中国组织工程研究 ›› 2010, Vol. 14 ›› Issue (35): 6601-6603.doi: 10.3969/j.issn.1673-8225.2010.35.035

• 骨与关节学术探讨 academic discussion of the bone and joint • 上一篇    下一篇

图像数据挖掘的模型和技术

于新兴,李明岐,段  竹   

  1. 大连交通大学软件学院,辽宁省大连市   116052
  • 出版日期:2010-08-27 发布日期:2010-08-27
  • 作者简介:于新兴,男,1957年生,工程师,主任。 yu_xinxing@126.com

Models and techniques of image data mining

Yu Xin-xing, Li Ming-qi, Duan Zhu   

  1. Software Institute of Dalian Jiaotong University, Dalian  116052, Liaoning Province, China
  • Online:2010-08-27 Published:2010-08-27
  • About author:Yu Xin-xing, Engineer, Software Institute of Dalian Jiaotong University, Dalian 116052, Liaoning Province, China yu_xinxing@126.com

摘要:

目的:介绍图像数据挖掘的模型及核心技术。
方法:原始图像不能直接用于图像数据挖掘,必须进行预处理以生成用于高层次挖掘的图像特征库。一个图像挖掘系统应该包括图像的存储、预处理、检索、挖掘和展示等功能。它主要涉及图像数据挖掘模型和图像数据挖掘技术。
结果:MultiMediaMiner是以DBMiner系统和C-BIRD系统为基础发展起来的图像数据挖掘系统,它是典型的功能驱动模型。在信息驱动模型中,象素层和对象层主要进行图像处理、对象识别和特征提取,而语义概念层和模式知识层主要进行图像数据挖掘和知识集成,该模型不仅只在图像的高层次进行挖掘,而且还可以扩展此模型以使挖掘能够在每个层次以及不同层次间进行。基于图像的数据挖掘核心技术涉及:图像处理技术,如去噪、对比度增强、图像分割等技术;特征提取和优化技术;分类、规则提取、预测和聚类等。
结论:理论上图像数据挖掘是数据挖掘的一个分支,但是由于挖掘对象的复杂性,所以图像数据挖掘不是传统的数据挖掘理论与技术在图像数据上的简单应用和延伸,而是一个具有自己独特研究内容、理论与技术框架的新的研究领域。

关键词: 图像数据挖掘, 驱动模型, 图像处理技术, 关联规则挖掘, 分类, 聚类, 数字化医学

Abstract:

OBJECTIVE: To introduce models and core techniques of image data mining.
METHODS: Original images cannot be directly used for image data mining, which must be pretreated to generate image feature libraries for high layer mining. An image mining system should include functions of image storage, preprocessing, retrieval, mining, display, etc. It is mainly related to image data mining models and image data mining techniques.
RESULTS: MultiMediaMiner is an image data mining system developed based on DBMiner system and C-BIRD system, which is a typical feature-driven model. In information-driven model, pixel layers and object layers mainly process images, recognize objects, extract features. Semantic concept layers and mode knowledge layers mainly execute image data mining and knowledge integration. Information-driven model not only can execute mining in high layer of image, but also can be extended to allow mining at every layer and different layers. The core techniques of data mining based on images are related to: image processing techniques, such as removing noise, contrast enhancement, image segmentation, etc.; feature extraction and optimization techniques; classification, rule extraction, forecasting, clustering, etc.
CONCLUSION: Image data mining is a branch of data mining in theory, but because of the complexity of mining objects, image data mining is not a simple application and extension of traditional data mining theories and techniques in image data. Image data mining is a new field of research which has its own distinctive research contents, theories and technical frameworks.

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