视频不确定语义表示的多信息融合

Bo Lu, Guoren Wang, Xiao-Yu Gong
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引用次数: 1

摘要

基于概念的语义视频检索(CBSVR)通常使用视频的语义表示来处理用户的检索请求。显然,语义视频检索的准确性取决于概念检测器的检测结果,但检测结果往往不精确和不确定。本文提出了一种多信息融合方法(MIF),该方法致力于解决视频语义表示不确定的问题,以提高检索精度。该方法基于一种新的两阶段框架,包括推理阶段和融合阶段。在推理阶段,通过探索概念之间的上下文相关性和镜头之间的时间相关性来选择与用户查询最相关的概念。在融合阶段,通过最小化势函数将相关概念的推断概率与检测结果融合在一起,以细化探测器预测。在广泛使用的TRECVID数据集上的实验表明,我们的方法可以有效地提高语义概念检测的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-information fusion for uncertain semantic representations of videos
Concept-Based Semantic Video Retrieval(CBSVR) usually uses semantic representations of videos to handle user's retrieval requests. It is obvious that the accuracy of semantic video retrieval depends on results of concept detectors, but the detection results are usually imprecise and uncertain . In this paper, we propose a multi-information fusion approach (MIF) which is dedicated to solving the problem of uncertain semantic representations of videos for improving retrieval accuracy. This approach is based on a novel two-phase framework that involves the inferring phase and the fusing phase. In the inferring phase, the most relevant concepts to the user's query are chosen by exploring both contextual correlation among concepts and temporal correlation among shots. In the fusing phase, the inferred probabilities of the related concepts are fused together with the detection results via minimization of potential function to refine the detector prediction. Experiments on the widely used TRECVID datasets demonstrate that our approach can effectively improve the accuracy of semantic concept detection.
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