Editorial Board
Guidelines for Authors
QIC Online

Subscribers: to view the full text of a paper, click on the title of the paper. If you have any problem to access the full text, please check with your librarian or contact qic@rintonpress.com   To subscribe to QIC, please click Here.

Quantum Information and Computation     ISSN: 1533-7146      published since 2001
Vol.23 No.15&16 December 2023

A quantum segmentation algorithm based on background-difference method for NEQR image  (pp1291-1309) 
          
Lu Wang, Wenjie Liu, and Zhiliang Deng 
         
 doi: https://doi.org/10.26421/QIC23.15-16-3

Abstracts: Quantum image segmentation algorithm can use its quantum mechanism to rapidly segment the objects in a quantum image. However, the existing quantum image segmentation algorithms can only segment static objects in the image and use more quantum resource(qubit). In this paper, a novel  quantum segmentation algorithm based on background-difference method for NEQR image is proposed, which can segment dynamic objects in a static scene image  by using fewer qubits. In addition, an efficient and   feasible quantum absolute value subtractor is designed, which is an exponential improvement over the existing quantum absolute value subtractor. Then, a complete quantum circuit is designed to segment the NEQR image.  For a ${2^n}$$\times$${2^n}$  image with  gray-scale range of [0,$2^q$-1], the complexity of our algorithm is O($q$), which has an exponential improvement over the classical segmentation algorithm, and the complexity will not increase as the image's size increases. The experiment is conducted on IBM Q  to show the feasibility of our algorithm in the noisy intermediate-scale quantum  (NISQ) era.
Key Words: Quantum image processing, Quantum image segmentation, Background-difference method,  Quantum absolute value subtractor

กก