sequential learning of rotatio...
Kernel-based mean shift (MS) trackers have proven to be a promising alternative to stochastic partic...
Kernel-based mean shift (MS) trackers have proven to be a promising alternative to stochastic partic...
We propose a kernel-density based scheme that incorporates the object colors with their spatial rele...
Abstract—Traditional kernel-based object tracking methods are useful for estimating the position of ...
In today's world, the rapid developments in computing technology have generated a great deal of inte...
We extend the concept of kernel-based tracking by modeling the spatial structure of multiple tracked...
Abstract—A new approach toward target representation and localization, the central component in visu...
The objective of the paper is to embed perception rules into the kernel-based target tracking algori...
A successful approach for object tracking has been kernel based object tracking [1] by Comaniciu et ...
In this paper, we present an object tracking algorithm for the low-frame-rate video in which objects...
In tracking tasks, representing a target region as a weighted histogram has opened possibilities whi...
Abstract: Object tracking is the problem of determining (estimating) the positions and other relevan...
Abstract: One of the most popular areas of video processing is object tracking. The main purpose of ...
We present a solution for realtime tracking of a planar pattern. Tracking is seen as the estimation ...
Abstract—The problem of tracking Euclidean motion is formu-lated as a sequential learning of rotatio...
Kernel-based mean shift (MS) trackers have proven to be a promising alternative to stochastic partic...
Kernel-based mean shift (MS) trackers have proven to be a promising alternative to stochastic partic...
We propose a kernel-density based scheme that incorporates the object colors with their spatial rele...
Abstract—Traditional kernel-based object tracking methods are useful for estimating the position of ...