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Evaluation of Euclidean and Manhanttan metrics in Content Based Image Retrieval system

机译:基于内容的图像检索系统中欧几里德和曼海兰度量的评估

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Content-Based Image Retrieval is used nowadays for generating signatures of images in databases and then comparing these stored signatures with the signature of the query image. In this paper color histogram is used as signature of an image and used to compare two images based on Manhattan distance (L1 norm) and Euclidean distance (L2 norm) distance metrics..In this paper, Corel database is used to evaluate the performance of Manhattan and Euclidean distance metrics. The experimental results showed that Manhattan showed better precision rate than Euclidean distance metric. The evaluation is made using Content based image retrieval application developed using color moments of the Hue, Saturation and Value(HSV) of the image and Gabor descriptors are adopted as texture features.
机译:现在使用基于内容的图像检索,用于在数据库中生成图像的签名,然后将这些存储的签名与查询图像的签名进行比较。在本文中,直方图用作图像的签名,并用于比较基于曼哈顿距离(L1标准)和欧几里德距离(L2 NOM)距离指标的两个图像。在本文中,Corel数据库用于评估性能曼哈顿和欧几里德距离指标。实验结果表明,曼哈顿表现出比欧几里德距离度量更好的精确率。使用基于内容的图像检索应用程序使用使用色调的颜色矩,图像的饱和度和值(HSV)和Gabor描述符的颜色矩作为纹理特征来进行评估。

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