Abstract

In this paper a novel rotation-invariant neural-based pattern recognition system is proposed. The system incorporates a new image preprocessing technique to extract rotation-invariant descriptive patterns from the shapes. The proposed system applies a three phase algorithm on the shape image to extract the rotation-invariant pattern. First, the orientation angle of the shape is calculated using a newly developed shape orientation technique. The technique is effective, computationally inexpensive and can be applied to shapes with several non-equally separated axes of symmetry. A simple method to calculate the average angle of the shape’s axes of symmetry is defined. In this technique, only the first moment of inertia is considered to reduce the computational cost. In the second phase, the image is rotated using a simple rotation technique to adapt its orientation angle to any specific reference angle. Finally in the third phase, the image preprocessor creates a symmetrical pattern about the axis with the calculated orientation angle and the perpendicular axis on it. Performing this operation in both the neural network training and application phases, ensures that the test rotated patterns will enter the network in the same position as in the training. Three different approaches were used to create the symmetrical patterns from the shapes. Experimental results indicate that the proposed approach is very effective and provide a recognition rate up to 99.5%.

Highlights

  • Pattern recognition is one of the most intriguing and active research topics in the field of image processing

  • In spite of the easiness of the recognition of different patterns by the human eyes, it remains challenging to implement automated pattern recognition technique that can be efficiently applied to various shapes

  • These transforms are based largely on Fourier analysis, and are probably the most common tools used in invariant pattern recognition [2,3,4,5,6,7]

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Summary

INTRODUCTION

Pattern recognition is one of the most intriguing and active research topics in the field of image processing. Other techniques use moment functions as invariant features by taking quotients and powers of moments such as regular moments, Zernike moments, the generalized moments and Flusser and Suk's moment for affine transformation invariance [8,9,10,11,12,13]. Another group of techniques incorporates different designs of neural networks in the invariance problem which rely on the presence of symmetries among the network connections. The proposed image preprocessor generates a rotation-invariant descriptive pattern from the shape to be used in the training and application phases of the neural network

SHAPE ORIENTATION
THE SHAPE ORIENTATION ALGORITHM The algorithm comprises four main steps
THE AVERAGING METHOD
SHAPE ORIENTATION SIMULATION RESULTS
PATTERN EXTRACTION
ROTAION INVARIANT NEURAL PATTERN RECOGNITION SYSTEM
Findings
CONCLUSIONS
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