使用少量示例视图甚至单个视图识别在新的照明和观看位置下的新三维物体

E. Sali, S. Ullman
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引用次数: 22

摘要

提出了一种基于类的识别方法,该方法使用了在几种不同观看条件下拍摄的少量示例视图。主要的重点是使用少量的例子。先前的工作假设示例集足以跨越可能对象的整个空间,并且在将其推广到新的观看条件时,识别系统将可以使用新条件下足够数量的先前示例。在这里,我们大大放宽了这些假设,从而从少量示例(甚至是单个示例视图)中获得了良好的基于类的泛化,用于观察位置和光照变化。此外,以前基于类的方法只关注观看位置的变化,而没有处理光照的变化。在这里,我们使用了一种基于类的方法,可以概括照明和观看位置的变化。将该方法应用于人脸和汽车模型图像。从少量实例中合成了观察位置和光照变化下的新视图。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Recognizing novel 3-D objects under new illumination and viewing position using a small number of example views or even a single view
A method is presented for class-based recognition using a small number of example views taken under several different viewing conditions. The main emphasis is on using a small number of examples. Previous work assumed that the set of examples is sufficient to span the entire space of possible objects, and that in generalizing to a new viewing conditions a sufficient number of previous examples under the new conditions will be available to the recognition system. Here we have considerably relaxed these assumptions and consequently obtained good class-based generalization from a small number of examples, even a single example view, for both viewing position and illumination changes. In addition, previous class-based approaches only focused on viewing position changes and did not deal with illumination changes. Here we used a class-based approach that can generalize for both illumination and viewing position changes. The method was applied to face and car model images. New views under viewing position and illumination changes were synthesized from a small number of examples.
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