Sparse reconstruction cost for abnormal event detection
Nanyang Technological University · University of Wisconsin–Madison
Abstract
We propose to detect abnormal events via a sparse reconstruction over the normal bases. Given an over-complete normal basis set (e.g., an image sequence or a collection of local spatio-temporal patches), we introduce the sparse reconstruction cost (SRC) over the normal dictionary to measure the normalness of the testing sample. To condense the size of the dictionary, a novel dictionary selection method is designed with sparsity consistency constraint. By introducing the prior weight of each basis during sparse reconstruction, the proposed SRC is more robust compared to other outlier detection criteria. Our method provides a unified solution to detect both local abnormal events (LAE) and global abnormal events…
Citation impact
- FWCI
- 51.00
- Percentile
- 100%
- References
- 39
Authors
3Topics & keywords
- Benchmark (surveying)
- Computer science
- Outlier
- Pattern recognition (psychology)
- Event (particle physics)
- Artificial intelligence
- Sparse approximation
- Set (abstract data type)