Unsupervised feature approach for content based image retrieval using principal component analysis

Muhammad Hammad Memon, R. Shaikh, Jian-ping Li, Asif Khan, I. Memon, S. Deep
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引用次数: 20

Abstract

In recent years, there are available extremely large collections of images located on distributed and heterogeneous platforms over the online web service. The proliferation of digital cameras and the growing photo sharing using current technology for browsing such collections, but at the same time it spurred the emergence of new image retrieval techniques based not only on photos' visual information, but on geo-location tags. Currently image retrieval systems; the retrieval process is performed using similarity strategies applied on certain features in the image. In this paper, we proposed a process of image refining retrieval result by exploiting and fusing unsupervised feature technique Principal component analysis (PCA) and spectral clustering. PCA algorithm is used for to remove the outliers from the initially retrieved image set, and then it uses Principal Component Analysis (PCA) to extract principal components of the feature values. Later on, feature values of each image are exhibited by a linear combination of these principal components. Spectral clustering analyzes retrieval process by clustering together visually similar images. PCA and spectral clustering require manual turning of their parameters, which usually requires a priori knowledge of the dataset. To overcome this problem we developed a tuning mechanism that automatically tunes the parameters of both algorithms. For the evaluation of the proposed approach we used thousands of images from Flickr downloaded using text queries for well-known cultural heritage monuments. The proposed method was performed and tested on a set of images from variant sceneries. Experimental results show the superior performance of this approach.
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使用主成分分析的基于内容的图像检索的无监督特征方法
近年来,在线web服务上的分布式和异构平台上有大量可用的图像集合。数码相机的普及和越来越多的照片分享使用当前的技术来浏览这些收藏,但与此同时,它刺激了新的图像检索技术的出现,这些技术不仅基于照片的视觉信息,而且基于地理位置标签。目前的图像检索系统;检索过程是使用对图像中的某些特征应用相似策略来执行的。本文提出了一种利用和融合无监督特征技术、主成分分析(PCA)和光谱聚类技术对图像检索结果进行细化的方法。首先利用主成分分析(PCA)算法从初始检索的图像集中去除异常值,然后利用主成分分析(PCA)提取特征值的主成分。然后,每个图像的特征值由这些主成分的线性组合来表示。光谱聚类通过聚类视觉上相似的图像来分析检索过程。主成分分析和光谱聚类需要手动转换它们的参数,这通常需要对数据集有先验的了解。为了克服这个问题,我们开发了一种调优机制,可以自动调整两种算法的参数。为了评估所提出的方法,我们使用了从Flickr下载的数千张图片,这些图片使用了著名文化遗产纪念碑的文本查询。在一组不同场景的图像上对该方法进行了验证。实验结果表明了该方法的优越性。
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