Unsupervised Anomaly Detection in Multivariate Spatio-Temporal Datasets Using Deep Learning

被引:0
作者
Karadayi, Yildiz [1 ,2 ]
机构
[1] Kadir Has Univ, Istanbul, Turkey
[2] Innova, Istanbul, Turkey
来源
ADVANCED ANALYTICS AND LEARNING ON TEMPORAL DATA, AALTD 2019 | 2020年 / 11986卷
关键词
Unsupervised anomaly detection; Multivariate; Spatio-temporal data; Deep learning;
D O I
10.1007/978-3-030-39098-3_13
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Techniques used for spatio-temporal anomaly detection in an unsupervised settings has attracted great attention in recent years. It has extensive use in a wide variety of applications such as: medical diagnosis, sensor events analysis, earth science, fraud detection systems, etc. Most of the real world time series datasets have spatial dimension as additional context such as geographic location. Although many temporal data are spatio-temporal in nature, existing techniques are limited to handle both contextual (spatial and temporal) attributes during anomaly detection process. Taking into account of spatial context in addition to temporal context would help uncovering complex anomaly types and unexpected and interesting knowledge about problem domain. In this paper, a new approach to the problem of unsupervised anomaly detection in a multivariate spatio-temporal dataset is proposed using a hybrid deep learning framework. The proposed approach is composed of a Long Short Term Memory (LSTM) Encoder and Deep Neural Network (DNN) based classifier to extract spatial and temporal contexts. Although the approach has been employed on crime dataset from San Francisco Police Department to detect spatio-temporal anomalies, it can be applied to any spatio-temporal datasets.
引用
收藏
页码:167 / 182
页数:16
相关论文
共 50 条
[41]   A deep encoder-decoder network for anomaly detection in driving trajectory behavior under spatio-temporal context [J].
Yu, Wenhao ;
Huang, Qinghong .
INTERNATIONAL JOURNAL OF APPLIED EARTH OBSERVATION AND GEOINFORMATION, 2022, 115
[42]   Rapid spatio-temporal flood prediction and uncertainty quantification using a deep learning method [J].
Hu, R. ;
Fang, F. ;
Pain, C. C. ;
Navon, I. M. .
JOURNAL OF HYDROLOGY, 2019, 575 :911-920
[43]   UDTL: Anomaly Detection Based on Unsupervised Deep Transfer Learning [J].
Wang, Xiang ;
Wang, Yuanyu ;
Dai, Yu ;
Wei, Chi ;
Tang, Yuliang .
PROCEEDINGS OF THE 2024 27 TH INTERNATIONAL CONFERENCE ON COMPUTER SUPPORTED COOPERATIVE WORK IN DESIGN, CSCWD 2024, 2024, :2650-2655
[44]   Using deep learning for precipitation forecasting based on spatio-temporal information: a case study [J].
Weide Li ;
Xi Gao ;
Zihan Hao ;
Rong Sun .
Climate Dynamics, 2022, 58 :443-457
[45]   Using deep learning for precipitation forecasting based on spatio-temporal information: a case study [J].
Li, Weide ;
Gao, Xi ;
Hao, Zihan ;
Sun, Rong .
CLIMATE DYNAMICS, 2022, 58 (1-2) :443-457
[46]   Spatio-Temporal Information for Action Recognition in Thermal Video Using Deep Learning Model [J].
Srihari, P. ;
Harikiran, J. .
INTERNATIONAL JOURNAL OF ELECTRICAL AND COMPUTER ENGINEERING SYSTEMS, 2022, 13 (08) :669-680
[47]   Improvement of Typhoon Intensity Forecasting by Using a Novel Spatio-Temporal Deep Learning Model [J].
Jiang, Shuailong ;
Fan, Hanjie ;
Wang, Chunzai .
REMOTE SENSING, 2022, 14 (20)
[48]   COVID-19 Spatio-Temporal Evolution Using Deep Learning at a European Level [J].
Kavouras, Ioannis ;
Kaselimi, Maria ;
Protopapadakis, Eftychios ;
Bakalos, Nikolaos ;
Doulamis, Nikolaos ;
Doulamis, Anastasios .
SENSORS, 2022, 22 (10)
[49]   Spatio-temporal water height prediction for dam break flows using deep learning [J].
Deng, Yangyu ;
Zhang, Di ;
Cao, Ze ;
Liu, Yakun .
OCEAN ENGINEERING, 2024, 302
[50]   Spatio-Temporal Split Learning [J].
Kim, Joongheon ;
Park, Seunghoon ;
Jung, Soyi ;
Yoo, Seehwan .
51ST ANNUAL IEEE/IFIP INTERNATIONAL CONFERENCE ON DEPENDABLE SYSTEMS AND NETWORKS - SUPPLEMENTAL VOL (DSN 2021), 2021, :11-12