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Evaluating the Influence of Image Modifications upon Content-Based Multimedia Retrieval

机译:评估图像修改对基于内容的多媒体检索的影响

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In this paper, evaluation of properties of MUVIS software package is presented. Images are modified in several ways (e.g. blurred, noise added, etc.) and added into the existing MUVIS databases. Simulations show that a satisfactory retrieval performance can be obtained from small set of extracted features (in comparison with large default set), even when significantly different number of images in databases are observed. YUV feature (color), GLCM (texture) and CANN (shape) feature are extracted from images. Applied image modifications have greatest impact on extracted YUV feature (color), which differs most in comparison with original image, while the lowest impact is observed on GLCM feature (Gray Level Co-occurrence Matrix), which shows that texture was not significantly changed during image modifications. CANN feature (shape and edges extraction feature) is only slightly different from original image. These results are similar for databases with various numbers of elements.
机译:本文介绍了介绍了MUVIS软件包的属性的评估。图像以几种方式修改(例如,模糊,噪声等)并添加到现有的MUVIS数据库中。仿真表明,即使在观察到数据库中的图像中的显着不同数量的图像,也可以从一小部分提取的特征(与大默认设置相比相比)获得满意的检索性能。 YUV特征(颜色),GLCM(纹理)和罐头(形状)功能是从图像中提取的。应用的图像修改对提取的YUV特征(颜色)具有最大的影响,其与原始图像相比大多数相差,而在GLCM特征(灰度共存矩阵)上观察到最低影响,这表明在此期间纹理不会显着改变图像修改。机会功能(形状和边缘提取功能)与原始图像略有不同。这些结果类似于具有各种元素数量的数据库。

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