QUANT-PHAICVDec 13, 2023

A Novel Image Classification Framework Based on Variational Quantum Algorithms

arXiv:2312.07932v220 citationsh-index: 1Quantum Information Processing
Originality Highly original
AI Analysis

This addresses a specific bottleneck in image classification for machine learning practitioners, offering a novel hybrid quantum-classical approach with measurable gains.

The paper tackles the information loss problem in image classification caused by global pooling by introducing a variational quantum algorithm framework that eliminates pooling, preserving more features and improving performance. It achieves up to a 9.21% increase in accuracy and 15.79% improvement in F1 score compared to classical methods.

Image classification is a crucial task in machine learning with widespread practical applications. The existing classical framework for image classification typically utilizes a global pooling operation at the end of the network to reduce computational complexity and mitigate overfitting. However, this operation often results in a significant loss of information, which can affect the performance of classification models. To overcome this limitation, we introduce a novel image classification framework that leverages variational quantum algorithms (VQAs)-hybrid approaches combining quantum and classical computing paradigms within quantum machine learning. The major advantage of our framework is the elimination of the need for the global pooling operation at the end of the network. In this way, our approach preserves more discriminative features and fine-grained details in the images, which enhances classification performance. Additionally, employing VQAs enables our framework to have fewer parameters than the classical framework, even in the absence of global pooling, which makes it more advantageous in preventing overfitting. We apply our method to different state-of-the-art image classification models and demonstrate the superiority of the proposed quantum architecture over its classical counterpart through a series of experiments on public datasets. Our experiments show that the proposed quantum framework achieves up to a 9.21% increase in accuracy and up to a 15.79% improvement in F1 score, compared to the classical framework.

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