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Boosting VLAD with Weighted Fusion of Local Descriptors

机译:通过局部描述符的加权融合来提高VLAD

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Vector of locally aggregated descriptors (VLAD) is a popular image encoding method for image retrieval. This paper proposes a novel framework to boost VLAD with weighted fusion of local descriptors for discriminative image representation. Due to the fact that most VLAD-based methods generally only use detected SIFT descriptor and contain limited content information, in which the representation ability is deteriorated. In order to obtain a preferable image representation, our approach fuses Dense SIFT and detected SIFT descriptor in the aggregation of local descriptors. Besides, we assign each detected SIFT a weight that measured by saliency analysis to make the salient descriptor with a relatively high importance. In this way, the proposed method can include sufficient image content information and highlight the important image regions. Experiments on image retrieval tasks demonstrate that our approach outperforms previous VLAD-based methods.
机译:局部聚集描述符向量(VLAD)是一种用于图像检索的流行图像编码方法。本文提出了一种新颖的框架,通过对局部描述符的加权融合来增强VLAD,以实现判别性图像表示。由于大多数基于VLAD的方法通常只使用检测到的SIFT描述符,并且包含有限的内容信息,因而表示能力下降。为了获得更好的图像表示,我们的方法将Dense SIFT和检测到的SIFT描述符融合在局部描述符的聚合中。此外,我们为每个检测到的SIFT分配了通过显着性分析测量的权重,以使显着性描述符具有相对较高的重要性。这样,所提出的方法可以包括足够的图像内容信息并突出显示重要的图像区域。图像检索任务的实验表明,我们的方法优于以前的基于VLAD的方法。

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