Acquisition of view-based 3D object models using supervised, unstructured data

Kevin Coogan, I. Green
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Abstract

Existing techniques for view-based 3D object recognition using computer vision rely on training the system on a particular object before it is introduced into an environment. This training often consists of taking over 100 images at predetermined points around the viewing sphere in an attempt to account for most angles for viewing the object. However, in many circumstances, the environment is well known and we only expect to see a small subset of all possible appearances. In this paper, we test the idea that under these conditions, it is possible to train an object recognition system on-the-fly using images of an object as it appears in its environment, with supervision from the user. Furthermore, because some views of an object are much more likely than others, the number of training images required can be greatly reduced.
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使用监督的非结构化数据获取基于视图的3D对象模型
现有的基于视图的3D物体识别技术使用计算机视觉依赖于在将特定物体引入环境之前对系统进行训练。这种训练通常包括在观看球体周围的预定点拍摄100多张图像,试图考虑到观看物体的大多数角度。然而,在许多情况下,环境是众所周知的,我们只期望看到所有可能出现的一小部分。在本文中,我们测试了这样一个想法,即在这些条件下,有可能在用户的监督下,使用物体在其环境中出现的图像来训练物体识别系统。此外,由于物体的某些视图比其他视图更有可能出现,因此所需的训练图像数量可以大大减少。
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