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Neural networks for appearance-based 3-D object recognition

机译:神经网络用于基于外观的3D对象识别

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摘要

This paper presents a neural network based system for 3-D object recognition and localization. A new appearance-based approach is developed for recognition and pose estimation of 3-D objects from a single 2-D perspective view. Three-layer perceptions are widely used in the whole image analysis process. A feature vector derived by a nonlinear principal component network is used to model object appearance. A neural classifier which receives the feature vector is then configured for recognition purpose. Object pose parameters are obtained by neural estimators trained on the same feature vector. Performance is tested on a data set consisting of more than 70000 images of 14 objects. Comparative study with statistical approach is carried out.
机译:本文提出了一种基于神经网络的3D对象识别和定位系统。开发了一种基于外观的新方法,用于从单个2D透视图识别和3D对象的姿态估计。三层感知在整个图像分析过程中被广泛使用。由非线性主成分网络导出的特征向量用于对对象外观进行建模。然后将用于接收特征向量的神经分类器配置为用于识别目的。对象姿势参数是由在相同特征向量上训练的神经估计器获得的。对包含14个对象的70000多个图像的数据集进行了性能测试。用统计方法进行比较研究。

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