A spoken language inquiry system for automatic train timetable information

Harald Aust, Martin Oerder, Frank Seide, Volker Steinbiss
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引用次数: 19

Abstract

This article describes the Philips automatic train timetable information system which enables the user to call up accurate information about train connections between 1200 German cities over the telephone. In contrast to most of the inquiry systems available so far, the caller can talk to our system in unrestricted, natural and fluent speech, very much like talking to a human operator. No instructions are given beforehand.

The system consists of four main components: speech recognition, speech understanding, dialogue control, and speech output. They are separated into independent modules and executed sequentially. The speech recogniser creates a word graph from the spoken input. This word graph is then passed to the understanding component which computes the meaning, using an attributed stochastic context-free grammar. A dialogue manager analyses the results and either accesses the database or comes up with another question if necessary.

The system has been made available to the general public in an ongoing field test, both to gather speech data and to evaluate its performance.

列车时刻表信息自动查询系统
本文介绍了飞利浦自动列车时刻表信息系统,该系统使用户能够通过电话查询德国1200个城市之间列车连接的准确信息。与目前可用的大多数查询系统相比,呼叫者可以用不受限制、自然和流利的语言与我们的系统交谈,就像与人类操作员交谈一样。事先没有任何指示。该系统主要由语音识别、语音理解、对话控制和语音输出四个部分组成。它们被分离成独立的模块并依次执行。语音识别器根据语音输入创建单词图。然后,这个词图被传递给理解组件,该组件使用属性随机上下文无关语法计算含义。对话管理器分析结果并访问数据库,或者在必要时提出另一个问题。该系统已在正在进行的现场测试中提供给公众,以收集语音数据并评估其性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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