Image Optimization using Improved Gray-Scale Quantization for Content-Based Image Retrieval

Mahmoud Artemi, Haiming Liu
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引用次数: 4

Abstract

Image quantization is an important process in content-based image retrieval (CBIR) systems. In this study, color-image quantization is used to reduce the number of color bins prior to establishing feature extraction step. We modified and applied Improved Grey-Scale (IGS) procedure to obtain optimized feature representations, by mapping a broad dimension of input pixel distributions of an image to a qualified number of outputs (coded pixel values). Thus, to investigate the impact of IGS method using different parameters on system classifications. In order to determine the number of color intensities that are most appropriate for system performance, a set of image-classification tasks were performed using support vector machine classifier on the Coral-1000 dataset. Accordingly, to evaluate the system accuracy, several metrics are considered in terms of precision, recall, and F1 score of each image category in the dataset. Moreover, we present a comparison of three-color optimization methods that generate compact color dimensions while aiming to preserve or enhance image retrieval performance. The results indicate that our IGS-based CBIR system performs better even when color depths are reduced to three bits in each color component.
基于内容的图像检索中改进灰度量化的图像优化
图像量化是基于内容的图像检索(CBIR)系统中的一个重要环节。在本研究中,在建立特征提取步骤之前,使用彩色图像量化来减少颜色桶的数量。我们修改并应用了改进的灰度(IGS)过程,通过将图像的广泛维度的输入像素分布映射到合格数量的输出(编码像素值)来获得优化的特征表示。因此,研究使用不同参数的IGS方法对系统分类的影响。为了确定最适合系统性能的颜色强度数量,在Coral-1000数据集上使用支持向量机分类器执行了一组图像分类任务。因此,为了评估系统的准确性,我们考虑了数据集中每个图像类别的精度、召回率和F1分数。此外,我们提出了三色优化方法的比较,生成紧凑的颜色尺寸,同时旨在保持或提高图像检索性能。结果表明,即使将每个颜色分量的颜色深度减小到3位,基于igs的CBIR系统也具有更好的性能。
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