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Classification model for flat nonconvex images using diagonal segments and tuples for system of automatic recognition of three-dimensional objects

机译:基于对角线段和元组的平面非凸图像分类模型,用于三维物体自动识别系统

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摘要

During the past five years, many researchers have developed different approaches to the classification of images, which are used for a variety of scientific tasks [1, 2, 3 and 4]. The research is aimed at solving task of classification of three-dimensional objects by the images of their projections in systems of automatic recognition of randomly located parts and products in the industrial belt. This article describes the classification model of flat nonconvex images by their form. Author offers twelve classes. The criteria for classification in this model is combination of diagonal segments in the four quadrants of the bounding rectangle of image projection of the object. Illustrations of each class, classification scheme as well as the research results of developed model on images of projections of real three-dimensional objects are provided.
机译:在过去的五年中,许多研究人员开发了不同的图像分类方法,这些方法可用于各种科学任务[1、2、3和4]。该研究旨在通过在工业带中随机定位的零件和产品的自动识别系统中,通过三维物体的投影图像来解决三维物体的分类任务。本文通过形式描述平面非凸图像的分类模型。作者提供十二节课。此模型中的分类标准是对象图像投影的边界矩形的四个象限中的对角线段的组合。提供了每个类别的图示,分类方案以及对真实三维物体的投影图像开发的模型的研究结果。

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