基于梯度的特征空间方法处理闭塞和非高斯噪声

H. Wildenauer, T. Melzer, H. Bischof
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引用次数: 2

摘要

在最近的文献中,基于梯度(滤波)的特征空间已被用作实现光照不敏感的手段。在本文中,我们证明了滤波后的特征空间对于非高斯噪声和遮挡也是固有的鲁棒性。我们认为,这种鲁棒性本质上源于表示的稀疏性和平均值的不敏感性。这也证明了实验中使用的例子从对象识别和姿态估计领域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A gradient-based eigenspace approach to dealing with occlusions and non-Gaussian noise
In the recent literature, gradient-based (filtered) eigenspaces have been used as a means to achieve illumination insensitivity. In this paper we show that filtered eigenspaces are also inherently robust w.r.t. (non-Gaussian) noise and occlusions. We argue that this robustness stems essentially from the sparseness of representation and insensitivity w.r.t. shifts in the mean value. This is also demonstrated experimentally using examples from the field of object recognition and pose estimation.
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