DEVELOPMENT OF HYBRID QUANTUM-CLASSICAL MODELS FOR COMPUTER VISION

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DOI:

https://doi.org/10.26577/jpcsit20253105

Keywords:

quantum neural networks, hybrid computing, data classification, machine learning, gradient descent

Abstract

This research explores the integration of quantum computing with classical machine learning to enhance data classification tasks using Quantum Neural Networks (QNN) and Parameterized Quantum Circuits (PQC). The hybrid approach leverages the advantages of both quantum and classical systems to improve the efficiency and accuracy of data processing. In this model, data is encoded into qubits using amplitude encoding, representing input vectors as amplitudes of quantum states. The QNN is initialized by placing the qubits in superposition using Hadamard gates, followed by data encoding with parameterized rotational gates that map classical data to quantum states using rotation angles. PQC plays a central role by applying layers of parameterized quantum operations to process data in the quantum space. These parameters are optimized during the training process, where a quadratic loss function minimizes the error between the predicted quantum states and the true class labels using gradient descent. Experiments conducted on the MNIST dataset show that the hybrid the hybrid quantum-classical neural network (QCNN) with PQC achieves a classification accuracy of over 95%, highlighting its potential in machine learning applications. The results demonstrate that integrating quantum computing with classical machine learning enhances performance in complex data analysis tasks due to the exponential growth of quantum state space and the parallelism of quantum systems, making hybrid models promising for computer vision and classification tasks.

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Author Biographies

Aksultan Mukhanbet, LLP DigitAlem, Almaty, Kazakhstan

Aksultan Mukhanbet is a researcher at LLP DigitAlem and a PhD student in the Computer Science Department at Al-Farabi Kazakh National University (Almaty, Kazakhstan, mukhanbetaksultan0414@gmail.com). His research interests include quantum computing, quantum machine learning, quantum optimization, and computer vision.

Nurtugan Azatbekuly, LLP DigitAlem, Almaty, Kazakhstan

Nurtugan Azatbekuly is a junior researcher at LLP DigitAlem and a master’s student in the Computer Science Department at Al-Farabi Kazakh National University (Almaty, Kazakhstan, nurtugang17@gmail.com). His research interests focus on the analysis and development of computer vision algorithms and quantum computing.

Beimbet Daribayev, LLP DigitAlem, Almaty, Kazakhstan

Beimbet Daribayev, PhD, is a senior researcher at LLP DigitAlem and an Associate Professor in the Computer Science Department at Al-Farabi Kazakh National University (Almaty, Kazakhstan, beimbet.daribayev@gmail.com). His research interests include quantum computing, machine learning, and high-performance computing.

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How to Cite

Mukhanbet, A., Azatbekuly, N., & Daribayev, B. (2025). DEVELOPMENT OF HYBRID QUANTUM-CLASSICAL MODELS FOR COMPUTER VISION. Journal of Problems in Computer Science and Information Technologies, 3(1), 45–55. https://doi.org/10.26577/jpcsit20253105