A Novel Approach Coloured Object Tracker with Adaptive Model and Bandwidth using Mean Shift Algorithm

07/11/2012
by   Seyed Amir Mohammadi, et al.
0

The traditional color-based mean-shift tracking algorithm is popular among tracking methods due to its simple and efficient procedure, however, the lack of dynamism in its target model makes it unsuitable for tracking objects which have changes in their sizes and shapes. In this paper, we propose a fast novel threephase colored object tracker algorithm based on mean shift idea while utilizing adaptive model. The proposed method can improve the mentioned weaknesses of the original mean-shift algorithm. The experimental results show that the new method is feasible, robust and has acceptable speed in comparison with other algorithms.15 page,

READ FULL TEXT

page 7

page 10

page 11

page 12

research
12/22/2017

A Bidirectional Adaptive Bandwidth Mean Shift Strategy for Clustering

The bandwidth of a kernel function is a crucial parameter in the mean sh...
research
07/29/2011

Confidence-Based Dynamic Classifier Combination For Mean-Shift Tracking

We introduce a novel tracking technique which uses dynamic confidence-ba...
research
10/13/2016

Statistical Inference Using Mean Shift Denoising

In this paper, we study how the mean shift algorithm can be used to deno...
research
04/16/2021

Occlusion-aware Visual Tracker using Spatial Structural Information and Dominant Features

To overcome the problem of occlusion in visual tracking, this paper prop...
research
11/15/2014

Anisotropic Agglomerative Adaptive Mean-Shift

Mean Shift today, is widely used for mode detection and clustering. The ...
research
06/17/2022

Towards Real-Time Visual Tracking with Graded Color-names Features

MeanShift algorithm has been widely used in tracking tasks because of it...
research
07/28/2020

Faster Mean-shift: GPU-accelerated Embedding-clustering for Cell Segmentation and Tracking

Recently, single-stage embedding based deep learning algorithms gain inc...

Please sign up or login with your details

Forgot password? Click here to reset