Abstract
In light of the growing popularity of digital photography and the decreasing dependence on hard-copy photographic formats, this paper provides a thorough analysis of the comprehension and application of image restoration software. As a result, many photographic memories now sit in home storage for long periods of time, eventually giving way to the deterioration of image quality. However, the purpose of this research is to shed light on the revolutionary possibilities of advanced algorithms and technology in the restoration of these. However, the suggested approach recognizes the significant difficulties brought about by the complexity of the algorithm and the resource-intensive nature of the restoration procedure, highlighting the necessity of continued research and development. In conclusion, picture restoration software proves to be a vital instrument for preserving our digital legacy, revitalizing visual stories, even though there is a constant need for creative ways to overcome the challenges it poses. Utilizing technologies such as Variational Autoencoders (VAEs), open CV, Generative Adversarial Network (GAN), deep learning, and their applications, this proposed system has the potential to fundamentally alter photography and the field of archaeological surveys, assisting in historical discoveries and revealing world truths and times that have been concealed for centuries in the form of images. Proposed system are validated on standard facial dataset.
Keywords: Convolutional Neural Network (CNN), Face Detection, Image Processing, Mean Square Error (MSE), Open CV, Peak to Signal to Noise Ratio PSNR.