Vectors of locally aggregated centers for compact video representation

Alhabib Abbas, N. Deligiannis, Y. Andreopoulos
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引用次数: 9

Abstract

We propose a novel vector aggregation technique for compact video representation, with application in accurate similarity detection within large video datasets. The current state-of-the-art in visual search is formed by the vector of locally aggregated descriptors (VLAD) of Jegou et al. VLAD generates compact video representations based on scale-invariant feature transform (SIFT) vectors (extracted per frame) and local feature centers computed over a training set. With the aim to increase robustness to visual distortions, we propose a new approach that operates at a coarser level in the feature representation. We create vectors of locally aggregated centers (VLAC) by first clustering SIFT features to obtain local feature centers (LFCs) and then encoding the latter with respect to given centers of local feature centers (CLFCs), extracted from a training set. The sum-of-differences between the LFCs and the CLFCs are aggregated to generate an extremely-compact video description used for accurate video segment similarity detection. Experimentation using a video dataset, comprising more than 1000 minutes of content from the Open Video Project, shows that VLAC obtains substantial gains in terms of mean Average Precision (mAP) against VLAD and the hyper-pooling method of Douze et al., under the same compaction factor and the same set of distortions.
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用于紧凑视频表示的局部聚合中心向量
我们提出了一种新的矢量聚合技术用于紧凑视频表示,并应用于大型视频数据集的精确相似性检测。当前最先进的视觉搜索是由Jegou等人的局部聚合描述符向量(VLAD)形成的。VLAD基于尺度不变特征变换(SIFT)向量(每帧提取)和在训练集上计算的局部特征中心生成紧凑的视频表示。为了提高对视觉扭曲的鲁棒性,我们提出了一种新的方法,在特征表示中在更粗的层次上操作。我们首先对SIFT特征进行聚类,获得局部特征中心(lfc),然后根据从训练集中提取的局部特征中心(clfc)的给定中心对后者进行编码,从而创建局部聚集中心(vlic)向量。lfc和clfc之间的差异和被聚合以生成用于精确视频片段相似性检测的极其紧凑的视频描述。使用包含来自开放视频项目的1000多分钟内容的视频数据集进行的实验表明,在相同的压缩因子和相同的失真集下,VLAD在相对于VLAD和Douze等人的超池化方法的平均平均精度(mAP)方面获得了可观的收益。
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