目标演讲:智能呼叫中心支持在孟加拉语与说话者认证

Shehan Irteza Pranto, Rahad Arman Nabid, Ahnaf Mozib Samin, Nabeel Mohammed, F. Sarker, M. N. Huda, K. Mamun
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引用次数: 1

摘要

呼叫支持中心通过电话操作,连接客户和接待员,通过解决客户的问题来确保客户满意。由于流行病,客户呼叫支持中心已成为一种流行的通信方式,已被用于电子商务、医院、银行、信用卡支持、政府办公室等不同领域。此外,人类24小时服务的局限性和等待时间的波动,使得通过呼叫中心满足所有客户的需求更具挑战性。因此,客户服务需要通过使用母语提供基于域的响应来自动化处理客户,特别是在呼叫支持中心不断增加的孟加拉国这样的发展中国家。虽然大多数人使用孟加拉语进行交流,但在母语客户服务自动化方面做的工作很少。我们开发的“AIMS TALK”架构可以通过识别用户的声音,以标准化的孟加拉语指定客户的问题,收集客户对数据库的响应,根据查询给出反馈,从而响应客户的需求。此外,系统采用MFCC特征提取对42人进行说话人识别,平均准确率为94.38%;采用基于rnn的孟加拉语自动语音识别(ASR)模型,单词错误率为42.15%;采用句子相似度测量技术对句子进行总结,平均损失为0.004。最后,我们在WavNet架构中使用gTTS作为孟加拉语的文本到语音合成。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
AIMS TALK: Intelligent Call Center Support in Bangla Language with Speaker Authentication
Call support centers operate over the telephone, connect between customers and receptionists to ensure customer satisfaction by solving their problems. Due to pandemics, customer call support centers have become a popular way of communication that has been used in different domains such as e-commerce, hospitals, banks, credit card support, government offices. Moreover, humans’ limitations to serve 24 hours a day and the fluctuation of waiting time makes it more challenging to satisfy all the customers over call center. So, customer service needs to be automated to handle customers by providing a domain-based response in the native language, especially in a developing country like Bangladesh, where call support centers are increasing. Although most people use the Bangla language to communicate, little work has been done in customer care automation in the native language. Our developed architecture, “AIMS TALK” can respond to that customer’s need by recognizing users’ voices, specifying customers’ problems in the standardized Bangla language, collecting customers’ responses to the database to give feedback according to the queries. Besides, the system uses MFCC feature extraction for speaker recognition with an average accuracy of 94.38% on 42 people in real-time testing, an RNN-based model for Bangla Automatic Speech Recognition (ASR) with a word error rate (WER) of 42.15%, and sentence summarization we used Sentence similarity measurement technique having an average loss of 0.004. Lastly, we used gTTS that works as Text to Speech Synthesis for the Bangla language in WavNet architecture.
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