Abstract

In this article, a robust long-term object tracking algorithm is proposed. It can tackle the challenges of scale and rotation changes during the long-term object tracking for security robots. Firstly, a robust scale and rotation estimation method is proposed to deal with scale changes and rotation motion of the object. It is based on the Fourier–Mellin transform and the kernelized correlation filter. The object’s scale and rotation can be estimated in the continuous space, and the kernelized correlation filter is used to improve the estimation accuracy and robustness. Then a weighted object searching method based on the histogram and the variance is introduced to handle the problem that trackers may fail in the long-term object tracking (due to semi-occlusion or full occlusion). When the tracked object is lost, the object can be relocated in the whole image using the searching method, so the tracker can be recovered from failures. Moreover, two other kernelized correlation filters are learned to estimate the object’s translation and the confidence of tracking results, respectively. The estimated confidence is more accurate and robust using the dedicatedly designed kernelized correlation filter, which is employed to activate the weighted object searching module, and helps to determine whether the searching windows contain objects. We compare the proposed algorithm with state-of-the-art tracking algorithms on the online object tracking benchmark. The experimental results validate the effectiveness and superiority of our tracking algorithm.

Highlights

  • As a major and challenging research topic in the computer vision community, object tracking has been researched for several decades

  • We proposed a robust long-term object tracking (RLOT) approach with adaptive scale and rotation estimation

  • The weighted object searching module based on the histogram and the variance is employed in case of tracking failures, which relocates the lost object

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Summary

Introduction

As a major and challenging research topic in the computer vision community, object tracking has been researched for several decades. Three correlation filters were trained to estimate the translation, the scale variations, and the confidence of tracking results. The translational motion of the tracked object usually prompts changes of the transformation center in log-polar transformation, resulting in the inaccurate estimation of the scale and rotation parameters. In order to improve the accuracy and reduce the impact of the transformation center, we can firstly estimate the translation of the tracked object in the original image, obtain the scale and rotation parameters in the log-polar image. We train three different correlation filters to estimate the object’s translation, scale, and rotation, and the confidence of tracking results, in order to realize robust and accurate long-time object tracking. Robust object tracking (ROT) is used to name the algorithm that removes the weighted searching module from RLOT

Experiments
Experimental setup
 10À5
Conclusions
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