IMAGE RETRIEVAL USING BLENDING OF EXTENDED FEATURE COMPONENTS

Hewayda M. Lotfy
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Abstract

Receiving the most relevant images from image databases is a challenging and critical issue in many applications. Texture is a substantial feature of an image which depicts the spatial behavior of gray-levels in any given neighborhood. Color features uses a variety of color systems and are meaningful to differentiate image segments. Presently, many of the favorable methods for image content description use local descriptors as their starting point with several conducts. The content in an image may appear in some feature descriptor's components more accurately than other components. This paper presents an innovative idea for local image retrieval using a new methodology for feature extraction welding named Blend of Extended Features’ Components (BoEFC). The paper shows that an image's content may be described individually by the feature descriptor's components or collectively through the Extended Feature Components (EFC). Retrieval options are attempted using a selection method of Feature Components then the relevant results are collected and ordered according to newly adapted feature similarity measures. The experiments were performed using a general-purpose image database which itself represent a challenge and the INRIA Holiday image database. The experiments was performed by varying the EFCs to compute recall, precision and draw the Precision-Recall (PR) curves which showed increased recall and precision with some components. In addition, calculating mAP and mAR showed increased performance due to the BoEFC blending process.
混合扩展特征组件的图像检索
在许多应用程序中,从图像数据库中接收最相关的图像是一个具有挑战性和关键的问题。纹理是图像的一个重要特征,它描述了任意给定邻域的灰度水平的空间行为。颜色特征使用了多种颜色系统,对区分图像分段具有重要意义。目前,许多较好的图像内容描述方法都是以局部描述符为出发点,并具有多种行为。图像中的内容可能会比其他组件更准确地出现在某些特征描述符的组件中。本文提出了一种基于扩展特征成分混合(BoEFC)的特征提取焊接局部图像检索方法。本文表明,图像的内容可以由特征描述符的组件单独描述,也可以通过扩展特征组件(Extended feature components, EFC)集体描述。使用特征组件的选择方法尝试检索选项,然后根据新适应的特征相似性度量收集相关结果并排序。实验使用了一个通用的图像数据库(本身就是一个挑战)和INRIA假日图像数据库。实验通过改变EFCs来计算查全率和查全率,并绘制查全率-查全率(PR)曲线,结果表明某些成分增加了查全率和查全率。此外,由于BoEFC混合处理,计算mAP和mAR的性能有所提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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