Scale-Adaptive KCF Mixed with Deep Feature for Pedestrian Tracking

Pedestrian tracking is an important research content in the field of computer vision. Tracking is achieved by predicting the position of a specific pedestrian in each frame of a video. Pedestrian tracking methods include neural network-based methods and traditional template matching-based methods, s...

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Main Authors: Yang Zhou, Wenzhu Yang, Yuan Shen
Format: Article
Language:English
Published: MDPI AG 2021-02-01
Series:Electronics
Subjects:
Online Access:https://www.mdpi.com/2079-9292/10/5/536
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spelling doaj-a14597e5615c47a5a844c776bcce07712021-02-26T00:01:06ZengMDPI AGElectronics2079-92922021-02-011053653610.3390/electronics10050536Scale-Adaptive KCF Mixed with Deep Feature for Pedestrian TrackingYang Zhou0Wenzhu Yang1Yuan Shen2School of Cyber Security and Computer, Hebei University, Baoding City 071002, ChinaSchool of Cyber Security and Computer, Hebei University, Baoding City 071002, ChinaSchool of Cyber Security and Computer, Hebei University, Baoding City 071002, ChinaPedestrian tracking is an important research content in the field of computer vision. Tracking is achieved by predicting the position of a specific pedestrian in each frame of a video. Pedestrian tracking methods include neural network-based methods and traditional template matching-based methods, such as the SiamRPN (Siamese region proposal network), the DASiamRPN (distractor-aware SiamRPN), and the KCF (kernel correlation filter). The KCF algorithm has no scale-adaptive capability and cannot effectively solve the occlusion problem, and because of many defects of the HOG (histogram of oriented gradient) feature that the KCF uses, the tracking target is easy to lose. For those defects of the KCF algorithm, an improved KCF model, the SKCFMDF (scale-adaptive KCF mixed with deep feature) algorithm was designed. By introducing deep features extracted by a newly designed neural network and by introducing the YOLOv3 (you only look once version 3) object detection algorithm, which was also improved for more accurate detection, the model was able to achieve scale adaptation and to effectively solve the problem of occlusion and defects of the HOG feature. Compared with the original KCF, the success rate of pedestrian tracking under complex conditions was increased by 36%. Compared with the mainstream SiamRPN and DASiamRPN models, it was still able to achieve a small improvement.https://www.mdpi.com/2079-9292/10/5/536pedestrian trackingimproved KCFdeep featuresobject detection
collection DOAJ
language English
format Article
sources DOAJ
author Yang Zhou
Wenzhu Yang
Yuan Shen
spellingShingle Yang Zhou
Wenzhu Yang
Yuan Shen
Scale-Adaptive KCF Mixed with Deep Feature for Pedestrian Tracking
Electronics
pedestrian tracking
improved KCF
deep features
object detection
author_facet Yang Zhou
Wenzhu Yang
Yuan Shen
author_sort Yang Zhou
title Scale-Adaptive KCF Mixed with Deep Feature for Pedestrian Tracking
title_short Scale-Adaptive KCF Mixed with Deep Feature for Pedestrian Tracking
title_full Scale-Adaptive KCF Mixed with Deep Feature for Pedestrian Tracking
title_fullStr Scale-Adaptive KCF Mixed with Deep Feature for Pedestrian Tracking
title_full_unstemmed Scale-Adaptive KCF Mixed with Deep Feature for Pedestrian Tracking
title_sort scale-adaptive kcf mixed with deep feature for pedestrian tracking
publisher MDPI AG
series Electronics
issn 2079-9292
publishDate 2021-02-01
description Pedestrian tracking is an important research content in the field of computer vision. Tracking is achieved by predicting the position of a specific pedestrian in each frame of a video. Pedestrian tracking methods include neural network-based methods and traditional template matching-based methods, such as the SiamRPN (Siamese region proposal network), the DASiamRPN (distractor-aware SiamRPN), and the KCF (kernel correlation filter). The KCF algorithm has no scale-adaptive capability and cannot effectively solve the occlusion problem, and because of many defects of the HOG (histogram of oriented gradient) feature that the KCF uses, the tracking target is easy to lose. For those defects of the KCF algorithm, an improved KCF model, the SKCFMDF (scale-adaptive KCF mixed with deep feature) algorithm was designed. By introducing deep features extracted by a newly designed neural network and by introducing the YOLOv3 (you only look once version 3) object detection algorithm, which was also improved for more accurate detection, the model was able to achieve scale adaptation and to effectively solve the problem of occlusion and defects of the HOG feature. Compared with the original KCF, the success rate of pedestrian tracking under complex conditions was increased by 36%. Compared with the mainstream SiamRPN and DASiamRPN models, it was still able to achieve a small improvement.
topic pedestrian tracking
improved KCF
deep features
object detection
url https://www.mdpi.com/2079-9292/10/5/536
work_keys_str_mv AT yangzhou scaleadaptivekcfmixedwithdeepfeatureforpedestriantracking
AT wenzhuyang scaleadaptivekcfmixedwithdeepfeatureforpedestriantracking
AT yuanshen scaleadaptivekcfmixedwithdeepfeatureforpedestriantracking
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