学习二维物体在不同视角和光照下的低维不变特征

S. Li, Jie Yan, Xinwen Hou, ZeYu Li, HongJiang Zhang
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引用次数: 14

摘要

本文提出了一种三维物体在不同视角和光照条件下的不变特征表示方法,以及一种从多视角特征样本中学习特征的方法。特征是一种非线性特征,由于其以下性质,为三维目标检测和姿态估计提供了良好的基础。(1)其在特征空间中的位置是视图的简单函数,对光照不敏感或不变化。(2)随着视图的变化而不断变化,使得所有可能视图下的物体外观在特征空间中构成一个已知的简单曲线段(流形)。(3)根据视图的预定义函数,以已知的方式关联特征空间中仪式对象的外观坐标。前两个属性为目标检测提供了基础,第三个属性为视图(姿态)估计提供了基础。为了从输入中计算签名表示,我们提出了一种非线性回归方法来学习从输入(例如图像)空间到特征空间的非线性映射。以人脸为对象的实验结果说明了签名表示的思想和学习方法。结果表明,在10维非线性特征空间中可以有效地、紧凑地对人脸对象进行建模。10-D特征对任何视图的照明变化都表现出极好的不敏感性。通过预定义的参数函数可以很好地确定签名坐标的相关性。最后给出了该方法在人脸检测和姿态估计中的应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning low dimensional invariant signature of 3-D object under varying view and illumination from 2-D appearances
In this paper, we propose an invariant signature representation for appearances of 3-D object under varying view and illumination, and a method for learning the signature from multi-view appearance examples. The signature, a nonlinear feature, provides a good basis for 3-D object detection and pose estimation due to its following properties. (I) Its location in the signature feature space is a simple function of the view and is insensitive or invariant to illumination. (2) It changes continuously as the view changes, so that the object appearances at all possible views should constitute a known simple curve segment (manifold) in the feature space. (3) The coordinates of rite object appearances in the feature space are correlated in a known way according to a predefined function of the view. The first two properties provide a basis for object detection and the third for view (pose) estimation. To compute the signature representation from input, we present a nonlinear regression method for learning a nonlinear mapping from the input (e.g. image) space to the feature space. The ideas of the signature representation and the learning method are illustrated with experimental results for the object of human face. It is shown that the face object can be effectively, modeled compactly in a 10-D nonlinear feature space. The 10-D signature presents excellent insensitivity to changes in illumination for any view. The correlation of the signature coordinates is well determined by the predefined parametric function. Applications of the proposed method in face detection and pose estimation are demonstrated.
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