Computer Science ›› 2026, Vol. 53 ›› Issue (3): 266-276.doi: 10.11896/jsjkx.241100115

• Computer Graphics & Multimedia • Previous Articles     Next Articles

Integrate ByteTrack’s EAP-YOLOv8 UAV Marker Point Detection and Tracking

TANG Xinliang1, PAN Xiaorun1, WANG Jianchao1, SU He2   

  1. 1 School of Information Science and Engineering, Hebei University of Science and Technology, Shijiazhuang 050018, China
    2 Electrical Engineering, Hebei University of Technology, Tianjin 300401, China
  • Received:2024-11-19 Revised:2025-03-04 Published:2026-03-12
  • About author:TANG Xinliang,born in 1977,Ph.D,researcher.His main research interests include intelligent manufacturing and image processing.
    WANG Jianchao,born in 1991,Ph.D,lecturer.His main research interests include intelligent information processing and machine vision.
  • Supported by:
    Hebei Provincial Higher Education Science and Technology Research Project(QN2023185).

Abstract: With the development of science and technology,drones are more and more widely used,and the realization of accurate motion capture of drones has become its core technology.When the optical motion capture system detects and tracks the UAV,due to the interference of complex environment,flight speed and other aspects,the Marker point pasted by the UAV will be inaccurate.In order to solve this problem,an improved object detection algorithm EAP-YOLOv8 based on YOLOv8 is proposed to improve the accuracy of Marker point recognition detection.Firstly,a new channel attention mechanism MAP-ECA is constructed in the backbone part,which enhances the global perspective information and the characteristics of different scales,and improves the detection ability of small targets.Secondly,on the basis of the original detection head,the multi-level adaptive feature fusion is used to form a new detection head,D-SASFF,and the multi-scale fusion is used to strengthen the feature information of small targets.Finally,the loss function PIoUv3 is designed,which accelerates the convergence speed of the model and improves the detection ability of small targets.In order to verify the effectiveness of the EAP-YOLOv8 algorithm,experiments are carried out on the self-made dataset,and the results show that the EAP-YOLOv8 algorithm reaches 96.5% and 50.2% on mAP@0.5 and mAP@0.5:0.95,respectively,which is significantly improved compared with other algorithms.On this basis,the tracking accuracy of Marker points is significantly improved by combining the multi-target tracking algorithm ByteTrack,and the tracking experiments are carried out on the public dataset MOT16,and the results show that the new model reaches 37.60%,25.64% and 80.76% on HOTA,MOTA and MOTP,respectively,which is significantly improved compared with the current algorithms,providing an effective way for the subsequent accurate tracking of UAVs.

Key words: EAP-YOLOv8, Drone detection, Marker point, Small target detection, Multi-target tracking, ByteTrack

CLC Number: 

  • TP391
[1]BALLARD D H.Generalizing the Hough transform to detect arbitrary shapes[J].Pattern Recognition,1981,13(2):111-122.
[2]LYU X,LIU F,REN P,et al.An image processing approach to measuring the sphericity and roundness of fracturing proppants[J].IEEE Access,2019,7:16078-16087.
[3]GIRSHICK R,DONAHUE J,DARRELL T,et al.Rich FeatureHierarchies for Accurate Object Detection and Semantic Segmentation[C]//2014 IEEE Conference on Computer Vision and Pattern Recognition.2014.
[4]REN S Q,HE K M,GIRSHICK R,et al.Faster R-CNN:To-wards Real-Time Object Detection with Region Proposal Networks[J].IEEE Transactions on Pattern Analysis and Machine Lntelligence,2017,39(6):1137-1149.
[5]LI W K,ZHANG S Q.Mask feature fusion:a new paradigm of instance segmentation[J].Computer Engineering,2025(2):126-138.
[6]XU Y W,LI J,DONG Y F,et al.YOLO series object detection algorithm review[J].Computer Science and Exploration,2024,18(9):2221-2238.
[7]LIU W,ANGUELOV D,ERHAN D,et al.SSD:Single ShotMultibox Detector[C]//European Conference on Computer Vision.Berlin:Springer,2016:21-37.
[8]WANG G,CHEN Y,AN P,et al.UAV-YOLOv8:A Small-Object-Detection Model Based on Improved YOLOv8 for UAV Aerial Photography Scenarios[J].Sensors,2023,23(16):7190.
[9]LIU L,ZHANG S,BAI Y A,et al.Improving YOLOv8’s Lightweight Military Aircraft Detection Algorithm[J].Computer Engineering and Application,2024,60(18):114-125.
[10]YADAV A,CHATURVEDI P K,RANI S.Object Detection and Tracking using YOLOv8 and DeepSORT[EB/OL].https://www.publications.scrs.in/uploads/final_menuscript/6200cb6958c1909085022aae542b8792.pdf.
[11]ZHAI X,HUANG Z,LI T,et al.YOLO-Drone:An Optimized YOLOv8 Network for Tiny UAV Object Detection[J].Electronics,2023,12(17):3664.
[12]HU J F,LI B C,ZHU H,et al.Lightweight UAV target detection algorithm for improved YOLOv8[J].Computer Engineering and Applications,2024,60(8):182-191.
[13]LIU Y,LI Y,XU D.et al.Adaptive Kalman Filter with power transformation for online multi-object tracking[J].Multimedia Systems,2023,29:1231-1244.
[14]YOU L,CHEN Y,XIAO C,et al.Multi-Object Vehicle Detection and Tracking Algorithm Based on Improved YOLOv8 and ByteTrack[J].Electronics,2024,13(15):3033.
[15]YASIR M,LIU S W,XU M M,et al.YOLOv8-BYTE:Shiptracking algorithm using short-time sequence SAR images for disaster response leveraging GeoAI[J].International Journal of Applied Earth Observation and Geoinformation,2024,128:103771.
[16]ARIOKA K,SAWADA Y.Improved Kalman Filter and Ma-tching Strategy for Multi-Object Tracking System[C]//2023 62nd Annual Conference of the Society of Instrument and Control Engineers(SICE).IEEE,2023:772-777.
[17]XU C J,WANG X F,YANG Y D.Attention-YOLO:YOLO detection algorithm with attention mechanism[J].Computer Engineering and Applications,2019,55(6):13-23,125.
[18]WANG Q,WU B,ZHU P,et al.ECA-Net:Efficient channel attention for deep convolutional neural networks[C]//Procee-dings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition.2020:11534-11542.
[19]LIU S,HUANG D,WANG Y.Learning spatial fusion for single-shot object detection[J].arXiv:1911.09516,2019.
[20]LIU Y,CHEN J,LU P,et al.MFID-Net:multi-scaled feature-fused image dehazing via dynamic weights[J].Displays,2023,78:102416.
[21]SEKHARAMANTRY P K,MELGANI F,MALACARNE J.Deep learning-based apple detection with attention module and improved loss function in YOLO[J].Remote Sensing,2023,15(6):1516.
[22]ZHENG Z,WANG P,LIU W,et al.Distance-IoU loss:Fasterand better learning for bounding box regression[C]//Procee-dings of the AAAI Conference on Artificial Intelligence.2020:12993-13000.
[23]LIU Y,LI Y,XU D,et al.Adaptive Kalman Filter with power transformation for online multi-object tracking[J].Multimedia Systems,2023,29(3):1231-1244.
[24]LIANG X G,LI H,CHENG Y Z,et al.Multi-target trackingbased on spatio-temporal embedding perception and multi-task collaborative optimization[J].Computer Engineering and Applications,2024,60(6):282-292.
[25]LUITEN J,OSEP A,DENDORFER P,et al.Hota:A higher order metric for evaluating multi-object tracking[J].International Journal of Computer Vision,2021,129:548-578.
[26]GE Q B,LI K,ZHANG X G.Relative Pose Estimation Algo-rithm for UAV Based on Multi-Key Point Detection Weighted Fusion[J].Acta Automatica Sinica,2024,50(7):1-15.
[27]YIN X,YU Z,FEI Z,et al.Pe-yolo:Pyramid enhancement network for dark object detection[C]//International Conference on Artificial Neural Networks.Cham:Springer,2023:163-174.
[28]WANG C C,HE W,NIE Y,et al.Gold-YOLO:Efficient object detector via gather-and-distribute mechanism[J].arXiv:2309.11331,2023.
[29]SHENG W,SHEN J,HUANG Q,et al.Multi-objective pedestrian tracking method based on YOLOv8 and improved DeepSORT.[J].Mathematical Biosciences and Engineering,2024,21(2):1791-1805.
[30]LIN M Y.Research on vehicle pedestrian detection and tracking algorithm based on improved YOLOv5[D].Liuzhou:Guangxi University of Science and Technology,2023.
[31]MILAN A,LEAL-TAIXÉ L,REID I,et al.MOT16:A benchmark for multi-object tracking[J].arXiv:1603.00831,2016.
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