Compression of Large-Scale Image Dataset using Principal Component Analysis and K-means Clustering

R. Rayan, Md. Sabir Hossain, Asaduzzaman
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引用次数: 2

Abstract

Digital images, being on the verge of its utmost popularity encompasses plenty of applications and as such are generated at an unprecedented rate. These digital form of data are often found with redundant information. Applications that require a bulk amount of images to be processed, turn out to be high regarding computational complexity. Needless to say, it leads to inefficient storage utilization. In this paper, a hybrid approach is applied to compress a large-scale image data-set by combining two popular algorithms: Principal Component Analysis (PCA) and K-means. This paper works with a view to diminishing the redundant information by implementing dimensionality reduction followed by color quantization. The PCA is used to project the data onto a lower dimensional space with retaining as maximum variance as possible. The K-means algorithm is used to restrict the distinct number of colors to represent an image by means of clustering the data together. The results obtained from the proposed method is compared with the results obtained from implementing PCA and K-means clustering algorithms independently, where the proposed method provides with a better compression ratio.
基于主成分分析和k均值聚类的大规模图像数据集压缩
数字图像正处于其最受欢迎的边缘,它包含了大量的应用程序,因此以前所未有的速度生成。这些数字形式的数据通常带有冗余信息。需要处理大量图像的应用程序在计算复杂度方面是很高的。不用说,它会导致存储利用率低下。本文通过结合主成分分析(PCA)和K-means两种流行算法,采用混合方法对大规模图像数据集进行压缩。本文的目的是通过降维和颜色量化来减少冗余信息。PCA用于将数据投影到较低维空间,并保留尽可能大的方差。K-means算法通过将数据聚类在一起来限制不同颜色的数量来表示图像。将本文方法得到的结果与独立实现PCA和K-means聚类算法得到的结果进行了比较,发现本文方法具有更好的压缩比。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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