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A comparative study among colorful image descriptors for content based image retrieval

机译:基于内容的图像检索彩色图像描述函数的比较研究

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Recently there has been an explosive growth of image archive libraries on web media. Due to this fact image retrieval technology has achieved significant outbreak and many Content based Image Retrieval (CBIR) methods have been proposed during last few years. CBIR is a kind of image mining technique which analyses the image features using color, texture, shape and object position. In this paper, research has been carried out on color feature extraction. For this purpose, a comparative study among three colorful image descriptors namely Columnar Mean, Average RGB and Color Moment has been discussed. A CBIR system has been designed for each method separately and also their retrieval performance have been evaluated through computation of average precision, average recall and f-measure. Euclidean distance has been employed for matching reference image with database images. The simulated results showed that average RGB color image descriptor outperformed than other two color feature extraction methods.
机译:最近,Web媒体上的图像存档库一直存在爆炸性的增长。由于该事实,图像检索技术已经实现了显着的爆发,并且在过去几年中已经提出了许多基于内容的图像检索(CBIR)方法。 CBIR是一种图像挖掘技术,它使用颜色,纹理,形状和对象位置分析图像特征。本文在彩色特征提取上进行了研究。为此目的,讨论了三种彩色图像描述符的比较研究即柱状均值,平均RGB和颜色时刻。 CBIR系统已经为每种方法而设计,并且还通过计算平均精度,平均召回和F测量来评估其检索性能。已经采用了欧几里德距离用于将参考图像与数据库图像匹配。模拟结果表明,平均RGB彩色图像描述符比其他两种颜色特征提取方法优于。

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