歧义有助于:众包注释中存在分歧的分类

V. Sharmanska, D. Hernández-Lobato, José Miguel Hernández-Lobato, Novi Quadrianto
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引用次数: 34

摘要

想象一下,我们向一个人展示一张图片,并让他/她判断图片中的场景是温暖的还是不温暖的,以及在图片中是否容易发现一只松鼠。对于完全相同的图像,这些问题的答案可能因人而异。这是因为任务本身就具有模糊性。这样一个模棱两可,因此具有挑战性的任务正在推动计算机视觉的边界,以显示从视觉数据中可以学习什么和不能学习什么。众包在收集注释方面是无价的。这对于一个超越明确的二分法的任务尤其如此,因为每个图像需要多个人工判断才能达成共识。本文在概念和技术上做出了贡献。在概念方面,我们将注释者之间的分歧定义为关于数据实例的特权信息。在技术方面,我们提出了一个框架,将注释歧义合并到分类器中。所提出的框架简单、相对快速,并且优于不考虑分歧的分类器,特别是在高置信度注释上进行测试时。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Ambiguity Helps: Classification with Disagreements in Crowdsourced Annotations
Imagine we show an image to a person and ask her/him to decide whether the scene in the image is warm or not warm, and whether it is easy or not to spot a squirrel in the image. For exactly the same image, the answers to those questions are likely to differ from person to person. This is because the task is inherently ambiguous. Such an ambiguous, therefore challenging, task is pushing the boundary of computer vision in showing what can and can not be learned from visual data. Crowdsourcing has been invaluable for collecting annotations. This is particularly so for a task that goes beyond a clear-cut dichotomy as multiple human judgments per image are needed to reach a consensus. This paper makes conceptual and technical contributions. On the conceptual side, we define disagreements among annotators as privileged information about the data instance. On the technical side, we propose a framework to incorporate annotation disagreements into the classifiers. The proposed framework is simple, relatively fast, and outperforms classifiers that do not take into account the disagreements, especially if tested on high confidence annotations.
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