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Semantic Annotation Model for objects Classification

机译:对象分类的语义注释模型

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The dynamic and regular growth in multimedia domain has prompted researchers to go on studies, that how to manage and classify images properly. Numerous techniques in that direction have been proposed. Some of them classify images based on their low-level feature or Meta data. However, these techniques are short of classifying objects into main-class and sub-class of the images. Usually, the image main-class is made up of a lot of objects, which are referred to a sub-class. The aim of this paper is to introduce Semantic Annotation Model (SAM) for object Classification. It classifies objects into main-class and subclass based on Semantic Intensity and polygon points. Semantic Intensity determines the object's contribution inside the image while the polygon points represent the coordinate values of the object. The bigger the size of the main-class object implies higher Semantic Intensity value of the object in the image. Experiment was conducted using LabelMe image datasets. The choice was because objects are annotated, and polygon values are provided. The result shows that SAM successfully classified the objects with their Main-class and sub-classes. The output data are store in the new created SAM-XML file for future usage.
机译:多媒体域的动态和常规增长促使研究人员继续研究,如何正确管理和分类图像。已经提出了这种方向的许多技术。其中一些基于其低级功能或元数据对图像进行分类。但是,这些技术缺乏将对象分类为图像的主类和子类。通常,图像主类由大量对象组成,该对象被称为子类。本文的目的是为对象分类介绍语义注释模型(SAM)。它将对象分类为基于语义强度和多边形点的主类和子类。语义强度在多边形点代表对象的坐标值时确定对象在图像内的贡献。主类对象的大小均暗示图像中对象的更高语义强度值。使用LabelME图像数据集进行实验。选择是因为对象是注释的,并且提供多边形值。结果表明,SAM成功将对象分类为主类和子类。输出数据在新创建的SAM-XML文件中存储,以备将来使用情况。

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