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Binary Image 2D Shape Learning and Recognition Based on Lattice-Computing (LC) Techniques

机译:基于格计算技术的二值图像二维形状学习与识别

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摘要

This work introduces a Type-II fuzzy lattice reasoning (FLRtypeII) scheme for learning/generalizing novel 2D shape representations. A 2D shape is represented as an element—induced from populations of three different shape descriptors—in the product lattice (F 3,⪯), where (F,⪯) denotes the lattice of Type-I intervals’ numbers (INs). Learning is carried out by inducing Type-II INs, i.e. intervals in (F,⪯). Our proposed techniques compare well with alternative classification methods from the literature in three benchmark classification problems. Competitive advantages include an accommodation of granular data as well as a visual representation of a class. We discuss extensions to gray/color images, etc.
机译:这项工作介绍了一种II型模糊格推理(FLRtypeII)方案,用于学习/概括新颖的2D形状表示。在产品晶格(F 3 ,⪯)中,二维形状表示为元素,该元素是由三种不同形状描述符的种群所诱导的,其中(F,⪯)表示类型为I的区间的晶格'数字(IN)。通过引入II型IN来进行学习,即(F,⪯)中的间隔。在三个基准分类问题中,我们提出的技术与文献中的替代分类方法进行了很好的比较。竞争优势包括粒状数据的容纳以及类的视觉表示。我们讨论了灰色/彩色图像等的扩展。

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