Comparative analysis of invariant schemes for logo classification

Syed Yasser Arafat, M. Saleem, S. Hussain
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引用次数: 18

Abstract

Logo or Trademark is of high importance because it carries the goodwill of the company and the product. Products are mostly recognized by their brand logos. Their recognition is a major problem. A number of techniques are there for logo recognition. In this paper, a number of invariant techniques are compared to find out their effectiveness on various categories of brand logos. Techniques which were investigated are Hu's Invariant Moments, Log-Polar Transform (LPT), Fourier-Mellin transform (FMT), Gradient Location-Orientation Histogram (GLOH). Experiments were performed on University of Marry Land (UMD) database. Results are given, along with recognition rate and time taken. Results show that GLOH performs the best with approximately 97% recognition rate but need a more computational time while on the other extreme FMT technique performs poorest with recognition rate with average of approx. 85% but with least computational time compared to all other techniques.
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标志分类的不变方案比较分析
标志或商标是非常重要的,因为它承载着公司和产品的商誉。产品大多是通过其品牌标识来识别的。对他们的认识是个大问题。有许多用于标识识别的技术。本文比较了几种不变量技术对不同类别品牌标识的有效性。研究了Hu不变矩、对数极变换(LPT)、傅里叶-梅林变换(FMT)、梯度位置-方向直方图(GLOH)等技术。实验在马里兰大学(University of mary Land, UMD)数据库上进行。给出了结果,以及识别率和所用时间。结果表明,GLOH算法的识别率最高,约为97%,但需要更多的计算时间;另一方面,FMT算法的识别率最低,平均约为97%。但与所有其他技术相比,计算时间最少。
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