Dynamic Time-Alignment Kernel in Support Vector Machine
Shimodaira, Hiroshi, Noma, Ken-ichi, Nakai, Mitsuru, Sagayama, Shigeki
–Neural Information Processing Systems
A new class of Support Vector Machine (SVM) that is applicable to sequential-pattern recognition such as speech recognition is developed by incorporating an idea of nonlinear time alignment into the kernel function. Since the time-alignment operation of sequential pattern is embedded in the new kernel function, standard SVM training and classification algorithms can be employed without further modifications. The proposed SVM (DTAK-SVM) is evaluated in speaker-dependent speech recognition experiments of hand-segmented phoneme recognition. Preliminary experimental results show comparable recognition performance with hidden Markov models (HMMs).
Neural Information Processing Systems
Dec-31-2002