使用亚马逊度量来构建基于人们所做的而不是他们所说的图像数据库。

T. Wyeld, R. Colomb
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引用次数: 4

摘要

当前的图像数据库元数据模式要求用户采用特定的基于文本的词汇表。基于文本的元数据适合搜索,但不适合浏览。另一方面,现有的基于图像的搜索工具是高度专业化的,因此也会遇到类似的问题。weexelblat的语义维度空间可视化模式在某种程度上解决了这个问题,使用户在一个界面中更容易进行搜索和浏览。但是如何以及用什么初始元数据进入数据库的问题仍然存在。不同的人在一张图片中看到不同的东西,也会以同样不同的方式来组织收藏。然而,我们可以发现不同用户组之间的一些相似性,而不管他们的推理是什么。例如,在Amazon.com上的搜索也会根据用户浏览数据库的平均方式返回其他产品。在本文中,我们报告了将这一概念应用于我们使用传统方法和Amazon.com方法可视化的一组图像。我们报告的结果,这一比较调查的案例研究设置涉及一组随机选择的参与者。最后,我们建议将传统方法和平均方法结合起来,可以增强当前数据库的可视化、搜索和浏览功能
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using the Amazon Metric to Construct an Image Database based on what people do, not what they say.
Current image database metadata schemas require users to adopt a specific text-based vocabulary. Text-based metadata is good for searching but not for browsing. Existing image-based search facilities, on the other hand, are highly specialised and so suffer similar problems. Wexelblat's semantic dimensional spatial visualisation schemas go some way towards addressing this problem by making both searching and browsing more accessible to the user in a single interface. But the question of how and what initial metadata to enter a database remains. Different people see different things in an image and will organise a collection in equally diverse ways. However, we can find some similarity across groups of users regardless of their reasoning. For example, a search on Amazon.com returns other products also, based on an averaging of how users navigate the database. In this paper, we report on applying this concept to a set of images for which we have visualised them using traditional methods and the Amazon.com method. We report on the findings of this comparative investigation in a case study setting involving a group of randomly selected participants. We conclude with the recommendation that in combination, the traditional and averaging methods would provide an enhancement to current database visualisation, searching, and browsing facilities
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