Retrieval of exudate‐affected retinal image patches using Siamese quantum classical neural network

Abstract Deep neural networks were previously used in the arena of image retrieval. Siamese network architecture is also used for image similarity comparison. Recently, the application of quantum computing in different fields has gained research interest. Researchers are keen to explore the prospect...

Full description

Bibliographic Details
Main Authors: Mahua Nandy Pal, Minakshi Banerjee, Ankit Sarkar
Format: Article
Language:English
Published: Wiley 2022-03-01
Series:IET Quantum Communication
Subjects:
Online Access:https://doi.org/10.1049/qtc2.12026
_version_ 1818364454830604288
author Mahua Nandy Pal
Minakshi Banerjee
Ankit Sarkar
author_facet Mahua Nandy Pal
Minakshi Banerjee
Ankit Sarkar
author_sort Mahua Nandy Pal
collection DOAJ
description Abstract Deep neural networks were previously used in the arena of image retrieval. Siamese network architecture is also used for image similarity comparison. Recently, the application of quantum computing in different fields has gained research interest. Researchers are keen to explore the prospect of quantum circuit implementation in terms of supervised learning, resource utilization, and energy‐efficient reversible computing. In this study, the authors propose an application of quantum circuit in Siamese architecture and explored its efficiency in the field of exudate‐affected retinal image patch retrieval. Quantum computing applied within Siamese network architecture may be effective for image patch characteristic comparison and retrieval work. Although there is a restriction of managing high‐dimensional inner product space, the circuit with a limited number of qubits represents exudate‐affected retinal image patches and retrieves similar patches from the patch database. Parameterized quantum circuit (PQC) is implemented using a quantum machine learning library on Google Cirq framework. PQC model is composed of classical pre/post‐processing and parameterized quantum circuit. System efficiency is evaluated with the most widely used retrieval evaluation metrics: mean average precision (MAP) and mean reciprocal rank (MRR). The system achieved an encouraging and promising result of 98.1336% MAP and 100% MRR. Image pixels are implicitly converted to rectangular grid qubits in this experiment. The experimentation was further extended to IBM Qiskit framework also. In Qiskit, individual pixels are explicitly encoded using novel enhanced quantum representation (NEQR) image encoding algorithm. The probability distributions of both query and database patches are compared through Jeffreys distance to retrieve similar patches.
first_indexed 2024-12-13T22:04:38Z
format Article
id doaj.art-cddf080ea817419ca6f33a97717c71e1
institution Directory Open Access Journal
issn 2632-8925
language English
last_indexed 2024-12-13T22:04:38Z
publishDate 2022-03-01
publisher Wiley
record_format Article
series IET Quantum Communication
spelling doaj.art-cddf080ea817419ca6f33a97717c71e12022-12-21T23:29:54ZengWileyIET Quantum Communication2632-89252022-03-0131859810.1049/qtc2.12026Retrieval of exudate‐affected retinal image patches using Siamese quantum classical neural networkMahua Nandy Pal0Minakshi Banerjee1Ankit Sarkar2Department of Computer Science and Engineering MCKV Institute of Engineering Howrah IndiaDepartment of Computer Science and Engineering RCC Institute of Information Technology Kolkata IndiaTATA Consultancy Services Ltd Hyderabad IndiaAbstract Deep neural networks were previously used in the arena of image retrieval. Siamese network architecture is also used for image similarity comparison. Recently, the application of quantum computing in different fields has gained research interest. Researchers are keen to explore the prospect of quantum circuit implementation in terms of supervised learning, resource utilization, and energy‐efficient reversible computing. In this study, the authors propose an application of quantum circuit in Siamese architecture and explored its efficiency in the field of exudate‐affected retinal image patch retrieval. Quantum computing applied within Siamese network architecture may be effective for image patch characteristic comparison and retrieval work. Although there is a restriction of managing high‐dimensional inner product space, the circuit with a limited number of qubits represents exudate‐affected retinal image patches and retrieves similar patches from the patch database. Parameterized quantum circuit (PQC) is implemented using a quantum machine learning library on Google Cirq framework. PQC model is composed of classical pre/post‐processing and parameterized quantum circuit. System efficiency is evaluated with the most widely used retrieval evaluation metrics: mean average precision (MAP) and mean reciprocal rank (MRR). The system achieved an encouraging and promising result of 98.1336% MAP and 100% MRR. Image pixels are implicitly converted to rectangular grid qubits in this experiment. The experimentation was further extended to IBM Qiskit framework also. In Qiskit, individual pixels are explicitly encoded using novel enhanced quantum representation (NEQR) image encoding algorithm. The probability distributions of both query and database patches are compared through Jeffreys distance to retrieve similar patches.https://doi.org/10.1049/qtc2.12026cirqqiskitquantum circuitretinal image patch retrievalsiamese network
spellingShingle Mahua Nandy Pal
Minakshi Banerjee
Ankit Sarkar
Retrieval of exudate‐affected retinal image patches using Siamese quantum classical neural network
IET Quantum Communication
cirq
qiskit
quantum circuit
retinal image patch retrieval
siamese network
title Retrieval of exudate‐affected retinal image patches using Siamese quantum classical neural network
title_full Retrieval of exudate‐affected retinal image patches using Siamese quantum classical neural network
title_fullStr Retrieval of exudate‐affected retinal image patches using Siamese quantum classical neural network
title_full_unstemmed Retrieval of exudate‐affected retinal image patches using Siamese quantum classical neural network
title_short Retrieval of exudate‐affected retinal image patches using Siamese quantum classical neural network
title_sort retrieval of exudate affected retinal image patches using siamese quantum classical neural network
topic cirq
qiskit
quantum circuit
retinal image patch retrieval
siamese network
url https://doi.org/10.1049/qtc2.12026
work_keys_str_mv AT mahuanandypal retrievalofexudateaffectedretinalimagepatchesusingsiamesequantumclassicalneuralnetwork
AT minakshibanerjee retrievalofexudateaffectedretinalimagepatchesusingsiamesequantumclassicalneuralnetwork
AT ankitsarkar retrievalofexudateaffectedretinalimagepatchesusingsiamesequantumclassicalneuralnetwork