RAVQ-HoloNet: Rate-Adaptive Vector-Quantized Hologram Compression
Rafiei, Shima, Babak, Zahra Nabizadeh Shahr, Samavi, Shadrokh, Shirani, Shahram
–arXiv.org Artificial Intelligence
Holography offers significant potential for AR/VR applications, yet its adoption is limited by the high demands of data compression. Existing deep learning approaches generally lack rate adaptivity within a single network. We present RAVQ-HoloNet, a rate-adaptive vector quantization framework that achieves high-fidelity reconstructions at low and ultra-low bit rates, outperforming current state-of-the-art methods. In low bit, our method exceeds by -33.91% in BD-Rate and achieves a BD-PSNR of 1.02 dB from the best existing method demonstrated by the rate-distortion curve.
arXiv.org Artificial Intelligence
Nov-27-2025
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