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Improved content-based classification and retrieval of images using support vector machine

机译:使用支持向量机改进基于内容的分类和图像检索

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摘要

Content-based image retrieval (CBIR) entails probing for similar images for a query image in an image database and returning the most relevant images. The proposed methodology aims at improving the classification and retrieval accuracy of images. Wavelet histograms are used to design a simple and efficient CBIR system with good performance and without using any intensive image-processing feature extraction technique. The unique indexed colour histogram and wavelet decomposition-based horizontal, vertical and diagonal image attributes serve as the main features for the retrieval system. Support vector machine is used for classification and thereby to improve retrieval accuracy of the system. The performance of the proposed content-based image classification and retrieval system is evaluated with the standard SIMPLIcity dataset. Precision is used as a metric to measure the performance of the system. The system is validated with holdout and k-fold cross-validation techniques. The proposed system performs better than SIMPLIcity and. all the other compared methods.
机译:基于内容的图像检索(CBIR)需要对图像数据库中的查询图像进行相似图像探测,并返回最相关的图像。所提出的方法旨在提高图像的分类和检索精度。小波直方图用于设计一种简单高效的CBIR系统,具有良好的性能,并且无需使用任何密集的图像处理特征提取技术。独特的索引颜色直方图和基于小波分解的水平,垂直和对角图像属性是检索系统的主要功能。支持向量机用于分类,从而提高系统的检索精度。建议的基于内容的图像分类和检索系统的性能通过标准SIMPLIcity数据集进行评估。精度用作衡量系统性能的指标。该系统已使用保留和k倍交叉验证技术进行了验证。所提出的系统性能优于SIMPLIcity和。所有其他比较的方法。

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