cir系统定性评估的开源框架演示

Paula Gómez Duran, Eva Mohedano, Kevin McGuinness, Xavier Giro-i-Nieto, N. O’Connor
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引用次数: 3

摘要

以定量的方式评估图像检索系统,例如通过计算平均精度等度量,可以与基本事实进行客观比较。然而,在无法获得基本事实的情况下,唯一的替代方法是从用户那里收集反馈。因此,定性评估对于更好地理解系统如何工作变得非常重要。在某些情况下,可视化结果可能是评估所获得结果的唯一方法,也是识别系统失败的唯一机会。这就需要为基于内容的图像检索(CBIR)系统开发一个用户界面(UI),该系统允许通过捕获用户相关反馈来实现结果的可视化和改进。设计良好的UI有助于理解系统的性能,无论是在系统运行良好的情况下,还是在需要改进的情况下,都是如此。我们的开源系统实现了三个组件,以方便研究人员快速开发这些功能为他们的检索引擎。我们提出了一个基于web的用户界面来可视化检索结果和收集用户注释;简化与任何底层CBIR系统连接的服务器;还有一个管理搜索引擎数据的服务器。软件本身在ACM MM开源软件竞赛的单独提交中进行了描述。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Demonstration of an Open Source Framework for Qualitative Evaluation of CBIR Systems
Evaluating image retrieval systems in a quantitative way, for example by computing measures like mean average precision, allows for objective comparisons with a ground-truth. However, in cases where ground-truth is not available, the only alternative is to collect feedback from a user. Thus, qualitative assessments become important to better understand how the system works. Visualizing the results could be, in some scenarios, the only way to evaluate the results obtained and also the only opportunity to identify that a system is failing. This necessitates developing a User Interface (UI) for a Content Based Image Retrieval (CBIR) system that allows visualization of results and improvement via capturing user relevance feedback. A well-designed UI facilitates understanding of the performance of the system, both in cases where it works well and perhaps more importantly those which highlight the need for improvement. Our open-source system implements three components to facilitate researchers to quickly develop these capabilities for their retrieval engine. We present: a web-based user interface to visualize retrieval results and collect user annotations; a server that simplifies connection with any underlying CBIR system; and a server that manages the search engine data. The software itself is described in a separate submission to the ACM MM Open Source Software Competition.
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