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Edge4Emotion: An Edge Computing based Multi-source Emotion Recognition Platform for Human-Centric Software Engineering

机译:Edge4emotion:基于边缘计算的人以人为本的软件工程多源情绪识别平台

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Human emotion recognition has been widely used and intensively studied in many areas such as e-Commerce, online education, healthcare, human-computer interaction and recently human-centric software engineering (HCSE). HCSE investigates human factors in the entire software development lifecycle, and human emotion can be used in many scenarios such as requirement gathering and usability testing. However, even though existing studies have already shown the advantages of emotion recognition with multi-source data such as text, audio and video, the current research and practice in HCSE are primarily based on single-source data. In addition, emotion recognition in HCSE faces several challenges such as multiple participants, changing environments and real-time requirement. To tackle these challenges, this paper proposes Edge4Emotion, a novel edge computing-based multisource human emotion recognition platform for HCSE. Edge4Emotion takes the advantage of the edge computing paradigm to efficiently support the collection of multi-source data such as audio, video and physiological data from various IoT devices, and emotion recognition with both single- and multisource models. As an on-going project, this paper focuses on the platform design and the preliminary evaluation of the platform with representative emotion recognition applications. The platform will be further extended to include more multi-source learning models and serve as an open-source platform for the development and evaluation of multi-source emotion recognition models for HCSE.
机译:在电子商务,在线教育,医疗保健,人机互动和最近人为人的软件工程(HCSE)等许多领域,人类情感认可已被广泛使用和深入研究。 HCSE在整个软件开发生命周期中调查人类因素,并且人类的情绪可以在许多方案中使用,如要求采集和可用性测试。然而,尽管现有的研究已经表明了与文本,音频和视频等多源数据的情感识别的优势,但HCSE的当前研究和实践主要基于单源数据。此外,HCSE中的情感识别面临着多种参与者,改变环境和实时要求等几种挑战。为了解决这些挑战,本文提出了一个用于HCSE的新型边缘计算的多源人类情感识别平台的边缘4emotion。 Edge4emotion采用边缘计算范例的优势,以有效地支持来自各种IOT设备的音频,视频和生理数据等多源数据的集合,以及使用单一和多源模型的情感识别。作为一个正在进行的项目,本文重点介绍了具有代表情感识别应用的平台设计和平台的初步评估。该平台将进一步扩展到包括更多多源学习模型,并作为用于HCSE多源情感识别模型的开发和评估的开源平台。

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