This paper proposes a novel multiple reconstruction compression framework that combines neural networks and scale compression for improved image processing. The framework encodes PNG images, reconstructs intermediate states, and applies additional image scaling to enhance compression rates by 4 to 10 times compared to traditional methods. Experimental results indicate that this new approach effectively suppresses redundancy and maintains image quality, making the changes indistinguishable to the human visual system.
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