Gevers Theo, Stokman Harro
Intelligent Sensory Information Systems, Department of Computer Science, Faculty of Science, University of Amsterdam, Kruislaan 403, 1098 SJ Amsterdam, The Netherlands.
IEEE Trans Pattern Anal Mach Intell. 2004 Jan;26(1):113-8. doi: 10.1109/tpami.2004.1261083.
An effective object recognition scheme is to represent and match images on the basis of histograms derived from photometric color invariants. A drawback, however, is that certain color invariant values become very unstable in the presence of sensor noise. To suppress the effect of noise for unstable color invariant values, in this paper, histograms are computed by variable kernel density estimators. To apply variable kernel density estimation in a principled way, models are proposed for the propagation of sensor noise through color invariant variables. As a result, the associated uncertainty is obtained for each color invariant value. The associated uncertainty is used to derive the parameterization of the variable kernel for the purpose of robust histogram construction. It is empirically verified that the proposed density estimator compares favorably to traditional histogram schemes for the purpose of object recognition.
一种有效的目标识别方案是基于从光度颜色不变量导出的直方图来表示和匹配图像。然而,一个缺点是,在存在传感器噪声的情况下,某些颜色不变量值会变得非常不稳定。为了抑制噪声对不稳定颜色不变量值的影响,本文采用可变核密度估计器来计算直方图。为了以一种有原则的方式应用可变核密度估计,提出了传感器噪声通过颜色不变量变量传播的模型。结果,为每个颜色不变量值获得了相关的不确定性。相关的不确定性用于导出可变核的参数化,以构建鲁棒的直方图。经验验证表明,所提出的密度估计器在目标识别方面优于传统的直方图方案。