Characterizing Time Spent in Video Object Tracking Annotation Tasks: A Study of Task Complexity in Vehicle Tracking

Amy Rechkemmer, Alex C. Williams, Matthew Lease, Li Erran Li
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Abstract

Video object tracking annotation tasks are a form of complex data labeling that is inherently tedious and time-consuming. Prior studies of these tasks focus primarily on quality of the provided data, leaving much to be learned about how the data was generated and the factors that influenced how it was generated. In this paper, we take steps toward this goal by examining how human annotators spend their time in the context of a video object tracking annotation task. We situate our study in the context of a standard vehicle tracking task with bounding box annotation. Within this setting, we study the role of task complexity by controlling two dimensions of task design -- label constraint and label granularity -- in conjunction with worker experience. Using telemetry and survey data collected from 40 full-time data annotators at a large technology corporation, we find that each dimension of task complexity uniquely affects how annotators spend their time not only during the task, but also before it begins. Furthermore, we find significant misalignment in how time-use was observed and how time-use was self-reported. We conclude by discussing the implications of our findings in the context of video object tracking and the need to better understand how productivity can be defined in data annotation.
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视频目标跟踪标注任务时间表征:车辆跟踪任务复杂度研究
视频对象跟踪注释任务是一种复杂的数据标记形式,本质上是乏味和耗时的。先前对这些任务的研究主要集中在所提供数据的质量上,对于数据的产生方式和影响数据产生方式的因素还有很多需要了解的地方。在本文中,我们通过研究人类注释者如何在视频对象跟踪注释任务的上下文中花费时间来实现这一目标。我们将我们的研究置于具有边界框注释的标准车辆跟踪任务的上下文中。在这种情况下,我们通过控制任务设计的两个维度——标签约束和标签粒度——结合工人经验来研究任务复杂性的作用。利用从一家大型科技公司的40名全职数据注释员那里收集的遥测和调查数据,我们发现任务复杂性的每个维度都独特地影响着注释员在任务期间和任务开始之前如何花费时间。此外,我们发现在如何观察时间使用和如何自我报告时间使用方面存在显著的不一致。最后,我们讨论了我们的研究结果在视频对象跟踪背景下的含义,以及更好地理解如何在数据注释中定义生产力的必要性。
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