Enhancing Multimedia Semantic Concept Mining and Retrieval by Incorporating Negative Correlations

Tao Meng, Yang Liu, M. Shyu, Yilin Yan, C. Shu
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引用次数: 13

Abstract

In recent years, we have witnessed a deluge of multimedia data such as texts, images, and videos. However, the research of managing and retrieving these data efficiently is still in the development stage. The conventional tag-based searching approaches suffer from noisy or incomplete tag issues. As a result, the content-based multimedia data management framework has become increasingly popular. In this research direction, multimedia high-level semantic concept mining and retrieval is one of the fastest developing research topics requesting joint efforts from researchers in both data mining and multimedia domains. To solve this problem, one great challenge is to bridge the semantic gap which is the gap between high-level concepts and low-level features. Recently, positive inter-concept correlations have been utilized to capture the context of a concept to bridge the gap. However, negative correlations have rarely been studied because of the difficulty to mine and utilize them. In this paper, a concept mining and retrieval framework utilizing negative inter-concept correlations is proposed. Several research problems such as negative correlation selection, weight estimation, and score integration are addressed. Experimental results on TRECVID 2010 benchmark data set demonstrate that the proposed framework gives promising performance.
利用负相关增强多媒体语义概念挖掘与检索
近年来,我们目睹了大量的多媒体数据,如文本、图像和视频。然而,如何有效地管理和检索这些数据还处于发展阶段。传统的基于标签的搜索方法存在噪声或标签不完整的问题。因此,基于内容的多媒体数据管理框架越来越受欢迎。多媒体高级语义概念挖掘与检索是当前发展最快的研究方向之一,需要数据挖掘和多媒体领域的研究人员共同努力。为了解决这个问题,一个巨大的挑战是弥合语义差距,即高级概念和低级特征之间的差距。最近,积极的概念间相关性被用来捕捉概念的背景,以弥合差距。然而,由于难以挖掘和利用负相关关系,对负相关关系的研究很少。本文提出了一种利用概念间负相关的概念挖掘和检索框架。讨论了负相关选择、权值估计和分数整合等研究问题。在TRECVID 2010基准数据集上的实验结果表明,该框架具有良好的性能。
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