Crossref Citations
This article has been cited by the following publications. This list is generated based on data provided by
Crossref.
Liang, Maohan
Liu, Ryan Wen
Li, Yan
Wu, Jianhua
and
Liu, Jingxian
2017.
Data-Driven Statistical Analysis of Dynamic Vessel Trajectories in Wuhan Section of the Yangtze River.
p.
44.
Olier, Juan Sebastian
Campo, Damian Andres
Marcenaro, Lucio
Barakova, Emilia
Rauterberg, Matthias
and
Regazzoni, Carlo
2017.
Active estimation of motivational spots for modeling dynamic interactions.
p.
1.
Li, Huanhuan
Liu, Jingxian
Liu, Ryan
Xiong, Naixue
Wu, Kefeng
and
Kim, Tai-hoon
2017.
A Dimensionality Reduction-Based Multi-Step Clustering Method for Robust Vessel Trajectory Analysis.
Sensors,
Vol. 17,
Issue. 8,
p.
1792.
Zhen, Rong
Riveiro, Maria
and
Jin, Yongxing
2017.
A novel analytic framework of real-time multi-vessel collision risk assessment for maritime traffic surveillance.
Ocean Engineering,
Vol. 145,
Issue. ,
p.
492.
Zhao, Liangbin
Shi, Guoyou
and
Yang, Jiaxuan
2018.
Ship Trajectories Pre-processing Based on AIS Data.
Journal of Navigation,
Vol. 71,
Issue. 5,
p.
1210.
Sheng, Pan
and
Yin, Jingbo
2018.
Extracting Shipping Route Patterns by Trajectory Clustering Model Based on Automatic Identification System Data.
Sustainability,
Vol. 10,
Issue. 7,
p.
2327.
Sheng, Kai
Liu, Zhong
Zhou, Dechao
He, Ailin
and
Feng, Chengxu
2018.
Research on Ship Classification Based on Trajectory Features.
Journal of Navigation,
Vol. 71,
Issue. 1,
p.
100.
Yang, Dong
Wu, Lingxiao
Wang, Shuaian
Jia, Haiying
and
Li, Kevin X.
2019.
How big data enriches maritime research – a critical review of Automatic Identification System (AIS) data applications.
Transport Reviews,
Vol. 39,
Issue. 6,
p.
755.
Huang, Zejun
Wan, Jian
Huang, Jie
Jia, Gangyong
and
Zhang, Wei
2019.
Collaborative Computing: Networking, Applications and Worksharing.
Vol. 292,
Issue. ,
p.
279.
Svanberg, Martin
Santén, Vendela
Hörteborn, Axel
Holm, Henrik
and
Finnsgård, Christian
2019.
AIS in maritime research.
Marine Policy,
Vol. 106,
Issue. ,
p.
103520.
Wen, Rong
and
Yan, Wenjing
2019.
Vessel Crowd Movement Pattern Mining for Maritime Traffic Management.
LOGI – Scientific Journal on Transport and Logistics,
Vol. 10,
Issue. 2,
p.
105.
Zhao, Liangbin
and
Shi, Guoyou
2019.
A trajectory clustering method based on Douglas-Peucker compression and density for marine traffic pattern recognition.
Ocean Engineering,
Vol. 172,
Issue. ,
p.
456.
Zhao, Liangbin
and
Shi, Guoyou
2019.
A Novel Similarity Measure for Clustering Vessel Trajectories Based on Dynamic Time Warping.
Journal of Navigation,
Vol. 72,
Issue. 2,
p.
290.
Cheng, Liang
Yan, ZhaoJin
Xiao, YiJia
Chen, YanMing
Zhang, FangLi
and
Li, ManChun
2019.
Using big data to track marine oil transportation along the 21st-century Maritime Silk Road.
Science China Technological Sciences,
Vol. 62,
Issue. 4,
p.
677.
Zhao, Liangbin
and
Shi, Guoyou
2019.
Maritime Anomaly Detection using Density-based Clustering and Recurrent Neural Network.
Journal of Navigation,
Vol. 72,
Issue. 04,
p.
894.
Venskus, Julius
Treigys, Povilas
Bernatavičienė, Jolita
Tamulevičius, Gintautas
and
Medvedev, Viktor
2019.
Real-Time Maritime Traffic Anomaly Detection Based on Sensors and History Data Embedding.
Sensors,
Vol. 19,
Issue. 17,
p.
3782.
Ross, Harm Hauke
and
Schinas, Orestis
2019.
Empirical evidence of the interplay of energy performance and the value of ships.
Ocean Engineering,
Vol. 190,
Issue. ,
p.
106403.
Wang, Weigang
Chu, Xiumin
Jiang, Zhonglian
and
Liu, Lei
2019.
Classification of Ship Trajectories by Using Naive Bayesian algorithm.
p.
466.
Wahyu Handani, Sitaresmi
Intan Surya Saputra, Dhanar
Hasirun
Mega Arino, Rizky
and
Fiza Asyrofi Ramadhan, Gita
2019.
Sentiment Analysis for Go-Jek on Google Play Store.
Journal of Physics: Conference Series,
Vol. 1196,
Issue. ,
p.
012032.
Tian, Junfeng
Ding, Wei
Wu, Chunrui
and
Nam, Kwang Woo
2019.
A Generalized Approach for Anomaly Detection From the Internet of Moving Things.
IEEE Access,
Vol. 7,
Issue. ,
p.
144972.