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Retrieving video shots in semantic brain imaging space using manifold-ranking

机译:使用流形排序检索语义脑成像空间中的视频镜头

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In recent two decades, a large amount of effort has been devoted to content-based video retrieval (CBVR), which aims to manage large-scale video databases in an effective way based on visual features such as color, shape, texture, and motion. However, the performance of CBVR systems is still far from satisfaction due to the well-known semantic gap. In order to alleviate the problem, this paper proposes a novel retrieval methodology using semantic features derived from brain imaging space (BIS) that reflects brain responses and interactions under natural stimulus of video watching. A mapping from visual features to semantic features in BIS is built through Gaussian process regression. A manifold structure is then inferred where video key frames are represented by mapped feature vectors in BIS. Finally, the manifold-ranking algorithm concerning the relationship among all data is applied to measure the similarity between key frames. Preliminary experimental results on the TRECVID 2005 dataset demonstrate the superiority of the proposed work in comparison with traditional methods.
机译:在最近的二十年中,基于内容的视频检索(CBVR)投入了大量精力,基于内容的视频检索(CBVR)旨在有效地基于颜色,形状,纹理和运动等视觉特征来管理大型视频数据库。 。但是,由于众所周知的语义鸿沟,CBVR系统的性能仍远远不能令人满意。为了缓解该问题,本文提出了一种新颖的检索方法,该方法利用了从大脑成像空间(BIS)导出的语义特征,该语义特征反映了在视频观看的自然刺激下大脑的反应和交互作用。通过高斯过程回归建立BIS中视觉特征到语义特征的映射。然后推断出歧管结构,其中视频关键帧由BIS中的映射特征向量表示。最后,应用关于所有数据之间关系的流形排序算法来度量关键帧之间的相似性。 TRECVID 2005数据集上的初步实验结果表明,与传统方法相比,本文工作具有优越性。

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