基于句子相似度和情感对话的口语对话系统

Bo-Hao Su, Shih-Pang Tseng, Jhing-Fa Wang, J. Huang
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引用次数: 0

摘要

提出了一种基于语音的口语对话问答系统。利用句子相似度计算得分和寻找相应的句子是主要部分。当语料库不足时,用户生成的答案由Free Talk生成。在我们的系统中,ASR转录通过中文知识与信息处理(CKIP)中文分词系统进行处理。然后通过人机界面过滤命令句,剩余的正常句通过对话系统,正常句通过预处理词袋进行矢量化。对语料库中的所有句子进行预处理,并在向量空间模型中进行矢量化,然后通过与向量空间模型的句子相似度计算输入句子。为了使系统更有观赏性,我们采用图像识别来记录圆形的情绪。根据圆润的情绪,来回应情绪对话。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Based on sentence similarity and emotion conversation for spoken dialogue system
This paper presents the based-on question answering system for spoken dialogue. Utilizing sentence similarity to calculate the score and finding the corresponding sentence are main parts. When the corpus is insufficient, the usergenerated answer is generated form Free Talk. In our system, the ASR transcription is processed through Chinese Knowledge and Information Processing (CKIP) Chinese words segmentation system. Then, filtering the command sentences through human machine interface, remaining normal sentences are passed the dialogue system, and normal sentences are vectorized through preprocess bag of word. All sentences of corpus have been preprocessed and vectorized in vector space model, then, input sentence is calculated by sentence similarity with vector space model. In order to make system more enjoyable, we adapt image recognition to record the round emotions. According to the round emotions, to response the emotion conversation.
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