从少到多:可变姿态和光照下的识别生成模型

A. Georghiades, P. Belhumeur, D. Kriegman
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引用次数: 301

摘要

由于姿态和光照的变化,图像的可变性会严重影响物体的识别。本文提出了基于外观的方法,与以前的基于外观的方法不同,它只需要一小组训练图像来生成丰富的表示,以模拟这种可变性。具体来说,只需三张固定姿态的物体图像,在轻微变化但未知的光线下,就可以重建表面和反照率图。然后用这些来生成姿态和光照变化很大的合成图像,从而建立一个对物体识别有用的表示。我们的方法已经在耶鲁大学人脸数据库B的一个子集上进行了人脸识别领域的测试,该子集包含在不同姿势和光照下看到的10张人脸的4050张图像。这个数据库是专门收集来测试这些生成方法的。结果表明,它们的性能优于现有的流行方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
From few to many: generative models for recognition under variable pose and illumination
Image variability due to changes in pose and illumination can seriously impair object recognition. This paper presents appearance-based methods which, unlike previous appearance-based approaches, require only a small set of training images to generate a rich representation that models this variability. Specifically, from as few as three images of an object in fixed pose seen under slightly varying but unknown lighting, a surface and an albedo map are reconstructed. These are then used to generate synthetic images with large variations in pose and illumination and thus build a representation useful for object recognition. Our methods have been tested within the domain of face recognition on a subset of the Yale Face Database B containing 4050 images of 10 faces seen under variable pose and illumination. This database was specifically gathered for testing these generative methods. Their performance is shown to exceed that of popular existing methods.
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