Abstract

One major problem facing some environments, such as insurance companies and government institutions, is when a massive amount of documents has to be processed every day. Thus, an automatic stamp recognition system is necessary. The extraction and recognition of a general stamp is not a simple task because it may have various shapes, sizes, backgrounds, patterns, and colors. Moreover, the stamp can be printed on documents with bad quality and rotation with various angles. Our proposed method presents a new approach for the preprocessing and recognition of color stamp images. It consists of four stages, which are stamp extraction, preprocessing, feature extraction, and matching. Stamp extraction is achieved to isolate complex background and remove unwanted data or noise that is surrounding the stamp area. The preprocessing stage is necessary to improve the stamp brightness and eliminate the rotation that occurs during the stamping process. In feature extraction, the extracted information will be representing the desirable feature vector in order to discriminate between stamps using local distribution of statistical features and Haar wavelet with histogram moment. Finally, each extracted feature vector will be saved in the dedicated system database for matching purpose. The test results indicate that the proposed system provides a high recognition rate for two sets of the proposed features (i.e., 99.29% recognition rate for the local distribution of statistical features and 96.01% recognition rate for the Haar wavelet transform with histogram and moment).

Highlights

  • Pattern recognition system works by obtaining biometrical information that reflects the identity of an object

  • The results shown in Tables- 2, 3, and 4 illustrate the effects of the number of blocks and different overlapping ratios r on the recognition rate of the above seven feature sets, by using Normalized Mean Square Distance (NMSD) similarity measure

  • In this paper, we proposed a new approach that leads to the recognition of color stamp images

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Summary

Introduction

Pattern recognition system works by obtaining biometrical information that reflects the identity of an object It extracts a set of features from the data acquired and compares it to the template set kept in the database [1]. All stamps located on paper documents have unique features derived from the stamping process These features (shape, complexity, and typical patterns) are developed into actual standards [4]. Principal component analysis (PCA) can be defined as a preprocessing transformation that produces new images from the interrelated values of existing images It is performed by a linear transformation of variables that leads to rotation and translation of the original coordinate system. There are several problems facing the process of extracting stamp images from document images, such as complex background, removing noise, contrast enhancement, rotated in various angles, and recognition of the stamp. This paper aims to present a new system for recognizing color stamp images that is robust against noise and rotation

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