Size, Scale and Rotation Invariant Proposed Feature vectors for Trademark Recognition

  • Faisal zafa, Muhammad (Faculty of Computer Science & Information Systems, University Technology Malaysia, Engineering,) ;
  • Mohamad, Dzulkifli (Faculty of Computer Science & Information Systems, University Technology Malaysia, Engineering,)
  • Published : 2002.07.01

Abstract

The classification and recognition of two-dimensional trademark patterns independently of their position, orientation, size and scale by proposing two feature vectors has been discussed. The paper presents experimentation on two feature vectors showing size- invariance and scale-invariance respectively. Both feature vectors are equally invariant to rotation as well. The feature extraction is based on local as well as global statistics of the image. These feature vectors have appealing mathematical simplicity and are versatile. The results so far have shown the best performance of the developed system based on these unique sets of feature. The goal has been achieved by segmenting the image using connected-component (nearest neighbours) algorithm. Second part of this work considers the possibility of using back propagation neural networks (BPN) for the learning and matching tasks, by simply feeding the feature vectosr. The effectiveness of the proposed feature vectors is tested with various trademarks, not used in learning phase.

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