Improving Speech Recognition Accuracy of Local POI Using Geographical Models

Songjun Cao, Yike Zhang, Xiaobing Feng, Long Ma
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引用次数: 3

Abstract

Nowadays voice search for points of interest (POI) is becoming increasingly popular. However, speech recognition for local POI names still remains a challenge due to multi-dialect and long-tailed distribution of POI names. This paper improves speech recognition accuracy for local POI from two aspects. Firstly, a geographic acoustic model (Geo-AM) is proposed. The proposed Geo-AM deals with multi-dialect problem using dialect-specific input feature and dialect-specific top layers. Secondly, a group of geo-specific language models (Geo-LMs) are integrated into our speech recognition system to improve recognition accuracy of long-tailed and homophone POI names. During decoding, a specific Geo-LM is selected on-demand according to the user’s geographic location. Experiments show that the proposed Geo-AM achieves 6.5%~10.1% relative character error rate (CER) reduction on an accent test set and the proposed Geo-AM and Geo-LMs totally achieve over 18.7% relative CER reduction on a voice search task for Tencent Map.
利用地理模型提高局部POI语音识别精度
如今,语音搜索兴趣点(POI)变得越来越流行。然而,由于地名的多方言分布和长尾分布,本地地名的语音识别仍然是一个挑战。本文从两个方面提高了局部POI的语音识别精度。首先,提出地理声学模型(Geo-AM)。本文提出的Geo-AM使用特定方言的输入特征和特定方言的顶层来处理多方言问题。其次,将一组地理特定语言模型(Geo-LMs)集成到我们的语音识别系统中,以提高长尾和同音词的POI名称的识别精度。在解码过程中,根据用户的地理位置按需选择特定的Geo-LM。实验表明,本文提出的Geo-AM在口音测试集上的相对字符错误率(CER)降低了6.5%~10.1%,在腾讯地图语音搜索任务上,本文提出的Geo-AM和Geo-LMs的相对字符错误率降低了18.7%以上。
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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