基于混合特征的对象挖掘和标记

Hemali Patel, Milin M Patel, Rashmin B. Prajapati
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引用次数: 0

摘要

图片标签对于图片搜索引擎/数据库来说是很重要的,比如Flicker, Picasa, Facebook等等。图像标注是一项困难且高度相关的机器学习任务。基于“最近邻分类”的图像标记算法在实现方面已经获得了相当大的关注,但代价是在训练和测试期间增加了计算复杂性。在现有的方法中使用基于单对象的标记。在这篇研究论文中,我们将讨论与对象挖掘和标记相关的不同研究。就形状而言,颜色和纹理特征是无法描述物体的。该系统首先使用KNN标记不同的目标特征进行训练。利用颜色矩、形状和灰度共现矩阵(GLCM)作为纹理特征。之后系统将使用adaboost分类器对物体进行分类,最终图像由不同的物体标签表示。
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Hybrid Feature Based Object Mining And Tagging
Image Tagging are important as far as image search engines/databases are concerned viz. Flicker, Picasa, Facebook…etc. Image Tagging is a difficult and highly relevant machine learning task. Image tagging with algorithms based on ‘Nearest neighbor classification’ have achieved considerable attention on the implementation point of view but at the cost of increasing computational complexity both during training and testing. In the existing approaches used single object based tagging. In this research paper we are going to discuss different research related to object mining and tagging. As far as there are shape, color and texture feature are impotent to describe object. The proposed system firstly use KNN for tagging different object features for training. Using color moment, shape and gray level co-occurrence matrix (GLCM) as a texture feature. After that system will use adaboost classifier for classification of objects and final image represented by different object tags.
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