An experiment of surface recognition by neural trees

S. Iverson, O. Johnson, G. G. Pieroni
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引用次数: 2

Abstract

The recognition process of objects represented by range data is based on the description of their surfaces. The most popular method for doing that consists in decomposing the surface into regions holding the same differential properties. After successfully performing that task, a high level vision procedure for relating the various morphological segments has to be constructed. The decomposition of the surface is generally performed by calculating the functions K and H in any point and labeling the surface pixels according to the values of those functions. This paper describes the main lines of a surface recognition system based on computing structures called neural trees. Encodings of local samples of surfaces are used as input to a neural tree generator which is subsequently used to forecast global contours from local samples. Various noise levels are used in the training exercise. Experiments in varying the training order, the tree structure and the surface sampling method are performed in order to determine the resilience of such structures as global recognizers. Tree fan-out is studied in some detail. Binary and multi-class tree organizations are studied as well as a hybrid tree structure which combines sub-nets which perform n-way classification followed by binary sub-nets which deal with classified and misclassified patterns.
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基于神经树的表面识别实验
用距离数据表示的物体的识别过程是基于物体表面的描述。最常用的方法是将曲面分解成具有相同微分性质的区域。在成功完成该任务后,必须构建一个将各种形态片段联系起来的高级视觉程序。表面的分解一般是通过计算任意点上的函数K和H,并根据这些函数的值标记表面像素来完成的。本文描述了一种基于神经树计算结构的表面识别系统的主线。局部表面样本的编码被用作神经树生成器的输入,神经树生成器随后用于从局部样本预测全局轮廓。在训练中使用了不同的噪音水平。为了确定全局识别器结构的弹性,进行了不同训练顺序、树形结构和表面采样方法的实验。对树扇形进行了详细的研究。研究了二叉树和多类树组织,以及一种混合树结构,该结构将执行n向分类的子网络与处理分类和错分类模式的二叉子网络相结合。
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