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Fast Eigenspace Decomposition of Images of Objects With Variation in Illumination and Pose

机译:照明和姿态变化的物体图像的快速特征空间分解

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摘要

Many appearance-based classification problems such as principal component analysis, linear discriminant analysis, and locally preserving projections involve computing the principal components (eigenspace) of a large set of images. Although the online expense associated with appearance-based techniques is small, the offline computational burden becomes prohibitive for practical applications. This paper presents a method to reduce the expense of computing the eigenspace decomposition of a set of images when variations in both illumination and pose are present. In particular, it is shown that the set of images of an object under a wide range of illumination conditions and a fixed pose can be significantly reduced by projecting these data onto a few low-frequency spherical harmonics, producing a set of “harmonic images.” It is then shown that the dimensionality of the set of harmonic images at different poses can be further reduced by utilizing the fast Fourier transform. An eigenspace decomposition is then applied in the spectral domain at a much lower dimension, thereby significantly reducing the computational expense. An analysis is also provided, showing that the principal eigenimages computed assuming a single illumination source are capable of recovering a significant amount of information from images of objects when multiple illumination sources exist.
机译:许多基于外观的分类问题,例如主成分分析,线性判别分析和局部保留投影,都涉及到计算大量图像的主成分(本征空间)。尽管与基于外观的技术相关联的在线开销很小,但是离线计算负担对于实际应用却变得难以承受。本文提出了一种方法,当光照和姿态都存在变化时,可以减少计算一组图像的本征空间分解的费用。特别地,示出了通过将这些数据投影到一些低频球形谐波上,从而产生一组“谐波图像”,可以显着减少在宽范围的照明条件和固定姿势下的物体的图像集。 ”然后表明,通过利用快速傅立叶变换,可以进一步减小在不同姿势下的一组谐波图像的尺寸。然后将特征空间分解以更低的维度应用于频谱域,从而显着减少计算开销。还提供了一种分析,该分析表明在存在多个照明源的情况下,假设单个照明源计算出的主要特征图像能够从物体图像中恢复大量信息。

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