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首页> 外文期刊>Cybernetics, IEEE Transactions on >Image Classification With Densely Sampled Image Windows and Generalized Adaptive Multiple Kernel Learning
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Image Classification With Densely Sampled Image Windows and Generalized Adaptive Multiple Kernel Learning

机译:带有密集采样图像窗口的图像分类和广义自适应多核学习

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摘要

We present a framework for image classification that extends beyond the window sampling of fixed spatial pyramids and is supported by a new learning algorithm. Based on the observation that fixed spatial pyramids sample a rather limited subset of the possible image windows, we propose a method that accounts for a comprehensive set of windows densely sampled over location, size, and aspect ratio. A concise high-level image feature is derived to effectively deal with this large set of windows, and this higher level of abstraction offers both efficient handling of the dense samples and reduced sensitivity to misalignment. In addition to dense window sampling, we introduce generalized adaptive ℓ-norm multiple kernel learning (GA-MKL) to learn a robust classifier based on multiple base kernels constructed from the new image features and multiple sets of prelearned classifiers from other classes. With GA-MKL, multiple levels of image features are effectively fused, and information is shared among different classifiers. Extensive evaluation on benchmark datasets for object recognition (Caltech256 and Caltech101) and scene recognition (15Scenes) demonstrate that the proposed method outperforms the state-of-the-art under a broad range of settings.
机译:我们提出了一种图像分类框架,该框架超出了固定空间金字塔的窗口采样范围,并且得到了新的学习算法的支持。基于固定的空间金字塔对可能的图像窗口的相当有限的子集进行采样的观察,我们提出了一种方法,该方法考虑了在位置,大小和纵横比上密集采样的一整套窗口。派生了简洁的高级图像功能,可以有效地处理大量的窗口,而这种更高级别的抽象既可以有效处理密集样本,又可以降低对未对准的敏感性。除了密集窗口采样外,我们还引入了广义自适应ℓ范数多核学习(GA-MKL),以基于基于新图像特征构造的多个基本核以及来自其他类别的多套预学习分类器来学习鲁棒分类器。使用GA-MKL,可以有效融合多级图像特征,并在不同的分类器之间共享信息。对用于对象识别(Caltech256和Caltech101)和场景识别(15Scenes)的基准数据集的广泛评估表明,在广泛的设置范围内,该方法的性能优于最新技术。

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