V-Net architecture based advanced visually meaningful image encryption technique

Varsha Himthani, V. Dhaka, Manjit Kaur, Prashant Hemrajani
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Abstract

Abstract The visually meaningful image encryption (VMIE) technique is used to offer additional security to the noise-like encrypted image by implanting the secret image in the cover image. Generally, VMIE techniques follow two steps: pre-encryption and embedding. In this paper, an advanced V-Net architecture based VMIE technique is presented. V-Net architecture is based on a Convolution Neural Network (CNN) and offered medical image segmentation, that is utilized in the image into image steganography in the proposed work. In the proposed VMIE technique, the secret image is encrypted by utilizing the 5D chaotic map to provide high security, and the encrypted secret image is implanted into the cover image using a V-Net based embedding method. CNN-based image embedding methods offer high payload capacity and imperceptibility. In these methods, the encoder hides the secret image into the cover and the decoder reconstruct the secret image. Furthermore, a CNN-based efficient decoder is designed in the proposed method. Moreover, to validate the proposed method, standard evaluation parameters are analyzed.
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基于V-Net架构的先进图像加密技术
摘要采用视觉意义图像加密(VMIE)技术,通过在封面图像中植入秘密图像,为类噪声加密图像提供额外的安全性。通常,VMIE技术遵循两个步骤:预加密和嵌入。本文提出了一种基于VMIE技术的先进的V-Net体系结构。V-Net架构基于卷积神经网络(CNN)并提供医学图像分割,在本文的工作中将其用于图像隐写。在VMIE技术中,利用5D混沌映射对秘密图像进行加密以提供较高的安全性,并利用基于V-Net的嵌入方法将加密后的秘密图像植入到封面图像中。基于cnn的图像嵌入方法具有较高的有效载荷能力和隐蔽性。在这些方法中,编码器将秘密图像隐藏到封面中,解码器重建秘密图像。在此基础上,设计了基于cnn的高效解码器。为了验证该方法的有效性,对标准评价参数进行了分析。
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CiteScore
3.10
自引率
21.40%
发文量
126
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