Application of Wiener Filter Based on Improved BB Gradient Descent in Iris Image Restoration.

Chuandong Qin, Yiqing Zhang
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Abstract

Iris recognition, renowned for its exceptional precision, has been extensively utilized across diverse industries. However, the presence of noise and blur frequently compromises the quality of iris images, thereby adversely affecting recognition accuracy. In this research, we have refined the traditional Wiener filter image restoration technique by integrating it with a gradient descent strategy, specifically employing the Barzilai-Borwein (BB) step size selection. This innovative approach is designed to enhance both the precision and resilience of iris recognition systems. The BB gradient method is adept at optimizing the parameters of the Wiener filter by introducing simulated blurring and noise conditions to the iris images. Through this process, it is capable of restoring images that have been degraded by blur and noise, leading to a significant improvement in the clarity of the restored images and, consequently, a notable elevation in recognition performance. The results of our experiments have demonstrated that this advanced method surpasses conventional filtering techniques in terms of both subjective visual quality assessments and objective peak signal-to-noise ratio (PSNR) evaluations.

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基于改进 BB 梯度下降的维纳滤波器在虹膜图像修复中的应用
虹膜识别以其卓越的精确性而闻名,已被广泛应用于各个行业。然而,噪声和模糊的存在经常会影响虹膜图像的质量,从而对识别精度造成不利影响。在这项研究中,我们改进了传统的维纳滤波图像修复技术,将其与梯度下降策略相结合,特别是采用了 Barzilai-Borwein (BB) 步长选择。这种创新方法旨在提高虹膜识别系统的精度和复原能力。BB 梯度法善于通过在虹膜图像中引入模拟模糊和噪声条件来优化维纳滤波器的参数。通过这一过程,它能够恢复因模糊和噪声而退化的图像,从而显著提高恢复图像的清晰度,进而显著提升识别性能。我们的实验结果表明,这种先进的方法在主观视觉质量评估和客观峰值信噪比(PSNR)评估方面都超越了传统的过滤技术。
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