Occluded object recognition: an approach which combines neurocomputing and conventional algorithms

Chung-Mong Lee, D. W. Patterson
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Abstract

A system which combines the power of neural network learning and computing with conventional vision processing methods has been developed. At the heart of the system is a neural network composed of neocognitron and self-created layer components. During the recognition phase, the network computations are augmented by conventional vision algorithms which perform some low- and intermediate-level processing functions. The system is first trained under supervision to recognize several types of nonoccluded objects. It is then used to identify each of the objects appearing in an image even though the objects appear at different locations and are partially occluded or even somewhat deformed. A high degree of accuracy has been achieved with the system.<>
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遮挡物识别:一种结合神经计算和传统算法的方法
本文提出了一种将神经网络学习和计算能力与传统视觉处理方法相结合的系统。该系统的核心是一个由neocognitron和自创建层组件组成的神经网络。在识别阶段,网络计算被传统的视觉算法增强,执行一些低级和中级的处理功能。该系统首先在监督下进行训练,以识别几种类型的非遮挡物体。然后,它被用来识别出现在图像中的每个物体,即使这些物体出现在不同的位置,部分遮挡甚至有些变形。该系统达到了很高的精度。
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