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Method and apparatus for training a neural network to learn hierarchical representations of objects and to detect and classify objects with uncertain training data

机译:训练神经网络以学习对象的分层表示以及使用不确定的训练数据对对象进行检测和分类的方法和设备

摘要

A signal processing apparatus and concomitant method for learning and integrating features from multiple resolutions for detecting and/or classifying objects are presented. Neural networks in a pattern tree structure with tree-structured descriptions of objects in terms of simple sub-patterns, are grown and trained to detect and integrate the sub- patterns. A plurality of objective functions and their approximations are presented to train the neural networks to detect sub- patterns of features of some class of objects. Objective functions for training neural networks to detect objects whose positions in the training data are uncertain and for addressing supervised learning where there are potential errors in the training data are also presented.
机译:提出了一种用于从多个分辨率中学习和集成特征以检测和/或分类对象的信号处理设备和伴随方法。模式树结构中的神经网络具有根据简单子模式对对象进行树形结构描述的神经网络,经过训练后可以检测和集成这些子模式。提出了多个目标函数及其近似值,以训练神经网络以检测某类对象的特征子模式。还介绍了用于训练神经网络以检测其数据在训练数据中的位置不确定的对象的目标函数,以及用于解决在训练数据中可能存在错误的监督学习的目标函数。

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