Abstract: Image set compression (ISC) refers to compressing the sets of semantically similar images. Traditional ISC methods typically aim to eliminate redundancy among images at either signal or frequency domain, but often struggle to handle complex geometric deformations across different images effectively. Here, we propose a new Hybrid Neural Representation for ISC (HNR-ISC), including an implicit neural representation for Semantically Common content Compression (SCC) and an explicit neural representation for Semantically Unique content Compression (SUC). Specifically, SCC enables the conversion of semantically common contents into a small-and-sweet neural representation, along with embeddings that can be conveyed as a bitstream. SUC is composed of invertible modules for removing intra-image redundancies. The feature level combination from SCC and SUC naturally forms the final image set. Experimental results demonstrate the robustness and generalization capability of HNR-ISC in terms of signal and perceptual quality for reconstruction and accuracy for the downstream analysis task.
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