Print Email Facebook Twitter Automatic Running Event Visualization using Video from Multiple Camera Title Automatic Running Event Visualization using Video from Multiple Camera Author Priadi Teguh Wibowo, Priadi (TU Delft Electrical Engineering, Mathematics and Computer Science) Contributor van Gemert, J.C. (mentor) Reinders, M.J.T. (graduation committee) Vilanova Bartroli, A. (graduation committee) Napolean, Y. (mentor) Degree granting institution Delft University of Technology Programme Electrical Engineering | Embedded Systems Date 2019-06-27 Abstract Visualizing runners trajectory from video data is not straightforward because the video data does not contain the explicit information of which runners appear in the video. Only the visual information related to the runner, such as runner’s unique ID (called bib number), is available. To this end, we propose two automatic runner detection methods, i.e. scene text detection which identifies the runners by detecting their bib number and person re-identification which detects the runners based on their appearance. To evaluate the proposed methods, we create a ground truth database from the video dataset, which consists of video and frame interval information where the runners appear. The video dataset was recorded by nine cameras at different locations during the Campus Run 2018 event. The experimental evidence shows that the scene text recognition method achieves up to 74.05 for F1-score and person re identification achieves up to 87.76 for F1-score. To conclude, we find that the person re-identification method outperforms the scene text recognition method. Subject Computer VisionDeep LearningVisualizationPerson Re-identificationScene Text Recognition To reference this document use: http://resolver.tudelft.nl/uuid:9b246dbe-2708-4aa4-808b-36b92b040174 Part of collection Student theses Document type master thesis Rights © 2019 Priadi Priadi Teguh Wibowo Files PDF Priadi_thesis_report.pdf 9.99 MB Close viewer /islandora/object/uuid:9b246dbe-2708-4aa4-808b-36b92b040174/datastream/OBJ/view