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Mixture of Subspaces Image Representation and Compact Coding for Large-Scale Image Retrieval

机译:子空间图像表示和紧凑编码的混合,用于大规模图像检索

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摘要

There are two major approaches to content-based image retrieval using local image descriptors. One is descriptor-by-descriptor matching and the other is based on comparison of global image representation that describes the set of local descriptors of each image. In large-scale problems, the latter is preferred due to its smaller memory requirements; however, it tends to be inferior to the former in terms of retrieval accuracy. To achieve both low memory cost and high accuracy, we investigate an asymmetric approach in which the probability distribution of local descriptors is modeled for each individual database image while the local descriptors of a query are used as is. We adopt a mixture model of probabilistic principal component analysis. The model parameters constitute a global image representation to be stored in database. Then the likelihood function is employed to compute a matching score between each database image and a query. We also propose an algorithm to encode our image representation into more compact codes. Experimental results demonstrate that our method can represent each database image in less than several hundred bytes achieving higher retrieval accuracy than the state-of-the-art method using Fisher vectors.
机译:使用本地图像描述符进行基于内容的图像检索有两种主要方法。一个是逐个描述符匹配,另一个是基于全局图像表示的比较,该比较描述了每个图像的局部描述符集。在大规模问题中,后者是首选,因为它的内存需求较小;但是,在检索准确度方面往往不如前者。为了实现低存储成本和高精度,我们研究了一种非对称方法,其中针对每个单独的数据库图像对本地描述符的概率分布进行建模,同时按原样使用查询的本地描述符。我们采用概率主成分分析的混合模型。模型参数构成要存储在数据库中的全局图像表示。然后,似然函数被用来计算每个数据库图像和查询之间的匹配分数。我们还提出了一种将图像表示编码为更紧凑代码的算法。实验结果表明,与使用Fisher向量的最新方法相比,我们的方法可以用不到数百个字节表示每个数据库图像,从而实现了更高的检索精度。

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