katerenchuk14@interspeech_2014@ISCA

Total: 1

#1 Improving named entity recognition with prosodic features [PDF1] [Copy] [Kimi1] [REL]

Authors: Denys Katerenchuk, Andrew Rosenberg

In natural language processing (NLP) the problem of named entity (NE) recognition in speech is well known, yet remains a challenge where performance is dependent on automatic speech recognition (ASR) system error rates. NEs are often foreign or out-of-vocabulary (OOV) words, leaving conventional ASR systems unable to recognize them. In our research, we improve a CRF-based NE recognition system by incorporating two styles of prosodic features, hypothesized ToBI labels and unsupervised clusters of acoustic features. ToBI-based features improve NE recognition by 6% absolute (F1:0.39 v.s. F1: 0.45) on automatically recognized spontaneous speech from ACE'05.

Subject: INTERSPEECH.2014 - Language and Multimodal