Martinez Aleix M, Zhu Manli
Department of Electrical and Computer Engineering, 205 Dreese Lab, 2015 Neil Ave., The Ohio State University, Columbus, OH 43210, USA.
IEEE Trans Pattern Anal Mach Intell. 2005 Dec;27(12):1934-44. doi: 10.1109/TPAMI.2005.250.
A fundamental problem in computer vision and pattern recognition is to determine where and, most importantly, why a given technique is applicable. This is not only necessary because it helps us decide which techniques to apply at each given time. Knowing why current algorithms cannot be applied facilitates the design of new algorithms robust to such problems. In this paper, we report on a theoretical study that demonstrates where and why generalized eigen-based linear equations do not work. In particular, we show that when the smallest angle between the ith eigenvector given by the metric to be maximized and the first i eigenvectors given by the metric to be minimized is close to zero, our results are not guaranteed to be correct. Several properties of such models are also presented. For illustration, we concentrate on the classical applications of classification and feature extraction. We also show how we can use our findings to design more robust algorithms. We conclude with a discussion on the broader impacts of our results.
计算机视觉和模式识别中的一个基本问题是确定给定技术在何处适用,以及最重要的是为何适用。这不仅是必要的,因为它有助于我们决定在每个给定时间应用哪些技术。了解当前算法为何无法应用有助于设计对这类问题具有鲁棒性的新算法。在本文中,我们报告了一项理论研究,该研究证明了基于广义特征值的线性方程在何处以及为何不起作用。特别是,我们表明,当要最大化的度量给出的第(i)个特征向量与要最小化的度量给出的前(i)个特征向量之间的最小夹角接近零时,我们的结果不能保证是正确的。还介绍了此类模型的几个属性。为了说明,我们专注于分类和特征提取的经典应用。我们还展示了如何利用我们的发现来设计更鲁棒的算法。最后,我们讨论了我们的结果的更广泛影响。