English

Quaternion optical computing chip for parallel high-dimensional data processing

Optics 2026-01-06 v1

Abstract

Optical computing chips have emerged as a transformative computing technology due to their high computational density, low energy consumption, and compact footprint. While real- and complex-valued computing chips have been well developed, their fundamental limitations in representing high-dimensional data significantly constrain their applicability in modern signal processing. Quaternions enable direct operations on three- and four-dimensional data, powering high-dimensional processing in data analytics and artificial intelligence. Here we demonstrate a quaternion optical computing chip (QOCC) for the first time and benchmark its performance in several typical application scenarios: three-dimensional point cloud processing, RGB chromatic transformation, and quaternion convolutional neural network for color image recognition. The QOCC harnesses high parallelism of light by wavelength-division multiplexing, processing high-dimensional data simultaneously through multiple optical wavelength channels. Compared to the electronic computing counterpart, our QOCC achieves higher computational fidelity (root mean square error < 0.035) and substantially reduced computational load (2/3 lower). It paves the way towards next-generation optical computing, overcoming the limitations of traditional computing systems in high-dimensional data processing.

Keywords

Cite

@article{arxiv.2601.01399,
  title  = {Quaternion optical computing chip for parallel high-dimensional data processing},
  author = {Songyue Liu and Qi Lu and Yuan Zhong and Yuru Li and Meng Xiang and Zhaohui Li and Chao Lu and Yikai Su and Lu Sun},
  journal= {arXiv preprint arXiv:2601.01399},
  year   = {2026}
}
R2 v1 2026-07-01T08:49:42.226Z