Shape recognition by distributed recursive learning of multiscale trees

L. Lombardi, A. Petrosino
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Abstract

We present an efficient and fully parallel 2D object recognition method based on the use of a multiscale tree representation of the object boundary and recursive learning of trees. Specifically, the object is represented by means of a tree where each node, corresponding to a boundary segment at some level of resolution, is characterized by a real vector containing curvature, length, and symmetry of the boundary segment, while the nodes are connected by arcs when segments at successive levels are spatially related. The recognition procedure is formulated as a training procedure made by recursive neural networks followed by a testing procedure over unknown tree structured patterns.
基于多尺度树分布递归学习的形状识别
我们提出了一种基于物体边界的多尺度树表示和树的递归学习的高效且完全并行的二维物体识别方法。具体来说,对象通过树表示,其中每个节点对应于某个分辨率级别的边界段,其特征是包含边界段的曲率、长度和对称性的实向量,而当连续级别的段在空间上相关时,节点通过弧连接。识别过程是由递归神经网络进行的训练过程,然后是未知树结构模式的测试过程。
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