Recently it has become essential to search for and retrieve high-resolution and efficient images easily due to swift development of digital images, many present annotation algorithms facing a big challenge which is the variance for represent the image where high level represent image semantic and low level illustrate the features, this issue is known as semantic gab. This work has been used MPEG-7 standard to extract the features from the images, where the color feature was extracted by using Scalable Color Descriptor (SCD) and Color Layout Descriptor (CLD), whereas the texture feature was extracted by employing Edge Histogram Descriptor (EHD), the CLD produced high dimensionality feature vector therefore it is reduced by Principal Component Analysis (PCA). The features that have extracted by these three descriptors could be passing to the classifiers (Naive Bayes and Decision Tree) for training. Finally, they annotated the query image. In this study TUDarmstadt image bank had been used. The results of tests and comparative performance evaluation indicated better precision and executing time of Naive Bayes classification in comparison with Decision Tree classification.
翻译:最近,由于数字图像的迅速发展,对快速搜索和检索高分辨率和高效图像变得至关重要,许多数字图像提出了说明算法,面临巨大的挑战,这种算法不同,代表高水平代表图像的语义和低水平的图像,说明了这些特征,这个问题被称为语义gab。这项工作使用了MPEG-7标准,从图像中提取特征,通过使用可缩放色彩描述器和颜色布局描述器(CLD)提取了颜色特征,而通过使用EGE 直方图描述器(EHD)提取了纹理特征,该图生成了高维度特征矢量,因此被主要组成部分分析(PCA)减少了。这三个描述器所提取的特征可以传递给分类师(Naive Bayes 和决策树)进行培训。最后,它们为查询图像附加了说明。在这项研究中,使用了TUDarmstadt图像库。测试和比较性业绩评估结果表明,与决定树分类相比,Naive Bayes分类的精确度和执行时间更准确。