A Model-based Approach for Rigid Object Recognition

Chee Boon Chong, T. Tan, F. Lim
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Abstract

Most object recognition systems require large databases of real images for classifier training. To collect real images for this purpose is a difficult and expensive process. This paper introduces a unified framework based on the creation and use of synthetic images for training various classifiers to achieve recognition of real-world objects. A 3D model of the object (i.e. trolley in this case) is constructed from a minimum of two photographs. The constructed 3D model is used to automatically generate the relevant synthetic images that are subsequently used to train the Adaboost and support vector machine-based recognition systems. Experimental results obtained are very encouraging suggesting that synthetically generated images generated by our approach can augment the real training samples used in current recognition systems
一种基于模型的刚性物体识别方法
大多数目标识别系统需要大量的真实图像数据库来训练分类器。为此目的收集真实图像是一个困难且昂贵的过程。本文介绍了一个基于合成图像创建和使用的统一框架,用于训练各种分类器以实现对现实世界物体的识别。物体(即手推车)的3D模型由至少两张照片构建而成。构建的3D模型用于自动生成相关的合成图像,随后用于训练Adaboost和基于支持向量机的识别系统。实验结果非常令人鼓舞,表明我们的方法生成的合成图像可以增强当前识别系统中使用的真实训练样本
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