基于区域分割和相关反馈相结合的基于内容的图像检索

Dewen Zhuang, Shoujue Wang
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引用次数: 22

摘要

在基于内容的图像检索研究中,基于区域的视觉签名备受关注。为了获得基于区域的签名,关键步骤是图像分割,而可靠的图像分割也是获得图像形状描述的关键。不幸的是,事实证明,准确的图像分割仍然是一个悬而未决的问题。因此,在实际的图像检索系统中,减少对精确图像分割的依赖是解决这一问题的一些策略。由于语义差距的存在,仅利用低层次视觉特征的图像检索系统还存在许多不足。在图像检索系统中,基于用户参与的相关反馈是需要的。通过用户的反馈,基于机器学习理论得到相应的高级语义。高维仿生信息几何理论以“物认知”代替“物分割”,在许多研究领域取得了良好的成果。基于该理论,通过将图像分割为主区域和边缘区域,“认知”图像的整体特征,利用提取的颜色和纹理特征构建了原型图像检索系统。结合检索结果和相关反馈技术,利用线性判别分析对图像特征进行降维。它减少了图像签名的语义缺口和存储,提高了检索效率和性能。在COREL数据库的一个子集上的实验结果表明了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Content-Based Image Retrieval Based on Integrating Region Segmentation and Relevance Feedback
In the research of content-based image retrieval, visual signature based on region was attracted more attention. To get the signature based on region, the crucial step is image segmentation, and reliable image segmentation is also critical to get the image shape description. Unfortunately, it has been demonstrated that accurate image segmentation is still an open problem. So some strategies for dealing with this problem is to reduce dependence on accurate image segmentation for a practical image retrieval system. Due to the semantic gap, there are still many shortcomings for image retrieval system only with the low level visual features. It is desirable for the relevance feedback based on the user participation in image retrieval system. Through the user's feedback, the corresponding high-level semantic will be obtained based on machine learning theory. Based on ``things cognition'' instead of ``things partition'', the high dimension biomimetic information geometry theory have made good results in many research fields. Based on this theory, to ``cognition'' the whole image characteristic through image segmented into main region and margin region, a prototype image retrieval system was made using the extracted features of color and texture. Combined the retrieval results with relevance feedback technology, image feature dimensional reduction was made using the linear discriminant analysis. It reduces semantic gap and the storage of image signatures, as well as improves the retrieval efficiency and performance. Experimental results on a subset of the COREL database showed the effectiveness of our proposed method.
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