Convolutional Neural Network-Based Gear Type Identification from Automatic Identification System Trajectory Data

被引:32
作者
Kim, Kwang-il [1 ]
Lee, Keon Myung [2 ]
机构
[1] Jeju Natl Univ, Dept Marine Ind & Maritime Police, Jeju 64343, South Korea
[2] Chungbuk Natl Univ, Dept Comp Sci, Cheongju 28644, South Korea
来源
APPLIED SCIENCES-BASEL | 2020年 / 10卷 / 11期
基金
新加坡国家研究基金会;
关键词
fishing gear type classification; classification; automatic identification system; deep learning; illegal fishing; FISHING EFFORT; ENFORCEMENT; CORRUPTION;
D O I
10.3390/app10114010
中图分类号
O6 [化学];
学科分类号
0703 ;
摘要
Marine resources are valuable assets to be protected from illegal, unreported, and unregulated (IUU) fishing and overfishing. IUU and overfishing detections require the identification of fishing gears for the fishing ships in operation. This paper is concerned with automatically identifying fishing gears from AIS (automatic identification system)-based trajectory data of fishing ships. It proposes a deep learning-based fishing gear-type identification method in which the six fishing gear type groups are identified from AIS-based ship movement data and environmental data. The proposed method conducts preprocessing to handle different lengths of messaging intervals, missing messages, and contaminated messages for the trajectory data. For capturing complicated dynamic patterns in trajectories of fishing gear types, a sliding window-based data slicing method is used to generate the training data set. The proposed method uses a CNN (convolutional neural network)-based deep neural network model which consists of the feature extraction module and the prediction module. The feature extraction module contains two CNN submodules followed by a fully connected network. The prediction module is a fully connected network which suggests a putative fishing gear type for the features extracted by the feature extraction module from input trajectory data. The proposed CNN-based model has been trained and tested with a real trajectory data set of 1380 fishing ships collected over a year. A new performance index, DPI (total performance of the day-wise performance index) is proposed to compare the performance of gear type identification techniques. To compare the performance of the proposed model, SVM (support vector machine)-based models have been also developed. In the experiments, the trained CNN-based model showed 0.963 DPI, while the SVM models showed 0.814 DPI on average for the 24-h window. The high value of the DPI index indicates that the trained model is good at identifying the types of fishing gears.
引用
收藏
页数:21
相关论文
共 28 条
[1]  
[Anonymous], 2013, Collect Vol Sci Pap ICCAT
[2]  
[Anonymous], 2010, P 27 INT C MACH LEAR, DOI 10.5555/3104322.3104425
[3]   Fishing activity of tuna purse seiners estimated from vessel monitoring system (VMS) data [J].
Bez, Nicolas ;
Walker, Emily ;
Gaertner, Daniel ;
Rivoirard, Jacques ;
Gaspar, Philippe .
CANADIAN JOURNAL OF FISHERIES AND AQUATIC SCIENCES, 2011, 68 (11) :1998-2010
[4]   The management of fisheries and marine ecosystems [J].
Botsford, LW ;
Castilla, JC ;
Peterson, CH .
SCIENCE, 1997, 277 (5325) :509-515
[5]  
Cochrane K, 2009, FAO Fisheries and Aquaculture Technical Paper No. 530
[6]  
Davie S., 2009, IR FISH INVESTIG, V21, P1
[7]   Can vessel monitoring system data also be used to study trawling intensity and population depletion? The example of Australia's northern prawn fishery [J].
Deng, R ;
Dichmont, C ;
Milton, D ;
Haywood, M ;
Vance, D ;
Hall, N ;
Die, D .
CANADIAN JOURNAL OF FISHERIES AND AQUATIC SCIENCES, 2005, 62 (03) :611-622
[8]  
Fagan BrianM., 2007, Fish on Friday: Feasting, Fasting, and the Discovery of the New World
[9]   Mapping change in bottom trawling activity in the Mediterranean Sea through AIS data [J].
Ferra, Carmen ;
Tassetti, Anna Nora ;
Grati, Fabio ;
Pellini, Giulio ;
Polidori, Piero ;
Scarcella, Giuseppe ;
Fabi, Gianna .
MARINE POLICY, 2018, 94 :275-281
[10]  
Gao B., 2017, PROPERTIES SOFTMAX F