TR2025-024

Quantum Implicit Neural Compression


    •  Fujihashi, T., Koike-Akino, T., "Quantum Implicit Neural Compression", AAAI Conference on Artificial Intelligence, March 2025.
      BibTeX TR2025-024 PDF
      • @inproceedings{Fujihashi2025mar,
      • author = {Fujihashi, Takuya and Koike-Akino, Toshiaki},
      • title = {{Quantum Implicit Neural Compression}},
      • booktitle = {AAAI Conference on Artificial Intelligence},
      • year = 2025,
      • month = mar,
      • url = {https://www.merl.com/publications/TR2025-024}
      • }
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  • Research Areas:

    Artificial Intelligence, Machine Learning

Abstract:

Signal compression based on implicit neural representation (INR) is an emerging technique to represent multimedia signals with a small number of bits. While INR-based signal compression achieves high-quality reconstruction for relatively low-resolution signals, the accuracy of high-frequency details is significantly degraded with a small model. To im- prove the compression efficiency of INR, we introduce quantum INR (quINR), which leverages the exponentially rich expressivity of quantum neural networks for data compression. Evaluations using some benchmark datasets show that the proposed quINR-based compression could improve rate- distortion performance in image compression compared with traditional codecs and classic INR-based coding methods, up to 1.2dB gain.

 

  • Related Publication

  •  Fujihashi, T., Koike-Akino, T., "Quantum Implicit Neural Compression", arXiv, December 2024.
    BibTeX arXiv
    • @article{Fujihashi2024dec2,
    • author = {Fujihashi, Takuya and Koike-Akino, Toshiaki},
    • title = {{Quantum Implicit Neural Compression}},
    • journal = {arXiv},
    • year = 2024,
    • month = dec,
    • url = {https://arxiv.org/abs/2412.19828}
    • }