基于语义空间的模糊c均值聚类和支持向量机的图像表示与检索

P. Bhattacharya, Md. Mahmudur Rahman, B. Desai
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引用次数: 17

摘要

本文提出了一种基于学习的基于内容的图像检索框架,以弥合语义组织集合上图像所呈现的低级图像特征和高级语义信息之间的差距。研究了基于监督(概率多类支持向量机)和基于无监督(模糊c均值聚类)学习的技术,将基于MPEG-7的全局颜色和边缘特征与其高级语义和/或视觉类别相关联。它基于从学习算法中获得的置信度或隶属度分数,在信息抽象的连续语义层次上表示图像。在这些新的图像表示上使用基于融合的相似性匹配函数对与查询图像相比最相似的图像进行排序和检索。实验结果表明,与基于MPEG-7描述符的常用欧氏距离度量方法相比,该方法在具有手动分配语义类别的通用图像数据库和具有不同模态和检查身体部位的医学图像数据库上的有效性
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Image Representation and Retrieval Using Support Vector Machine and Fuzzy C-means Clustering Based Semantical Spaces
This paper presents a learning based framework for content-based image retrieval to bridge the gap between low-level image features and high-level semantic information presented in the images on semantically organized collections. Both supervised (probabilistic multi-class support vector machine) and unsupervised (fuzzy c-means clustering) learning based techniques are investigated to associate global MPEG-7 based color and edge features with their high-level semantical and/or visual categories. It represents images in a successive semantic level of information abstraction based on confidence or membership scores obtained from the learning algorithms. A fusion-based similarity matching function is employed on these new image representations to rank and retrieve most similar images compared to a query image. Experimental results on a generic image database with manually assigned semantic categories and on a medical image database with different modalities and examined body parts demonstrate the effectiveness of the proposed approach compared to the commonly used Euclidean distance measure on MPEG-7 based descriptors
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