量子目标检测与识别的系统文献综述:研究趋势、数据集、主题和方法

Ifran Lindu Mahargya, Guruh Fajar Shidik, Affandy, Pujiono, Supriadi Rustad
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引用次数: 0

摘要

量子计算是利用量子力学在信息处理中的叠加、干涉、纠缠等特性,实现并行计算的计算过程。量子计算的优势在于它可以解决复杂的问题,而经典计算则不可能解决复杂的问题,因为它需要昂贵的计算成本。目标检测和识别是计算机视觉的一项任务,该领域的研究旨在提高计算机算法对视觉信息进行解释的能力。人类很容易分析和描述所接收到的视觉信息。然而,与计算机系统不同的是,它们必须从接收到的视觉信息中学习和探索机器学习,以提供对视觉信息的正确解释。本文对2012年至2024年发表的论文进行了系统回顾,以回答量子物体检测和识别研究的进展情况。本综述的方法遵循了系统的文献综述,如Kitchenham等人提出的方法。所选的主要研究共29篇论文,来自四个来源数字图书馆。量子算法的应用更常用于提高经典计算的性能。量子模型类别包括纯量子、混合经典量子和量子启发ML三种类型。2012 - 2024年,在图像分类中,混合经典量子是讨论最多的模型,量子卷积神经网络是讨论最多的算法或模型。量子算法显示出良好的效果,可以提高经典算法的性能,尽管目前量子计算机的发展仍处于嘈杂的中等规模量子时代,量子计算的能力并不是完全优化的。然而,在目前有限的量子计算能力下,它已经可以超越经典计算的能力。基于此,需要开展量子目标检测和识别的研究,使量子计算的潜力充分发挥时,用户的能力是胜任的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A systematic literature review of quantum object detection and recognition: research trend, datasets, topics and methods
Quantum computing is a computational process that utilizes quantum mechanics features, namely superposition, interference, and entanglement, in information processing, allowing computation to run in parallel. The advantage of quantum computing is that it solves complex problems whereas classical computing is impossible because it requires expensive computing costs. Object detection and recognition is a task of computer vision, where research in this field aims to improve the ability of computer algorithms to produce interpretations of visual information. Humans easily analyze and describe the visual information received. However, unlike computer systems, they must learn and explore using machine learning from the visual information received to provide correct interpretations of visual information. This paper presents a systematic review of papers published from 2012 to 2024 to answer how far quantum object detection and recognition research has been conducted. The methodology of this review follows a systematic literature review such as the method proposed by Kitchenham et al. The selected primary studies amounted to 29 papers from four source digital libraries. The application of quantum algorithms is more often used to improve the performance of classical computing. The quantum model category consists of 3 types, namely pure quantum, hybrid classical-quantum, and quantum-inspired ML. Hybrid classical-quantum is the most discussed model and Quantum Convolutional Neural Network is the most frequently discussed algorithm or model in image classification from 2012 to 2024. Quantum algorithms show good results and can improve the performance of classical algorithms, although currently, the ability of quantum computing is not fully optimal because the development of quantum computers is still in the noisy intermediate-scale quantum era. However, with the current limited quantum computing capabilities, it can already outperform the capabilities of classical computing. Based on this, studies on quantum object detection and recognition need to be carried out so that when the full potential of quantum computing can be utilized, the user's capacity is competent.
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