Skip to main navigation
Skip to search
Skip to main content
Illinois Experts Home
LOGIN & Help
Home
Profiles
Research units
Research & Scholarship
Datasets
Honors
Press/Media
Activities
Search by expertise, name or affiliation
Discovering recurrent events in video using unsupervised methods
Milind R. Naphade, Thomas S. Huang
Coordinated Science Lab
Research output
:
Contribution to conference
›
Paper
›
peer-review
Overview
Fingerprint
Fingerprint
Dive into the research topics of 'Discovering recurrent events in video using unsupervised methods'. Together they form a unique fingerprint.
Sort by
Weight
Alphabetically
Keyphrases
Unsupervised Method
100%
Short-term Events
100%
Recurrent Events
100%
Long History
50%
Piecewise
50%
Temporal Support
50%
Stationary Signal
50%
Probabilistic Model
50%
Browsing
50%
Event Detection
50%
Similarity-based
50%
Temporal Model
50%
Unsupervised Algorithm
50%
Long-term Correlation
50%
Short-term Statistics
50%
Monolithic Model
50%
Long-term Recurrence
50%
Computer Science
Event Detection
100%
Unsupervised Method
100%
Interaction Term
100%
Video Production
100%
Term Recurrence
100%
Recurrent Event
100%
Engineering
Longer Term
100%
Recurrent
100%
Similarities
33%
Event Detection
33%
Term Statistic
33%
Interaction Term
33%
Summarization
33%