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Complementary Kernel Density Estimation

机译:互补核密度估计

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摘要

Generative models for vision and pattern recognition have been overshadowed in recent years by powerful non-parametric discriminative models. These discriminative models can learn arbitrary decision boundaries between classes and have proved very effective in classification and detection problems. However, unlike generative models, they do not lend themselves naturally to more general vision tasks such as rendering novel images, de-noising, and in-painting. In this paper we introduce Complementary Kernel Density Estimation (CKDE), a new generative model that adopts many of the features of non-parametric discriminative models: (1) CKDE allows complex decision surfaces and arbitrary class conditional distributions to be learned, (2) it is easy to train because the log likelihood of the model is concave, so it has no local maxima, and (3) one can train its class conditional distributions jointly to share information among the different classes. We first demonstrate that CKDE is more accurate in benchmark classification tasks than a purely discriminative method such as the SVM. We then show that the posterior probability of class labels is more accurately estimated than kernelized logistic regression. Our other results demonstrate that partial images can be accurately classified by marginalizing unobserved pixels from the class conditional distributions, and missing parts of the image can be painted in using the learned generative model.
机译:近年来,强大的非参数判别模型已使视觉和模式识别的生成模型黯然失色。这些判别模型可以学习类之间的任意决策边界,并已证明在分类和检测问题上非常有效。但是,与生成模型不同,它们不会自然地适应更一般的视觉任务,例如渲染新颖图像,去噪和绘画。在本文中,我们介绍了一种互补的内核密度估计(CKDE),它是一种新的生成模型,它采用了非参数判别模型的许多功能:(1)CKDE允许学习复杂的决策面和任意的类条件分布,(2)该模型易于训练,因为该模型的对数似然是凹的,因此它没有局部最大值,而且(3)可以共同训练其类的条件分布,以便在不同的类之间共享信息。我们首先证明CKDE在基准分类任务中比诸如SVM的纯判别方法更准确。然后,我们表明类别标签的后验概率比带核逻辑回归更准确地估计。我们的其他结果表明,通过将类条件分布中的未观察像素边缘化,可以对部分图像进行准确分类,并且可以使用学习的生成模型来绘制图像的缺失部分。

著录项

  • 来源
    《Pattern recognition letters》 |2012年第10期|1381-1387|共7页
  • 作者单位

    Department of Computer Science and Engineering, University of Washington, Seattle, USA;

    Department of Computer Science and Engineering, University of Washington, Seattle, USA;

    Department of Computer Science and Engineering, University of Washington, Seattle, USA,AC 101, 185 Stevens Way, UW, Seattle, WA 98195-2350, USA;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Generative models; Neural networks; Regression; Density estimation; Denoising; Occlusions;

    机译:生成模型;神经网络;回归;密度估算;去噪;遮挡;

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