Scientific Reports (May 2022)

Quantum pixel representations and compression for N-dimensional images

  • Mercy G. Amankwah,
  • Daan Camps,
  • E. Wes Bethel,
  • Roel Van Beeumen,
  • Talita Perciano

DOI
https://doi.org/10.1038/s41598-022-11024-y
Journal volume & issue
Vol. 12, no. 1
pp. 1 – 15

Abstract

Read online

Abstract We introduce a novel and uniform framework for quantum pixel representations that overarches many of the most popular representations proposed in the recent literature, such as (I)FRQI, (I)NEQR, MCRQI, and (I)NCQI. The proposed QPIXL framework results in more efficient circuit implementations and significantly reduces the gate complexity for all considered quantum pixel representations. Our method scales linearly in the number of pixels and does not use ancilla qubits. Furthermore, the circuits only consist of $$R_y$$ R y gates and $$\text {CNOT}$$ CNOT gates making them practical in the NISQ era. Additionally, we propose a circuit and image compression algorithm that is shown to be highly effective, being able to reduce the necessary gates to prepare an FRQI state for example scientific images by up to 90% without sacrificing image quality. Our algorithms are made publicly available as part of QPIXL++, a Quantum Image Pixel Library.