Image steganography using genetic algorithm for cover image selection and embedding

M.K. Shyla , K.B. Shiva Kumar , Rajendra Kumar Das
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引用次数: 14

Abstract

Data interchange through internet becomes an eminent technique and hence data security has become a big challenge in the field of communication with the increased use of internet. Demand for data authentication and effective means to control data integrity has been steadily increasing. Such a demand is due to the ease with which digital data can be tampered. Thus, cryptography and watermarking can be replaced with steganography for secure data communication and data privacy. In this paper, the carrier image is selected such that the payload/secret image and least significant bits of carrier image are matched with larger degree of compatibility and the hiding process introduces negligible changes in the resulted stego image based on genetic algorithm. In the proposed method we have achieved 30 to 40% improvements in the performance when compared to different existing methods. Selection of a suitable cover image and hiding the secret data to enhance the imperceptibility is a very challenging task. Genetic algorithm is used to ease the work of exploring an impossible task of selection from the trillions and millions of combinations.

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基于遗传算法的图像隐写掩护图像选择与嵌入
通过互联网进行数据交换已成为一项重要的技术,因此随着互联网使用的增加,数据安全已成为通信领域的一大挑战。对数据认证和控制数据完整性的有效手段的需求一直在稳步增长。这种需求是由于数字数据很容易被篡改。因此,密码学和水印可以被隐写术取代,以确保数据通信和数据隐私。在本文中,载体图像的选择使得载体图像的有效载荷/秘密图像和最低有效位的匹配具有较大的兼容性,隐藏过程在基于遗传算法的隐写图像中引入了可忽略的变化。与不同的现有方法相比,我们所提出的方法的性能提高了30%到40%。选择合适的封面图像并隐藏秘密数据以增强隐蔽性是一项非常具有挑战性的任务。遗传算法用于简化从数万亿和数百万种组合中探索不可能完成的任务的工作。
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