Secure Image Retrieval of Poor Quality Images by Combining LE-GAN, Arnold Mapping and Logistic Mapping

Eldiya Thomas V, Maya Mohan
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Abstract

The quantity of image data is increasing rapidly with the discovery of big data and internet technology. Currently, the majority of image retrieval techniques rely on plain text images. It is a threat to several professional fields like medicine, the military, and the government. One of the limitations of the current data model is that it is difficult to effectively retrieve images with low quality samples. LE-GAN networks can be utilized to enhance the appearance of images. Then the enhanced images are fed into the network for retrieving images securely. Using a deep artificial neural network model to extract characteristics from training data can increase the security of an image's network transmission. Then, image retrieval [1] is devised and coupled with an image encryption technique that complements and secures image retrieval [1]. The recommended method can comfy the ciphertext images' retrieval and also can increase retrieval performance. Feature extraction has accomplished the usage of AlexNet and a chaotic algorithm is used as an encryption algorithm. To safeguard the image feature facts, the encryption technique is split into components so that the image information can nevertheless be successfully covered. To enforce the feature of image encryption, Arnold Mapping, and 2D Logistic Mapping are employed.
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结合LE-GAN、Arnold映射和Logistic映射的低质量图像安全检索
随着大数据和互联网技术的发现,图像数据的数量正在迅速增加。目前,大多数图像检索技术依赖于纯文本图像。它对医学、军事和政府等几个专业领域构成了威胁。当前数据模型的局限性之一是难以有效地检索低质量样本的图像。LE-GAN网络可以用来增强图像的外观。然后将增强后的图像输入到网络中进行安全检索。利用深度人工神经网络模型从训练数据中提取特征,可以提高图像网络传输的安全性。然后,设计了图像检索[1],并与图像加密技术相结合,以补充和保护图像检索[1]。所推荐的方法不仅可以方便密文图像的检索,而且可以提高检索性能。利用AlexNet完成特征提取,并采用混沌算法作为加密算法。为了保护图像的特征事实,将加密技术拆分为多个组件,从而可以成功地覆盖图像信息。为了增强图像加密的特性,采用了Arnold映射和2D逻辑映射。
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