Deep learning for efficient high-resolution image processing: A systematic review

Albert Dede , Henry Nunoo-Mensah , Eric Tutu Tchao , Andrew Selasi Agbemenu , Prince Ebenezer Adjei , Francisca Adoma Acheampong , Jerry John Kponyo
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引用次数: 0

Abstract

High-resolution images are increasingly used in fields such as remote sensing, medical imaging, and agriculture, but they present significant computational challenges when processed with deep learning models. This paper provides a systematic review of deep learning techniques developed to improve the efficiency of high-resolution image processing. We investigate techniques like lightweight neural networks, vision transformers adapted for high-resolution inputs, and models using frequency-domain inputs based on 96 studies from 2018 to 2023. These techniques have many applications, from environmental monitoring and urban planning to disease diagnosis. We emphasize the advancements in efficient high-resolution deep learning models, discussing their performance in terms of accuracy, speed, and resource requirements. Key challenges, including the trade-off between processing efficiency and model accuracy, are analysed, and potential future research directions are proposed to address these issues.
用于高效高分辨率图像处理的深度学习:系统综述
高分辨率图像越来越多地用于遥感、医学成像和农业等领域,但当使用深度学习模型进行处理时,它们会带来重大的计算挑战。本文系统地回顾了深度学习技术的发展,以提高高分辨率图像处理的效率。基于2018年至2023年的96项研究,我们研究了轻量级神经网络、适用于高分辨率输入的视觉变压器以及使用频域输入的模型等技术。这些技术有许多应用,从环境监测和城市规划到疾病诊断。我们强调了高效高分辨率深度学习模型的进步,从准确性、速度和资源需求方面讨论了它们的性能。分析了处理效率和模型精度之间的权衡等关键挑战,并提出了解决这些问题的潜在未来研究方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
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