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Subspace Projection Methods for Large Scale Image Data Analysis

机译:用于大规模图像数据分析的子空间投影方法

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Images have become the most popular type of multimedia in the Big Data era. Widely used applications like CBIR underscore the importance of image understanding, especially in terms of semantically meaningful information. Typically, high dimensional image descriptors are embedded to a subspace using a simple linear projection. However, semantic information has a complex distribution in feature space that requires a non-linear projection. We first estimate an intrinsic dimensionality of image data. Next we build a measure of visual information in embedded subspace. We compare several linear and non-linear projection methods. We use multiple image databases towards a comprehensive evaluation in terms of information content, consequent recognition rates, and computational cost. This paper is relevant for researchers interested in dimensionality reduction for large scale image understanding that preserves semantically relevant information.
机译:图像已成为大数据时代中最受欢迎的多媒体类型。广泛使用的应用程序如CBIR强调了图像理解的重要性,尤其是在语义上有意义的信息方面。通常,使用简单的线性投影嵌入到子空间的高维图像描述符。然而,语义信息在需要非线性投影的特征空间中具有复杂分布。我们首先估计图像数据的内在维度。接下来,我们在嵌入子空间中建立了视觉信息的衡量标准。我们比较几种线性和非线性投影方法。我们在信息内容,随后的识别率和计算成本方面使用多个图像数据库朝着综合评估。本文与对大规模图像理解的维度降低的研究人员有关,这些研究人员可以保留语义相关信息。

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