基于判别图像特征的图像聚类

N. Ahmed, A. Jalil
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引用次数: 2

摘要

基于流形学习的图像聚类模型通常用于局部处理从非线性流形中采样的图像。通常使用的是通过线性插值方法调整原始图像大小而获得的灰度图像特征。然而,灰度图像特征丢失了重要的图像方差信息。基于判别分析的聚类模型在主成分分析(PCA)空间中更有效,而超前投影向量包含显著的图像方差信息。为了获得最佳的聚类性能,我们使用二维双向PCA技术提取重要的图像特征。我们报告了光谱嵌入聚类(SEC)模型在6个基准图像数据库上使用判别图像特征的聚类性能。将聚类性能与现有最先进的聚类方法进行比较。使用所提出的判别图像特征对灰度图像特征进行了显著的总体性能改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Image Clustering Using Discriminant Image Features
Manifold learning based image clustering models are usually employed at local level to deal with images sampled from nonlinear manifold. Usually, gray level image features are used that are obtained by resizing original images through linear interpolation approach. However, significant image variance information is lost in gray level image features. Clustering models that are based on discriminant analysis can be made more effective in principal component analysis (PCA) space whereas leading projection vectors contain significant image variance information. For optimal clustering performance, we used two-dimensional two-directional PCA technique to extract significant image features. We report clustering performance of Spectral Embedded Clustering (SEC) model using discriminant image features on 6 benchmark image databases. Clustering performance is compared with existing state-of-art clustering approaches. Significant overall performance improvement is observed using proposed discriminant image features over gray level image features.
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