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Let the Kernel Figure it Out; Principled Learning of Pre-processing for Kernel Classifiers

机译:让核心弄清楚;内核分类器预处理的原则学习

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Most modern computer vision systems for high-level tasks, such as image classification, object recognition and segmentation, are based on learning algorithms that are able to separate discriminative information from noise. In practice, however, the typical system consists of a long pipeline of pre-processing steps, such as extraction of different kinds of features, various kinds of normalizations, feature selection, and quantization into aggregated representations such as histograms. Along this pipeline, there are many parameters to set and choices to make, and their effect on the overall system performance is a-priori unclear. In this work, we shorten the pipeline in a principled way. We move pre-processing steps into the learning system by means of kernel parameters, letting the learning algorithm decide upon suitable parameter values. Learning to optimize the pre-processing choices becomes learning the kernel parameters. We realize this paradigm by extending the recent Multiple Kernel Learning formulation from the finite case of having a fixed number of kernels which can be combined to the general infinite case where each possible parameter setting induces an associated kernel. We evaluate the new paradigm extensively on image classification and object classification tasks. We show that it is possible to learn optimal discriminative codebooks and optimal spatial pyramid schemes, consistently outperforming all previous state-of-the-art approaches.
机译:用于高级任务的大多数现代计算机视觉系统,例如图像分类,对象识别和分段,基于能够将识别信息与噪声分离的学习算法。然而,在实践中,典型系统由预处理步骤的长管道组成,例如提取不同种类的特征,各种训练,特征选择和量化,例如直方图等聚合表示。沿着这个管道,有许多参数来设置和选择,并且它们对整体系统性能的影响是a-priori。在这项工作中,我们以原则的方式缩短管道。我们通过内核参数将预处理步骤移动到学习系统中,让学习算法决定合适的参数值。学习优化预处理选择变为学习内核参数。我们通过从具有固定数量的内核的有限情况扩展最近的多个内核学习制定来实现该范例,该内核可以组合到一般的无限情况,其中每个可能的参数设置引导相关的内核。我们在图像分类和对象分类任务中广泛评估新的范式。我们表明,可以学习最佳的识别码本和最佳空间金字塔方案,始终如一地优于所有先前的最先进的方法。

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