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Image classification using mixed-order structural representation based on mid-level feature

机译:基于中层特征的混合阶结构表示图像分类

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Many successful methods for image classification transform low-level descriptors into mid-level features, and obtain a compact and discriminative representation. However, these approaches rarely think about the spatial context information between mid-level features. In this paper, we present a new mixed-order structural (MOS) representation which may generalize the widely used method spatial pyramid representation (SPR) with correlation modeling method. We first partition the image following SP and extract the mid-level feature for each spatial region. Then our MOS consists of 0th and 1st - order correlation model based on mid-level features. The 0th- order correlation can answer what the mid-level feature represents, and the 1-th order corresponds to spatial contextual information in ambient neighbors. In addition, we apply principal component analysis to reduce the dimension of mid-level features which makes our MOS can be a relatively low dimensionality. Our experiments demonstrate that the proposed MOS representation achieves a better performance compared with spatial pyramid matching (SPM) and other state-of-the-art algorithms.
机译:许多成功的图像分类方法将低级描述符转换为中级特征,并获得紧凑而有区别的表示。但是,这些方法很少考虑中级要素之间的空间上下文信息。在本文中,我们提出了一种新的混合阶结构(MOS)表示,可以用相关建模方法推广广泛使用的方法空间金字塔表示(SPR)。我们首先按照SP对图像进行分区,然后为每个空间区域提取中层特征。然后,我们的MOS由基于中间特征的0 th 和1 st -阶相关模型组成。第0 -级相关性可以回答中层特征表示的内容,而第1 级对应于周围环境中的空间上下文信息。另外,我们应用主成分分析来减小中级特征的尺寸,这使我们的MOS可以具有相对较低的尺寸。我们的实验表明,与空间金字塔匹配(SPM)和其他最新算法相比,所提出的MOS表示具有更好的性能。

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