Target Tracking Algorithm Based on Adaptive Scale Detection Learning

In this paper, to better solve the problem of low tracking accuracy caused by the sudden change of target scale, we design and propose an adaptive scale mutation tracking algorithm using a deep learning network to detect the target first and then track it using the kernel correlation filtering metho...

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Main Author: Dawei Yang
Format: Article
Language:English
Published: Wiley 2021-01-01
Series:Complexity
Online Access:http://dx.doi.org/10.1155/2021/9033912
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author Dawei Yang
author_facet Dawei Yang
author_sort Dawei Yang
collection DOAJ
description In this paper, to better solve the problem of low tracking accuracy caused by the sudden change of target scale, we design and propose an adaptive scale mutation tracking algorithm using a deep learning network to detect the target first and then track it using the kernel correlation filtering method and verify the effectiveness of the model through experiments. The improvement point of this paper is to change the traditional kernel correlation filtering algorithm to detect and track at the same time and to combine deep learning with traditional kernel correlation filtering tracking to apply in the process of target tracking; the addition of deep learning network not only can learn more accurate feature representation but also can more effectively cope with the low resolution of video sequences, so that the algorithm in the case of scale mutation achieves more accurate target tracking in the case of scale mutation. To verify the effectiveness of this method in the case of scale mutation, four evaluation criteria, namely, average accuracy, cross-ratio accuracy, temporal robustness, and spatial robustness, are combined to demonstrate the effectiveness of the algorithm in the case of scale mutation. The experimental results verify that the joint detection strategy plays a good role in correcting the tracking drift caused by the subsequent abrupt change of the target scale and the effectiveness of the adaptive template update strategy. By adaptively changing the number of interval frames of neural network redetection to improve the tracking performance, the tracking speed is improved after the fusion of correlation filtering and neural network, and the combination of both is promoted for better application in target tracking tasks.
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spelling doaj-art-ac8d9a120d9b4a58b0fd0b0c2d1d79092025-08-20T03:38:56ZengWileyComplexity1076-27871099-05262021-01-01202110.1155/2021/90339129033912Target Tracking Algorithm Based on Adaptive Scale Detection LearningDawei Yang0School of Information Technology and Engineering, Shenyang Ligong University, Liaoning, Shenyang 110159, ChinaIn this paper, to better solve the problem of low tracking accuracy caused by the sudden change of target scale, we design and propose an adaptive scale mutation tracking algorithm using a deep learning network to detect the target first and then track it using the kernel correlation filtering method and verify the effectiveness of the model through experiments. The improvement point of this paper is to change the traditional kernel correlation filtering algorithm to detect and track at the same time and to combine deep learning with traditional kernel correlation filtering tracking to apply in the process of target tracking; the addition of deep learning network not only can learn more accurate feature representation but also can more effectively cope with the low resolution of video sequences, so that the algorithm in the case of scale mutation achieves more accurate target tracking in the case of scale mutation. To verify the effectiveness of this method in the case of scale mutation, four evaluation criteria, namely, average accuracy, cross-ratio accuracy, temporal robustness, and spatial robustness, are combined to demonstrate the effectiveness of the algorithm in the case of scale mutation. The experimental results verify that the joint detection strategy plays a good role in correcting the tracking drift caused by the subsequent abrupt change of the target scale and the effectiveness of the adaptive template update strategy. By adaptively changing the number of interval frames of neural network redetection to improve the tracking performance, the tracking speed is improved after the fusion of correlation filtering and neural network, and the combination of both is promoted for better application in target tracking tasks.http://dx.doi.org/10.1155/2021/9033912
spellingShingle Dawei Yang
Target Tracking Algorithm Based on Adaptive Scale Detection Learning
Complexity
title Target Tracking Algorithm Based on Adaptive Scale Detection Learning
title_full Target Tracking Algorithm Based on Adaptive Scale Detection Learning
title_fullStr Target Tracking Algorithm Based on Adaptive Scale Detection Learning
title_full_unstemmed Target Tracking Algorithm Based on Adaptive Scale Detection Learning
title_short Target Tracking Algorithm Based on Adaptive Scale Detection Learning
title_sort target tracking algorithm based on adaptive scale detection learning
url http://dx.doi.org/10.1155/2021/9033912
work_keys_str_mv AT daweiyang targettrackingalgorithmbasedonadaptivescaledetectionlearning