基于内容的图像检索中的颜色和纹理特征提取

Rahmaniansyah Dwi Putri, H. W. Prabawa, Y. Wihardi
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引用次数: 8

摘要

基于内容的图像检索(CBIR)的研究一直受到许多研究者的关注。进行CBIR研究,需要考虑图像数据集的确定、提取方法和图像测量方法。在本研究中,使用的数据集是牛津花17数据集。所采用的特征提取是HSV颜色的特征提取、灰度共生矩阵(GLCM)纹理提取特征以及两者的结合。本研究是基于所提出的方法有意地从CBIR测试中获得精度。首先,采用阈值分割法对数字图像进行分割。然后将图像转换成矢量,进行特征提取处理。进一步,用欧几里得距离度量图像的相似度。对系统进行了分割图像和未分割图像的测试。分割图像的系统测试结果表明,HSV特征提取的平均精度为83.35%,GLCM特征提取的平均精度为83.4%,组合特征提取的平均精度为80.94%。同时,对未分割图像进行系统测试,HSV特征提取的平均精度为82.64%,GLCM特征提取的平均精度为87.32%,组合特征提取的平均精度为85.73%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Color and texture features extraction on content-based image retrieval
The study on Content Based Image Retrieval (CBIR) has been a concern for many researchers. To conduct CBIR study, some essential things should be considered that are determining the image dataset, extraction method, and image measurement method. In this study, the dataset used is the Oxford Flower 17 dataset. The feature extraction employed is the feature extraction of the HSV color, the Gray Level Cooccurrence Matrix (GLCM) texture extraction feature, and the combination of both features. This study is purposely generates precision from CBIR test based on the proposed method. At first, digital image is segmented by applying thresholding. Moreover, the image is converted into vector to be subsequently processed using feature extraction. Further, the similarity level of the image is measured by Euclidean Distance. Tests on the system are based on segmented and unsegmented image. The system test with segmented image yields mean average precision of 83.35% for HSV feature extraction, 83.4% for GLCM feature extraction, and 80.94% for combined feature extraction. Meanwhile, the system test for unsegmented image generates mean average precision of 82.64% for HSV feature extraction, 87.32% for GLCM feature extraction, and 85.73% for extraction of combined features.
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