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Kernel Density Feature Points Estimator for Content-Based Image Retrieval

机译:基于内容的图像检索的内核密度特征点估计器

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摘要

Research is taking place to find effective algorithms for content-based image representation and description. There is a substantial amount of algorithms available that use visual features (color, shape, texture). Shape feature has attracted much attention from researchers that there are many shape representation and description algorithms in literature. These shape image representation and description algorithms are usually not application independent or robust, making them undesirable for generic shape description. This paper presents an object shape representation using Kernel Density Feature Points Estimator (KDFPE). In this method, the density of feature points within defined rings around the centroid of the image is obtained. The KDFPE is then applied to the vector of the image. KDFPE is invariant to translation, scale and rotation. This method of image representation shows improved retrieval rate when compared to Density Histogram Feature Points (DHFP) method. Analytic analysis is done to justify our method, which was compared with the DHFP to prove its robustness.
机译:正在进行研究以找到用于基于内容的图像表示和描述的有效算法。有大量使用视觉功能(颜色,形状,纹理)的算法。形状特征已引起研究人员的广泛关注,文献中存在许多形状表示和描述算法。这些形状图像表示和描述算法通常不是独立于应用程序的,也不是鲁棒的,这使得它们对于通用形状描述而言是不可取的。本文提出了一种使用核密度特征点估计器(KDFPE)的对象形状表示。在这种方法中,获得了围绕图像质心的定义环内特征点的密度。然后将KDFPE应用于图像的矢量。 KDFPE不变于平移,缩放和旋转。与密度直方图特征点(DHFP)方法相比,这种图像表示方法显示出更高的检索率。进行了分析分析以证明我们的方法是正确的,并将其与DHFP进行比较以证明其稳健性。

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