This paper proposes a multiple reconstruction compression framework that combines neural networks with scaling compression for improved image processing. The method encodes PNG image data, reconstructs intermediate images, and enhances compression efficiency by up to 10 times compared to conventional methods, while maintaining quality unnoticeable to the human eye. The framework addresses challenges in image data storage and transmission by effectively eliminating redundancy and utilizing iterative reconstruction methods.