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Nonparametric learning for layered segmentation of natural images

机译:用于自然图像分层分割的非参数学习

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摘要

We explore recently proposed Bayesian nonparametric models of image partitions, based on spatially dependent Pitman-Yor processes. These models are attractive because they adapt to images of varying complexity, successfully modeling uncertainty in the structure and scale of human segmentations of natural scenes. By developing substantially improved inference and learning algorithms, we achieve performance comparable to state-of-the-art methods. For learning, we show how the Gaussian process (GP) covariance functions underlying these models can be calibrated to accurately match the statistics of example human segmentations. For inference, we develop a stochastic search-based algorithm which is substantially less susceptible to local optima than conventional variational methods. Our approach utilizes the expectation propagation algorithm to approximately marginalize latent GPs, and a low rank covariance representation to improve computational efficiency. Experiments with two benchmark datasets show that our learning and inference innovations substantially improve segmentation accuracy. By hypothesizing multiple partitions for each image, we also take steps towards capturing the variability of human scene interpretations.
机译:我们基于空间相关的Pitman-Yor过程,探索了最近提出的图像分割的贝叶斯非参数模型。这些模型之所以具有吸引力,是因为它们适用于各种复杂度的图像,可以成功地对自然场景中人类分割的结构和规模的不确定性进行建模。通过开发大大改进的推理和学习算法,我们获得了与最新方法相当的性能。为了学习,我们展示了如何对这些模型基础的高斯过程(GP)协方差函数进行校准,以准确匹配示例人类细分的统计数据。为了进行推断,我们开发了一种基于随机搜索的算法,该算法比传统的变分方法更不容易受到局部最优的影响。我们的方法利用期望传播算法将潜在的GP近似边缘化,并利用低秩协方差表示来提高计算效率。使用两个基准数据集进行的实验表明,我们的学习和推理创新极大地提高了细分准确性。通过为每个图像假设多个分区,我们还采取了一些步骤来捕获人类场景解释的可变性。

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