Feature Extraction Using Zernike Moments
نویسنده
چکیده
Shape identification and feature extraction are the main concern of any pattern recognition system. Object parameters are mostly dependent on spatio-temporal relationships among the pixels. However feature extraction is a complex phenomenon which needs to be addressed from the invariance property, irrespective of position and orientation. Zernike moments are used as shape descriptors and identified as rotation invariant due to Orthogonality property. However the computational complexity is high. Script as a basis for evaluation of patterns and cursive nature of script language Telugu. The present work is aimed at evaluation of Zernike moments for various patterns of objects that are cursive in nature. Therefore feature extraction of patterns like vowels and consonants in cursive script Telugu using Zernike moments is considered in comparison with Hu's seven moments.
منابع مشابه
On Pattern Classification Using Statistical Moments
Selecting appropriate feature extraction method is absolutely one of the most important factors to archive high classification performance in pattern recognition systems. Among different feature extraction methods proposed for pattern recognition, statistical moments seem to be so promising. Whereas theoretical comparison of the moments is too complicated, in this paper, an experimental evaluat...
متن کاملZernike moments and neural networks for recognition of isolated Arabic characters
The aim of this work is to present a system for recognizing isolated Arabic printed characters. This system goes through several stages: preprocessing, feature extraction and classification. Zernike moments, invariant moments and Walsh transformation are used to calculate the features. The classification is based on multilayer neural networks. A recognition rate of 98% is achieved by using Zern...
متن کاملInvariant Feature Extraction from Fingerprint Biometric Using Pseudo Zernike Moments
To represent the large amount of data in the biometric images an efficient feature extraction method is needed. Further biometric image acquisition is subject to deforming processes such as rotation, translation and scaling. Hence it is also required that the image representation be invariant to the deformations and sustain the discriminating features. Considering the trade off between the disc...
متن کاملInvariant Image Watermarking Using Harris Feature Extraction and Zernike Moments
A robust and geometric invariant digital image watermarking scheme based on feature extraction and local Zernike transform is proposed in this paper. The Adaptive Harris Detector is proposed to extract feature patches for watermarking use. A local Zernike moments-based watermarking scheme is raised, where the watermarked patches can be obtained directly by inverse Zernike Transform. Each extrac...
متن کاملPseudo Zernike Moment-based Multi-frame Super Resolution
The goal of multi-frame Super Resolution (SR) is to fuse multiple Low Resolution (LR) images to produce one High Resolution (HR) image. The major challenge of classic SR approaches is accurate motion estimation between the frames. To handle this challenge, fuzzy motion estimation method has been proposed that replaces value of each pixel using the weighted averaging all its neighboring pixels i...
متن کامل