View-invariant alignment and matching of video sequences
Cen Rao, Alexei Gritai, et al.
ICCV 2003
This paper proposes two methods to incorporate semantic information into word and concept level confidence measurement. The first method uses tag and extension probabilities obtained from a statistical classer and parser. The second method uses a maximum entropy based semantic structured language model to assign probabilities to each word. Incorporation of semantic features into a lattice posterior probability based confidence measure provides significant improvements compared to posterior probability when used together in an air travel reservation task. At 5% False Alarm (FA) rate relative improvements of 28% and 61% in Correct Acceptance (CA) rate are achieved for word level and concept level confidence measurements, respectively. © 2005 IEEE.
Cen Rao, Alexei Gritai, et al.
ICCV 2003
David B. Mayer, Ashford W. Stalnaker
ACM SIGMIS CPR 1967
N.C. Narendra, Umesh Bellur, et al.
Middleware 2005
Ken C.L. Wong, Satyananda Kashyap, et al.
Pattern Recognition Letters