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Vision-based traffic accident detection using sparse spatio-temporal features and weighted extreme learning machine
Yuanlong Yu, Miaoxing Xu,
Jason Gu
Chemistry
Research output
:
Contribution to journal
›
Article
›
peer-review
20
Citations (Scopus)
Overview
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Dive into the research topics of 'Vision-based traffic accident detection using sparse spatio-temporal features and weighted extreme learning machine'. Together they form a unique fingerprint.
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Keyphrases
Weighted Regularized Extreme Learning Machine (WRELM)
100%
Traffic Detection
100%
Traffic Accidents
100%
Normal Traffic
50%
Lipschitz Estimates
25%
Point Search
25%
Feature Sparsity
25%
Small Data
25%
Spatio-temporal Feature Representation
25%
Intelligent Transportation Systems
25%
Sparse Coding Algorithm
25%
Encoded Features
25%
Sample Imbalance
25%
Accidents Traffic
25%
Feature Detection
25%
Computer Science
Normal Traffic
66%
Multimodality
33%
Intelligent Transportation System
33%
Candidate Value
33%