Pushing the limits of mechanical turk: qualifying the crowd for video geo-location

L. Gottlieb, Jaeyoung Choi, P. Kelm, T. Sikora, G. Friedland
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引用次数: 16

Abstract

In this article we review the methods we have developed for finding Mechanical Turk participants for the manual annotation of the geo-location of random videos from the web. We require high quality annotations for this project, as we are attempting to establish a human baseline for future comparison to machine systems. This task is different from a standard Mechanical Turk task in that it is difficult for both humans and machines, whereas a standard Mechanical Turk task is usually easy for humans and difficult or impossible for machines. This article discusses the varied difficulties we encountered while qualifying annotators and the steps that we took to select the individuals most likely to do well at our annotation task in the future.
突破土耳其机器人的极限:让人群具备视频地理定位的资格
在这篇文章中,我们回顾了我们开发的方法,用于从网络上随机视频的地理位置的手动注释中找到土耳其机械参与者。这个项目需要高质量的注释,因为我们正试图建立一个人类基线,以便将来与机器系统进行比较。这个任务不同于标准的Mechanical Turk任务,因为它对人类和机器来说都很困难,而标准的Mechanical Turk任务通常对人类来说很容易,对机器来说很难或不可能。本文讨论了我们在筛选注释者时遇到的各种困难,以及我们为选择将来最有可能完成注释任务的人所采取的步骤。
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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