主催: 人工知能学会
会議名: 第73回 言語・音声理解と対話処理研究会
回次: 73
開催地: 東京大学本郷キャンパス 工学部新2号館9階 93B
開催日: 2015/03/09
p. 02-
A spoken dialogue system should respond quickly after a user finishes speaking, but this often causes incorrect segmentation of user utterances by erroneous voice activity detection. We previously developed a method that performs a posteriori restoration for the incorrectly segmented utterances. A crucial part of the method is to classify whether the restoration is required or not. In this paper, we improve the accuracy by adapting the classification to each user. We focus on speaking tempo of each user, which can be obtained during dialogues. We reveal a correlation between each user's tempos and their appropriate thresholds used in the classification. We then derive a linear regression function that converts the tempos into the thresholds. We adapt two classifiers: that simply using a threshold and decision tree learning. Experimental results showed the proposed user adaptation for the two classifiers improved the classification accuracies by 3.3% and 2.1%.