Deep Hierarchical Video Compression

Authors

  • Ming Lu School of Electronic Science and Engineering, Nanjing University Interdisciplinary Research Center for Future Intelligent Chips (Chip-X), Nanjing University
  • Zhihao Duan Elmore Family School of Electrical and Computer Engineering, Purdue University
  • Fengqing Zhu Elmore Family School of Electrical and Computer Engineering, Purdue University
  • Zhan Ma School of Electronic Science and Engineering, Nanjing University

DOI:

https://doi.org/10.1609/aaai.v38i8.28733

Keywords:

DMKM: Data Compression, DMKM: Mining of Spatial, Temporal or Spatio-Temporal Data

Abstract

Recently, probabilistic predictive coding that directly models the conditional distribution of latent features across successive frames for temporal redundancy removal has yielded promising results. Existing methods using a single-scale Variational AutoEncoder (VAE) must devise complex networks for conditional probability estimation in latent space, neglecting multiscale characteristics of video frames. Instead, this work proposes hierarchical probabilistic predictive coding, for which hierarchal VAEs are carefully designed to characterize multiscale latent features as a family of flexible priors and posteriors to predict the probabilities of future frames. Under such a hierarchical structure, lightweight networks are sufficient for prediction. The proposed method outperforms representative learned video compression models on common testing videos and demonstrates computational friendliness with much less memory footprint and faster encoding/decoding. Extensive experiments on adaptation to temporal patterns also indicate the better generalization of our hierarchical predictive mechanism. Furthermore, our solution is the first to enable progressive decoding that is favored in networked video applications with packet loss.

Published

2024-03-24

How to Cite

Lu, M., Duan, Z., Zhu, F., & Ma, Z. (2024). Deep Hierarchical Video Compression. Proceedings of the AAAI Conference on Artificial Intelligence, 38(8), 8859-8867. https://doi.org/10.1609/aaai.v38i8.28733

Issue

Section

AAAI Technical Track on Data Mining & Knowledge Management