基于新型几何特征提取技术的目标识别

Narasimha Reddy Soora, Snehith Reddy Puli, Venkatramulu Sunkari
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引用次数: 1

摘要

在图像处理中,对象是特定图像的可识别部分,它可以被解释为单个单元。人类有能力识别任何类型的物体,无论是字母、数字还是任何生物和非生物,无论它们的形式如何。当涉及到机器时,它通过提取物体的特征来检测物体。特征提取是图像分析领域中最热门的研究领域,是表征目标的首要要求。通过这些特征提取技术,将目标以特征向量的形式表示为一组特征,然后使用特征向量对目标进行识别和分类。在本文中,我们使用三角形面积和周长从训练图像集中提出几何特征。将训练图像的这些特征存储在数据库中,并使用卡方统计作为分类方法对测试图像进行分类
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Object Recognition using Novel Geometrical Feature Extraction Techniques
In Image Processing, an object is an identifiable portion of a particular image that can be interpreted as a single unit. Humans have the ability to recognize any type of objects whether they are alphabets, digits or any living and non-living things irrespective of their forms. When it comes to a machine, it detects an object by extracting its features. Feature Extraction is the most popular research area in the field of image analysis, and it is the primary requirement for representing an object. By these feature extraction techniques, the objects will be represented as a group of features in the form of feature vectors and then they are used for the recognition of objects and for classifying them. In this paper, we have proposed geometrical features from the set of training images using triangular area and perimeter. These features of the training images are stored in the database and used for classifying the test images and Chi-Square statistics is used as classification method
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