EmbAu: A Novel Technique to Embed Audio Data using Shuffled Frog Leaping Algorithm

Sahil Nokhwal, Saurabh Pahune, Ankit Chaudhary
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Abstract

The aim of steganographic algorithms is to identify the appropriate pixel positions in the host or cover image, where bits of sensitive information can be concealed for data encryption. Work is being done to improve the capacity to integrate sensitive information and to maintain the visual appearance of the steganographic image. Consequently, steganography is a challenging research area. In our currently proposed image steganographic technique, we used the Shuffled Frog Leaping Algorithm (SFLA) to determine the order of pixels by which sensitive information can be placed in the cover image. To achieve greater embedding capacity, pixels from the spatial domain of the cover image are carefully chosen and used for placing the sensitive data. Bolstered via image steganography, the final image after embedding is resistant to steganalytic attacks. The SFLA algorithm serves in the optimal pixels selection of any colored (RGB) cover image for secret bit embedding. Using the fitness function, the SFLA benefits by reaching a minimum cost value in an acceptable amount of time. The pixels for embedding are meticulously chosen to minimize the host image’s distortion upon embedding. Moreover, an effort has been taken to make the detection of embedded data in the steganographic image a formidable challenge. Due to the enormous need for audio data encryption in the current world, we feel that our suggested method has significant potential in real-world applications. In this paper, we propose and compare our strategy to existing steganographic methods.
EmbAu:一种利用青蛙跳跃算法嵌入音频数据的新技术
隐写算法的目的是识别主机或封面图像中适当的像素位置,在那里可以隐藏敏感信息以进行数据加密。目前正在进行工作,以提高整合敏感信息和保持隐写图像的视觉外观的能力。因此,隐写术是一个具有挑战性的研究领域。在我们目前提出的图像隐写技术中,我们使用了shuffledfrog跳跃算法(SFLA)来确定敏感信息可以放置在封面图像中的像素顺序。为了获得更大的嵌入容量,从封面图像的空间域中仔细选择像素并用于放置敏感数据。通过图像隐写增强,嵌入后的最终图像能够抵抗隐写攻击。该算法用于任意彩色(RGB)封面图像的最优像素选择,用于秘密位嵌入。使用适应度函数,SFLA通过在可接受的时间内达到最小成本值而获益。精心选择嵌入的像素,以最小化嵌入时宿主图像的失真。此外,人们还努力使隐写图像中嵌入数据的检测成为一项艰巨的挑战。由于当前世界对音频数据加密的巨大需求,我们认为我们建议的方法在实际应用中具有巨大的潜力。在本文中,我们提出并比较我们的策略与现有的隐写方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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