Impulse Noise Removal Using Soft-computing

Hafiz Muhammad Tayyab Khushi
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引用次数: 1

Abstract

Image restoration has become a powerful domain now a days. In numerous real life applications Image restoration is important field because where image quality matters it existed like astronomical imaging, defense application, medical imaging and security systems. In real life applications normally image quality disturbed due to image acquisition problems like satellite system images cannot get statically as source and object both moving so noise occurring. Image restoration process involves to deal with that corrupted image. Degradation model used to train filtering techniques for both detection and removal of noise phase. This degeneration is usually the result of excess scar or noise. Standard impulse noise injection techniques are used for standard images. Early noise removal techniques perform better for simple kind of noise but have some deficiencies somewhere in sense of detection or removal process, so our focus is on soft computing techniques non classic algorithmic approach and using (ANN) artificial neural networks. These Fuzzy rules-based techniques performs better than traditional filtering techniques in sense of edge preservation.
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利用软计算去除脉冲噪声
如今,图像修复已经成为一个强大的领域。在许多实际应用中,图像恢复是一个重要的领域,因为在天文成像、国防应用、医学成像和安全系统中,图像质量至关重要。在实际应用中,通常由于图像采集问题,如卫星系统图像无法获得静态的图像质量,因为源和目标都在运动,因此会产生噪声。图像恢复过程涉及到对损坏图像的处理。退化模型用于训练检测和去除噪声相位的滤波技术。这种退化通常是由过多的疤痕或噪音造成的。标准脉冲噪声注入技术用于标准图像。早期的去噪技术对简单类型的噪声处理效果较好,但在检测或去噪过程中存在一定的不足,因此研究的重点是软计算技术、非经典算法方法和人工神经网络。这些基于模糊规则的技术在边缘保留方面优于传统的滤波技术。
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