Object detection with a nearest-neighbor classifier based on residual vector quantization
- Author(s):
- Barnes,C.F. ( Georgia Institute of Technology )
- Publication title:
- Terrorism and Counter-Terrorism Methods and Technologies
- Title of ser.:
- Proceedings of SPIE - the International Society for Optical Engineering
- Ser. no.:
- 2933
- Pub. Year:
- 1997
- Page(from):
- 77
- Page(to):
- 85
- Pub. info.:
- Bellingham, Wash.: SPIE-The International Society for Optical Engineering
- ISSN:
- 0277786X
- ISBN:
- 9780819423351 [0819423351]
- Language:
- English
- Call no.:
- P63600/2933
- Type:
- Conference Proceedings
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