为可靠的大规模视觉数据分析策划训练数据:从街景图像中识别垃圾的经验教训

IF 6.5 2区 社会学 Q1 SOCIAL SCIENCES, MATHEMATICAL METHODS Sociological Methods & Research Pub Date : 2023-05-15 DOI:10.1177/00491241231171945
Jackelyn Hwang, Nima Dahir, Mayuka Sarukkai, Gabby Wright
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引用次数: 0

摘要

在数字时代,视觉数据的数量急剧增加,为社会科学研究提供了新的机会。然而,使用现有方法处理和分析这些数据的大量时间和人工成本限制了它们的使用。计算机视觉方法很有希望,但通常需要大量且不存在的训练数据来识别社会学相关变量。我们提出了一种经济有效的方法来管理训练数据,利用简单的任务和两两比较来解释和分析使用计算机视觉的大规模视觉数据。我们将我们的方法应用于在美国三个不同城市的数百万张街道图像中检测跨空间和随时间的垃圾水平。通过比较在受控环境下产生的评级,并利用计算方法,我们证明了该方法的总体高可靠性,并确定了限制它的来源。总之,这种方法扩展了如何在社会学中大规模使用视觉数据。
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Curating Training Data for Reliable Large-Scale Visual Data Analysis: Lessons from Identifying Trash in Street View Imagery
Visual data have dramatically increased in quantity in the digital age, presenting new opportunities for social science research. However, the extensive time and labor costs to process and analyze these data with existing approaches limit their use. Computer vision methods hold promise but often require large and nonexistent training data to identify sociologically relevant variables. We present a cost-efficient method for curating training data that utilizes simple tasks and pairwise comparisons to interpret and analyze visual data at scale using computer vision. We apply our approach to the detection of trash levels across space and over time in millions of street-level images in three physically distinct US cities. By comparing to ratings produced in a controlled setting and utilizing computational methods, we demonstrate generally high reliability in the method and identify sources that limit it. Altogether, this approach expands how visual data can be used at a large scale in sociology.
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来源期刊
CiteScore
16.30
自引率
3.20%
发文量
40
期刊介绍: Sociological Methods & Research is a quarterly journal devoted to sociology as a cumulative empirical science. The objectives of SMR are multiple, but emphasis is placed on articles that advance the understanding of the field through systematic presentations that clarify methodological problems and assist in ordering the known facts in an area. Review articles will be published, particularly those that emphasize a critical analysis of the status of the arts, but original presentations that are broadly based and provide new research will also be published. Intrinsically, SMR is viewed as substantive journal but one that is highly focused on the assessment of the scientific status of sociology. The scope is broad and flexible, and authors are invited to correspond with the editors about the appropriateness of their articles.
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