English

P2LSG: Powers-of-2 Low-Discrepancy Sequence Generator for Stochastic Computing

Emerging Technologies 2023-09-14 v2 Hardware Architecture

Abstract

Stochastic Computing (SC) is an unconventional computing paradigm processing data in the form of random bit-streams. The accuracy and energy efficiency of SC systems highly depend on the stochastic number generator (SNG) unit that converts the data from conventional binary to stochastic bit-streams. Recent work has shown significant improvement in the efficiency of SC systems by employing low-discrepancy (LD) sequences such as Sobol and Halton sequences in the SNG unit. Still, the usage of many well-known random sequences for SC remains unexplored. This work studies some new random sequences for potential application in SC. Our design space exploration proposes a promising random number generator for accurate and energy-efficient SC. We propose P2LSG, a low-cost and energy-efficient Low-discrepancy Sequence Generator derived from Powers-of-2 VDC (Van der Corput) sequences. We evaluate the performance of our novel bit-stream generator for two SC image and video processing case studies: image scaling and scene merging. For the scene merging task, we propose a novel SC design for the first time. Our experimental results show higher accuracy and lower hardware cost and energy consumption compared to the state-of-the-art.

Keywords

Cite

@article{arxiv.2309.05235,
  title  = {P2LSG: Powers-of-2 Low-Discrepancy Sequence Generator for Stochastic Computing},
  author = {Mehran Shoushtari Moghadam and Sercan Aygun and Mohsen Riahi Alam and M. Hassan Najafi},
  journal= {arXiv preprint arXiv:2309.05235},
  year   = {2023}
}

Comments

7 pages, 7 figures, Accepted in 29th ASP-DAC 2024 Conference

R2 v1 2026-06-28T12:17:40.572Z