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A Robust PCA Algorithm for Building Representations from Panoramic Images

机译:一种强大的PCA算法,用于从全景图像构建表示

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Appearance-based modeling of objects and scenes using PCA has been successfully applied in many recognition tasks. Robust methods which have made the recognition stage less susceptible to outliers, occlusions, and varying illumination have further enlarged the domain of applicability. However, much less research has been done in achieving robustness in the learning stage. In this paper, we propose a novel robust PCA method for obtaining a consistent subspace representation in the presence of outlying pixels in the training images. The method is based on the EM algorithm for estimation of principal subspaces in the presence of missing data. By treating the outlying points as missing pixels, we arrive at a robust PCA representation. We demonstrate experimentally that the proposed method is efficient. In addition, we apply the method to a set of panoramic images to build a representation that enables surveillance and view-based mobile robot localization.
机译:使用PCA的对象和场景的外观建模已成功应用于许多识别任务。使识别阶段的鲁棒方法易于对异常值,闭塞和不同的照射感应进一步扩大了适用性领域。然而,在实现学习阶段的稳健性方面取得了更少的研究。在本文中,我们提出了一种新颖的鲁棒PCA方法,用于在训练图像中存在偏远的像素存在中获得一致的子空间表示。该方法基于在存在缺失数据的情况下估计主子空间的EM算法。通过将外围点视为缺失像素,我们达到了强大的PCA表示。我们通过实验证明所提出的方法是有效的。此外,我们将该方法应用于一组全景图像以构建一个表示启用监视和基于视图的移动机器人本地化的表示。

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