Abstract
This chapter discusses problems in the creation of datasets for maritime surveillance. The chapter also deals with visualization of the dataset and previewing it over the Internet. This is a part of research in creating a new dataset. Three videos are presented first. The dataset deals with the video monitoring of the sea area in different weather conditions. Three conditions are presented: cloudy, snowing, and sunny. The ground truth is generated in Matlab Ground Truth Labeler.
This is a preview of subscription content, log in via an institution.
Buying options
Tax calculation will be finalised at checkout
Purchases are for personal use only
Learn about institutional subscriptionsReferences
Vujović I (2015) Multiresolution approach to processing images for different applications-interaction of lower processing with higher vision. Springer, Heidelberg
Vujović I, Kuzmanić I (2017) Case study on wavelet choice based on statistical image quality measures. Turk J Elec Eng Comp Sci 25:2846–2859
Szczepański C, Ciopcia M (2019) How to avoid mistakes in software development for unmanned vehicles. Trans marit sci. https://doi.org/10.7225/toms.v08.n02.005
Qiao F (2018) Large scale visualizations and mapping with datashader. https://towardsdatascience.com/large-scale-visualizations-and-mapping-with-datashader-d465f5c47fb5. Accessed 3 January 2020
Xie K, Yang J, Zhu YM (2008) Real-time visualization of large volume datasets on standard PC hardware. Comput Methods Progr Biomed 90:117–123
Stanford S, Iriondo R, Shukla P (2020) The best public datasets for machine learning and data science. https://medium.com/towards-artificial-intelligence/the-50-best-public-datasets-for-machine-learning-d80e9f030279
Shao J, Kang K, Loy CC, Wang X (2015) Deeply learned attributes for crowded scene understanding. In: Proceeding of IEEE conference on computer vision and pattern recognition. https://amandajshao.github.io/projects/WWWCrowdDataset.html
Monfort M, Andonian A, Zhou B, Ramakrishnan K, Bargal SA, Yan T, Brown L, Fan Q, Gutfruend D, Vondrick C, Oliva A (2019) Moments in time dataset: one million videos for event understanding. IEEE Trans Pattern Anal Mach Intell. https://doi.org/10.1109/TPAMI.2019.2901464
Big data. https://imaris.oxinst.com/big-data. Accessed 23 January 2020
Pańka M, Chlebiej M, Benedyczak K, Bała P (2011) Visualization of multidimensional data on distributed mobile devices using interactive video streaming techniques. MIPRO 2011, May 23–27, Opatija, Croatia, pp 246–251
Saunier N, Ardö H, Jodoin JP, Laureshyn A, Nilsson M, Svensson Å, Åström K (2014) A public video dataset for road transportation applications. In: 93th TRB Annual Meeting, Washington DC, United States
Jiang YG, Wang J, Wang Q, Liu W, Ngo CW (2016) Hierarchical visualization of video search results for topic-based browsing. IEEE Trans Multimed 18:2161–2170
Budiu M, Isaacs R, Murray D, Plotkin G, Barham P, Al-Kiswany S, Boshmaf Y, Luo Q, Andoni A (2016) Interacting with large distributed datasets using sketch. In: Eurographics symposium on parallel graphics and visualization, Groningen, the Netherlands
Zhu Y, Liu S, Newsam S (2017) Large-scale mapping of human activity using geo-tagged videos. SIGSPATIAL’17, Redondo Beach, California USA. https://arxiv.org/pdf/1706.07911.pdf Accessed 28 Nov 2019
Wang X, Cheng E, Burnett IS, Huang Y, Wlodkowic D (2017) Crowdsourced generation of annotated video datasets: a Zebrafish Larvae dataset for video segmentation and tracking evaluation. In: IEEE life sciences conference, Sydney, pp 274–277
Zhang S, Wang X, Liu A, Zhao C, Wan J, Escalera S, Shi H, Wang Z, Li SZ (2019) A dataset and benchmark for large-scale multi-modal face anti-spoofing. CVPR 2019:919–928
Zeeshan M, Majid M, Nizami IF, Anwar SM, Din IU, Khan MK (2018) A newly developed ground truth dataset for visual saliency in videos. IEEE Access 6:20855–20867
Tang Y, Ding D, Rao Y, Zheng Y, Zhang D, Zhao L, Lu J, Zhou J (2019) COIN: A large-scale dataset for comprehensive instructional video analysis. CVPR 2019. https://arxiv.org/pdf/1903.02874.pdf
Kalsotra R, Arora S (2019) A comprehensive survey of video datasets for background subtraction. IEEE Access 7:59143–59171
Kuzmanić I, Vujović I (2018) Maritime zone surveillance with video cameras. In: International conference on transport science, 14–15 June 2018, Portorož, Slovenia, pp 180–183
Vujović I, Kuzmanić I (2018) Investigation of weather conditions’ influence to the maritime zone surveillance—ground truth generation. In: 21th international research/expert conference trends in the development of machinery and associated technology, 18–22 September 2018, Karlovy Vary, Czech Republic, pp 289–292
Vujović I, Kuzmanić I (2019) Some problems in establishing maritime zone surveillance dataset. In: 8th international maritime science conference, 11–12.4, Budva, Montenegro, pp 239–245
Petković M, Vujović I, Kuzmanić I (2020) An overview of horizon detection methods in maritime video surveilance. Trans marit sci. https://doi.org/10.7225/toms.v09.n01.010
Acknowledgements
This research is carried out within the framework of the scientific project “Establishment of a reference database to study the influence of weather conditions on maritime video surveillance”, funded by the Faculty of Maritime Studies, University of Split, and the project “Functional integration of University of Split, Faculty of Maritime Studies, Faculty of Chemistry and Technology, and Faculty of Science through Development of Scientific and Research Infrastructure in the Building of 3 Faculties, KK.01.1.1.02.0018” financed by EU. It is conducted by the research group new technologies in maritime (leader I. Vujović).
Author information
Authors and Affiliations
Corresponding author
Editor information
Editors and Affiliations
Rights and permissions
Copyright information
© 2022 The Author(s), under exclusive license to Springer Nature Switzerland AG
About this chapter
Cite this chapter
Vujović, I., Petković, M., Kuzmanić, I., Šoda, J. (2022). Visualization Approach to Presentation of New Referral Dataset for Maritime Zone Video Surveillance in Various Weather Conditions. In: Öchsner, A., Altenbach, H. (eds) Engineering Design Applications IV. Advanced Structured Materials, vol 172. Springer, Cham. https://doi.org/10.1007/978-3-030-97925-6_11
Download citation
DOI: https://doi.org/10.1007/978-3-030-97925-6_11
Published:
Publisher Name: Springer, Cham
Print ISBN: 978-3-030-97924-9
Online ISBN: 978-3-030-97925-6
eBook Packages: EngineeringEngineering (R0)