Visual-Interactive k-NDN Method (VIK): A Novel Approach to Visualize and Interact with Content-Based Image Retrieval Systems Regarding Similarity and Diversity

Rafael L. Dias, S. A. T. Mpinda, Renato Bueno, M. X. Ribeiro
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引用次数: 2

Abstract

Digital imaging plays an important role in many human activities, such as agriculture and forest management, earth sciences, urban planning, weather forecasting, medical imaging and so on. Processing, exploring and visualizing the inconceivable volumes of such images has turned out to be progressively troublesome. The Content-Based Image Retrieval (CBIR) remains an important issue that finds potential applications, given the place that retrieving digital images similar to a user-defined specification or pattern in huge databases now occupies in the day-to-day. CBIR systems use visual information like color, shape and texture to represent images in feature vectors. In general, there is an inconsistency in the evaluation of similarity between images according to human perception and the results computed by CBIR systems, which is called Semantic Gap. One way to improve CBIR systems is by the addition of techniques to visualize and interact with CBIR regarding similarity and diversity criteria, where the user can participate more actively in the process and steer the results according to its needs. In this paper we present the Visual-Interactive k-NDN Method (ViK): a novel approach to visualize and interact with Content-Based Image Retrieval systems. This paper aims at making use of Visual Data Mining techniques applied to queries in CBIR systems, improving the interpretability of the measure of diversity, applied using fractal analysis, as well as the relevance of results according to the prior knowledge of the user. Therefore, the user takes an active role in the content-based image retrieval, guiding its result and, consequently, reducing the Semantic Gap. Additionally, a better understanding of the diversity and similarity factors involved in the query is supported by visualization and interaction techniques.
视觉交互k-NDN方法(VIK):一种基于相似性和多样性的基于内容的图像检索系统可视化和交互的新方法
数字成像在许多人类活动中发挥着重要作用,如农业和森林管理、地球科学、城市规划、天气预报、医学成像等。处理、探索和可视化这些难以想象的图像已经变得越来越麻烦。基于内容的图像检索(CBIR)仍然是寻找潜在应用程序的一个重要问题,因为在日常工作中,检索与用户定义的规范或模式类似的数字图像在大型数据库中占据着重要的位置。CBIR系统使用颜色、形状和纹理等视觉信息在特征向量中表示图像。通常情况下,根据人的感知对图像之间的相似性评价与CBIR系统计算的结果存在不一致,称为语义差距。改进CBIR系统的一种方法是,根据相似性和多样性标准添加可视化技术,并与CBIR进行交互,这样用户可以更积极地参与过程,并根据其需要引导结果。在本文中,我们提出了视觉交互k-NDN方法(ViK):一种与基于内容的图像检索系统进行可视化和交互的新方法。本文旨在将可视化数据挖掘技术应用于CBIR系统中的查询,利用分形分析提高多样性度量的可解释性,以及根据用户的先验知识提高结果的相关性。因此,用户在基于内容的图像检索中发挥了积极的作用,引导其结果,从而减少语义差距。此外,可视化和交互技术支持更好地理解查询中涉及的多样性和相似性因素。
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