基于语义实例的查询研究

Nikhil Rasiwasia, N. Vasconcelos
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引用次数: 16

摘要

近年来,基于语义示例的查询(query-by-semantic-example, QBSE)已成为一种流行的基于内容的图像检索方法。QBSE将建立良好的按例查询检索范式扩展到语义领域。虽然许多作者都指出了QBSE的好处,但关于这种范式仍然存在各种悬而未决的问题。其中包括缺乏对整体性能如何取决于系统的各种不同参数的精确理解。在这项工作中,我们提出了QBSE框架的系统实验研究。这可以大致分为三类。首先,我们研究了低层次视觉特征空间对检索性能的影响。其次,我们研究了学习到的语义概念的空间,本文将其称为语义空间,并表明并不是所有的语义概念对于检索都具有相同的信息量。最后,我们通过分析语义概念之间的上下文关系,对语义空间的内在结构进行了研究,并表明这种内在结构对性能的提高至关重要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A study of query by semantic example
In recent years, query-by-semantic-example (QBSE) has become a popular approach to do content based image retrieval. QBSE extends the well established query-by-example retrieval paradigm to the semantic domain. While various authors have pointed out the benefits of QBSE, there are still various open questions with respect to this paradigm. These include a lack of precise understanding of how the overall performance depends on various different parameters of the system. In this work, we present a systematic experimental study of the QBSE framework. This can be broadly divided into three categories. First, we examine the space of low-level visual features for its effects on the retrieval performance. Second, we study the space of learned semantic concepts, herein denoted as the ldquosemantic spacerdquo, and show that not all semantic concepts are equally informative for retrieval. Finally, we present a study of the intrinsic structure of the semantic space, by analyzing the contextual relationships between semantic concepts and show that this intrinsic structure is crucial for the performance improvements.
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