Abstract
This paper addresses a model to secrete the information of one image under another without losing quality of image. Different approaches have been utilized for image hiding as needed, but multiple images maintain secrecy with information under another image is a challenging task. Thus, the framework is proposed to sustain the secrecy of an original image from another image. The proposed system collects random images through ImageNet and uses them as per the requirements of secrete images. The framework is used the deep neural networks method to build secrete information of multiple images under a single image. The enormous transfer of images is used to select standard image modifications using advanced deep learning approaches. It develops the significance of the critical framework that alleviates the choice of finding the hidden image information. Two vital methods such as Peak Signal to Noise Ratio (PSNR) and the Structural Similarity Index (SSIM) are used to find out difference between host and secret image by their corresponding evaluation scores. It produces the confidentiality of the image with the help of the host image. Therefore, data from several images are protected under a single image. The different image data are experimented with good performance. For comparative analysis, the accuracy is better in retrieving two secrete images on all experiments, like approximate accuracy is 100%. Still, when we considered PSNR and SSIM scores on the same two secrete images, accuracy became less than 50%.