Securing fingerprint images using a hybrid technique

R. Bansal, P. Sehgal, Punam Bedi
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引用次数: 9

Abstract

This paper presents an efficient hybrid watermarking scheme for securing fingerprint images in the Discrete Cosine Transform (DCT) domain. The proposed method uses a NN-PSO (Neural Network-Particle Swarm Optimization) based hybrid approach to watermark host gray scale fingerprint images with their corresponding facial images in order to secure them. The algorithm divides the input image into blocks and uses a feed forward NN to determine the number of secret bits to be embedded in each block depending on the blocks' features. The output of the NN is then used as input by the PSO module to find the best DCT coefficients' locations in that block where the secret facial image data can be embedded, so that the distortion produced in the host image is minimum and the minutia predicting ability remains unaffected. The experimental results have been analyzed and compared with existing PSO based and NN based approaches. The proposed NN-PSO based hybrid approach has been found to exhibit better watermarked image quality and better robustness to possible attacks to the watermarked image. Moreover, as the proposed technique retains the feature set of the original fingerprint, the extracted facial image and the cover fingerprint image can be correctly verified at the receiver's end leading to a more secure and accurate biometric based personal authentication.
使用混合技术保护指纹图像
提出了一种用于指纹图像离散余弦变换(DCT)域安全的高效混合水印方案。该方法采用基于神经网络-粒子群优化(NN-PSO)的混合方法,对灰度指纹图像及其对应的人脸图像进行水印处理,以保证指纹图像的安全。该算法将输入图像划分为块,并根据块的特征使用前馈神经网络确定每个块中要嵌入的秘密比特的数量。然后将神经网络的输出用作PSO模块的输入,以在可以嵌入秘密面部图像数据的块中找到最佳DCT系数的位置,从而使主图像中产生的失真最小,并且细节预测能力不受影响。实验结果与现有的基于粒子群算法和基于神经网络的方法进行了分析和比较。研究发现,基于神经网络-粒子群算法的混合方法具有更好的水印图像质量和对可能的攻击的鲁棒性。此外,由于该技术保留了原始指纹的特征集,提取的面部图像和封面指纹图像可以在接收者端正确验证,从而实现更安全、准确的基于生物特征的个人身份认证。
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