Reverse engineering time-series interaction data from screen-captured videos

Lingfeng Bao, J. Li, Zhenchang Xing, Xinyu Wang, Bo Zhou
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引用次数: 16

Abstract

In recent years the amount of research on human aspects of software engineering has increased. Many studies use screen-capture software (e.g., Snagit) to record developers' behavior as they work on software development tasks. The recorded task videos capture direct information about which activities the developers carry out with which content and in which applications during the task. Such behavioral data can help researchers and practitioners understand and improve software engineering practices from human perspective. However, extracting time-series interaction data (software usage and application content) from screen-captured videos requires manual transcribing and coding of videos, which is tedious and error-prone. In this paper we present a computer-vision based video scraping technique to automatically reverse-engineer time-series interaction data from screen-captured videos. We report the usefulness, effectiveness and runtime performance of our video scraping technique using a case study of the 29 hours task videos of 20 developers in the two development tasks.
从屏幕捕获的视频中反向工程时间序列交互数据
近年来,对软件工程中人的方面的研究越来越多。许多研究使用屏幕捕捉软件(例如,Snagit)来记录开发人员在软件开发任务中的行为。录制的任务视频捕获有关开发人员在任务期间使用哪些内容和在哪些应用程序中执行哪些活动的直接信息。这样的行为数据可以帮助研究人员和实践者从人的角度理解和改进软件工程实践。然而,从屏幕捕获的视频中提取时间序列交互数据(软件使用情况和应用程序内容)需要手动对视频进行转录和编码,这是一项繁琐且容易出错的工作。在本文中,我们提出了一种基于计算机视觉的视频抓取技术,从屏幕捕获的视频中自动反向工程时间序列交互数据。我们通过对两个开发任务中20个开发人员的29小时任务视频的案例研究来报告视频抓取技术的有用性、有效性和运行时性能。
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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