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Online Inference Model for Traffic Pattern Analysis and Anomaly Detection : 교통 패턴 분석과 비정상 탐지를 위한 온라인 추론 모델

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dc.contributor.advisor최진영-
dc.contributor.author정하욱-
dc.date.accessioned2017-07-13T07:07:28Z-
dc.date.available2017-07-13T07:07:28Z-
dc.date.issued2015-02-
dc.identifier.other000000025081-
dc.identifier.urihttps://hdl.handle.net/10371/119058-
dc.description학위논문 (박사)-- 서울대학교 대학원 : 전기·컴퓨터공학부, 2015. 2. 최진영.-
dc.description.abstractIn this thesis, we propose a method for modeling trajectory patterns with both regional and velocity observations through the probabilistic inference model. By embedding Gaussian models into the discrete topic model framework, our method uses continuous velocity as well as regional observations unlike existing approaches. In addition, the proposed framework combined with Hidden Markov Model can cover the temporal transition of the scene state, which is useful in checking a violation of the rule that some conflict topics (e.g. two cross-traffic patterns) should not occur at the same time. To achieve online learning even with the complexity of the proposed model, we suggest a novel learning scheme instead of collapsed Gibbs sampling. The proposed two-stage greedy learning scheme is not only efficient at reducing the search space but also accurate in a way that the accuracy of online learning becomes not worse than that of the batch learning. To validate the performance of our method, experiments were conducted on various datasets. Experimental results show that our model explains satisfactorily the trajectory patterns with respect to scene understanding, anomaly detection, and prediction.-
dc.description.tableofcontentsAbstract
Chapter 1 Introduction
1.1 Statement of Problem
1.2 Related Works
1.2.1 Motion Pattern Analysis Using Trajectory
1.2.2 Motion Pattern Analysis Using Local Motions
1.3 Contributions
1.4 Thesis Organization
Chapter 2 Preliminaries
2.1 Latent Dirichlet Allocation (LDA)
2.1.1 Probabilistic Graphical Model
2.1.2 LDA Property & Formulation
2.2 Inference of LDA
2.2.1 Collapsed Gibbs Sampling
2.2.2 Variational Inference
Chapter 3 Proposed Approach
3.1 Probabilistic Inference Model
3.2 Model Learning
3.2.1 Online Trajectory Clustering
3.2.2 Spatio-Temporal Dependency of Activities
3.2.3 Velocity Learning
3.3 Anomaly Detection
3.4 Summary of the Proposed Method
Chapter 4 Experiments
4.1 Result of Traffic Pattern Understanding
4.2 Applications in Anomaly Detection
4.3 Prediction Task
4.4 Comparison with Sampling
Chapter 5 Conculsion
5.1 Concluding Remarks
5.2 Future Works
초록
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dc.formatapplication/pdf-
dc.format.extent10334655 bytes-
dc.format.mediumapplication/pdf-
dc.language.isoen-
dc.publisher서울대학교 대학원-
dc.subjecttrajectory analysis-
dc.subjecttopic model-
dc.subjectlatent Dirichlet allocation-
dc.subjectsurveillance-
dc.subject.ddc621-
dc.titleOnline Inference Model for Traffic Pattern Analysis and Anomaly Detection-
dc.title.alternative교통 패턴 분석과 비정상 탐지를 위한 온라인 추론 모델-
dc.typeThesis-
dc.contributor.AlternativeAuthorHawook Jeong-
dc.description.degreeDoctor-
dc.citation.pagesvi,113-
dc.contributor.affiliation공과대학 전기·컴퓨터공학부-
dc.date.awarded2015-02-
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