Logo recognition using Context Dependent criteria

Poonam Kondekar, P. Shende
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引用次数: 2

Abstract

In our day today life if we want to buy any product then we first see the brand or logo of that product whether that brand or logo is original or not. Depending upon this we conclude that product is original product otherwise fake product. So in this project we detect first the original logo which is present in the image by comparing original logo image with the test image by using two algorithms first CDS-SIFT and second CDS RANSAC. And then conclude that the proposed method is more efficient than the existing method in terms of Execution time, Accuracy, FRR(False Rejection Rate), FAR (False Acceptance Rate). The proposed method of logo detection is based on Context Dependent Similarity (CDS) kernel. CDS kernel's function is dependent upon three terms first energy function, second context criterion and third entropy term. Energy function balances the fidelity term. The analysis of proposed method is done using MATLAB and comparative analysis of proposed method against the nearest neighbor of existing SIFT method is done and claim that proposed method is best method. Secondly we will evaluate the performance parameters.
使用上下文相关标准的徽标识别
在我们今天的生活中,如果我们想买任何产品,那么我们首先会看到该产品的品牌或标志,无论该品牌或标志是否是原创的。据此,我们断定产品是正品,否则是假冒产品。因此,在本项目中,我们首先通过使用两种算法(一种是CDS- sift,另一种是CDS RANSAC)将原始徽标图像与测试图像进行比较,从而检测图像中存在的原始徽标。从执行时间、准确率、误拒率(FRR)、误接受率(FAR)等方面得出本文方法比现有方法更有效的结论。提出了一种基于上下文相关相似度(CDS)核的标识检测方法。CDS核函数依赖于三个项:一是能量函数,二是环境准则,三是熵项。能量函数平衡保真度项。利用MATLAB对所提方法进行了分析,并与现有SIFT方法的最近邻进行了比较分析,证明所提方法是最佳方法。其次,我们将评估性能参数。
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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