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Hierarchical feature concatenation-based kernel sparse representations for image categorization

机译:基于分层特征级联的内核稀疏表示,用于图像分类

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摘要

In order to obtain improved performance in complicated visual categorization tasks, considerable research has adopted multiple kernel learning based on dozens of different features. However, it is a complex process that needs to extract a multitude of features and seeks the optimal combination of multiple kernels. Inspired by the key idea of hierarchical learning, in this paper, we propose to find sparse representation based on feature concatenation using hierarchical kernel orthogonal matching pursuit (HKOMP). In addition to commonly used spatial pyramid feature for kernel representation, our method only employs one type of generic image feature, i.e., p.d.f gradient-based orientation histogram for concatenation of sparse codes. Next, the resulting concatenated features kernelized with widely used Gaussian radial basis kernel function form compact sparse representations in the second layer for linear support vector machine. HKOMP algorithm combines the advantages of building image representations layer-by-layer and kernel learning. Several publicly available image datasets are used to evaluate the presented approach and empirical results for various datasets show that the proposed scheme outperforms many kernel learning based and other competitive image categorization algorithms.
机译:为了在复杂的视觉分类任务中获得更高的性能,大量的研究已基于多种不同功能采用了多核学习。但是,这是一个复杂的过程,需要提取多个特征并寻求多个内核的最佳组合。受到分层学习的关键思想的启发,本文提出使用分层核正交匹配追踪(HKOMP)基于特征级联来寻找稀疏表示。除了用于内核表示的常用空间金字塔特征外,我们的方法仅采用一种类型的通用图像特征,即基于p.d.f梯度的方向直方图来连接稀疏代码。接下来,使用广泛使用的高斯径向基核函数核化的结果级联特征在线性支持向量机的第二层中形成紧凑的稀疏表示。 HKOMP算法结合了逐层构建图像表示和内核学习的优势。几个公开可用的图像数据集用于评估所提出的方法,各种数据集的经验结果表明,该方案优于许多基于核学习和其他竞争性图像分类算法。

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