Text and Voice Based Emotion Monitoring System

A. S. Naik
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Abstract

An Emotion monitoring system for a call-center is proposed. It aims to simplify the tracking and management of emotions extracted from call center Employee-Customer conversations. The system is composed of four modules: Emotion Detection, Emotion Analysis and Report Generation, Database Manager, and User Interface. The Emotion Detection module uses Tone Analyzer to extract them for reliable emotion; it also performs the Utterance Analysis for detecting emotion. The 14 emotions detected by the tone analyzer are happy, joy, anger, sad and neutral, etc. The Emotion Analysis module performs classification into the 3 categories: Neutral, Anger and Joy. By using this category, it applies the point-scoring technique for calculating the Employee Score. This module also polishes the output of the Emotion Detection module to provide a more presentable output of a sequence of emotions of the Employee and the Customer. The Database Manager is responsible for the management of the database wherein it handles the creation, and update of data. The Interface module serves as the view and user interface for the whole system. The system is comprised of an Android application for conversation and a web application to view reports. The Android application was developed using Android Studio to maintain the modularity and flexibility of the system. The local server monitors the conversation, it displays the detected emotions of both the Customer and the Employee. On the other hand, the web application was constructed using the Django Framework to maintain its modularity and abstraction by using a model. It provides reports and analysis of the emotions expressed by the customer during conversations. Using the Model View Template (MVT) approach, the Emotion monitoring system is scalable, reusable and modular. CONTACT Mr. Anil S Naik anil.nk287@gmail.com Department of Information Technology, Walchand Institute of Technology,
基于文本和语音的情绪监测系统
提出了一种面向呼叫中心的情绪监测系统。它旨在简化从呼叫中心员工-客户对话中提取的情绪的跟踪和管理。该系统由四个模块组成:情绪检测、情绪分析与报表生成、数据库管理和用户界面。情绪检测模块使用Tone Analyzer对其进行提取,获得可靠的情绪;它还执行话语分析来检测情绪。语调分析器检测到的14种情绪有高兴、高兴、愤怒、悲伤和中性等。情绪分析模块将情绪分为3类:中性、愤怒和快乐。通过使用这个类别,它应用计分技术来计算员工得分。该模块还改进了情绪检测模块的输出,以提供更美观的员工和客户情绪序列输出。数据库管理器负责管理数据库,其中处理数据的创建和更新。接口模块是整个系统的视图和用户界面。该系统由一个用于对话的Android应用程序和一个用于查看报表的web应用程序组成。为了保持系统的模块化和灵活性,使用Android Studio开发Android应用程序。本地服务器监视对话,它显示检测到的客户和员工的情绪。另一方面,web应用程序是使用Django框架构建的,通过使用模型来维护其模块化和抽象化。它提供客户在对话过程中所表达的情绪的报告和分析。采用模型视图模板(MVT)方法,情绪监测系统具有可扩展性、可重用性和模块化。联系Anil S Naik先生anil.nk287@gmail.com Walchand理工学院信息技术系
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