首页> 外文OA文献 >A framework for understanding user interaction with content-based image retrieval : model, interface and users
【2h】

A framework for understanding user interaction with content-based image retrieval : model, interface and users

机译:用于理解用户与基于内容的图像检索交互的框架:模型,界面和用户

摘要

User interaction is essential to the communication between users and content-based image retrieval (CBIR) systems. User interaction covers three key elements: an interaction model, an interactive interface and users. The three key elements combine to enable effective interaction to happen. Many studies have investigated different aspects of user interaction. However, there is lack of research in combining all three elements in an integrated manner, especially through well-principled data analysis based on a systematic user study. In this thesis, we investigate the combination of all three elements for interactive CBIR. We first propose uInteract - a framework including a novel four-factor user interaction model (FFUIM) and an interactive interface. The FFUIM aims to improve interaction and search accuracy of the relevance feedback mechanism for CBIR. The interface delivers the FFUIM visually, aiming to support users in grasping how the interaction model functions and how best to manipulate it. The framework is tested in three task-based and user-oriented comparative evaluations, which involves 12 comparative systems, 12 real life scenario tasks and 50 subjects. The quantitative data analysis shows encouraging observations on ease of use and usefulness of the proposed framework, and also reveals a large variance of the results depending on different user types. Accordingly, based on Information Foraging Theory, we further propose a user classification model along three user interaction dimensions: information goals (I), search strategies (S) and evaluation thresholds (E) of users. To our best knowledge, this is the first principled user classification model in CBIR. The model is operated and verified by a systematic qualitative data analysis based on multi linear regression on the real user interaction data from comparative user evaluations. From final quantitative and qualitative data analysis based on the ISE model, we have established what different types of users like about the framework and their preferences for interactive CBIR systems. Our findings offer useful guidelines for interactive search system design, evaluation and analysis.
机译:用户交互对于用户与基于内容的图像检索(CBIR)系统之间的通信至关重要。用户交互包括三个关键元素:交互模型,交互界面和用户。这三个关键要素相结合,可以进行有效的互动。许多研究调查了用户交互的不同方面。但是,缺乏以集成方式组合所有三个元素的研究,尤其是通过基于系统的用户研究的公认的数据分析。在本文中,我们研究了交互式CBIR的所有三个要素的组合。我们首先提出uInteract-一个包含新颖的四因素用户交互模型(FFUIM)和交互界面的框架。 FFUIM旨在提高CBIR相关反馈机制的交互性和搜索准确性。该界面以可视方式提供FFUIM,旨在帮助用户掌握交互模型的功能以及如何对其进行最佳操作。该框架在三个基于任务和面向用户的比较评估中进行了测试,涉及12个比较系统,12个现实场景任务和50个主题。定量数据分析显示了关于所提议框架的易用性和有用性的令人鼓舞的观察结果,并且还揭示了取决于不同用户类型的结果差异很大。因此,基于信息搜寻理论,我们进一步沿着三个用户交互维度提出了一个用户分类模型:用户的信息目标(I),搜索策略(S)和评估阈值(E)。据我们所知,这是CBIR中第一个有原则的用户分类模型。该模型通过基于对来自比较用户评估的真实用户交互数据进行多元线性回归的系统定性数据分析来进行操作和验证。通过基于ISE模型的最终定量和定性数据分析,我们确定了不同类型的用户喜欢哪种框架以及他们对交互式CBIR系统的偏好。我们的发现为交互式搜索系统的设计,评估和分析提供了有用的指导。

著录项

  • 作者

    Liu Haiming;

  • 作者单位
  • 年度 2010
  • 总页数
  • 原文格式 PDF
  • 正文语种 English
  • 中图分类

相似文献

  • 外文文献
  • 中文文献
  • 专利

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号