移动边缘云计算中基于深度学习的脑肿瘤分类任务卸载性能分析

Q3 Engineering
R. Yamuna, Rajani Rajalingam, M. Rani
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引用次数: 0

摘要

脑肿瘤的日益流行需要准确有效的识别和分类方法。虽然深度学习(DL)模型在这一领域显示出了希望,但在资源受限的移动设备上部署它们时,它们的计算需求带来了挑战。本文研究了移动边缘计算(MEC)和任务卸载的潜力,以提高深度学习模型在脑肿瘤分类中的性能。考虑到移动设备和边缘服务器的计算能力以及与任务卸载相关的通信成本,开发了一个全面的框架。分析了影响任务卸载决策的各种因素,包括模型大小、可用资源和网络条件。结果表明,任务卸载有效地减少了处理DL模型用于脑肿瘤分类所需的时间和精力,同时保持了准确性。该研究强调在决定任务卸载时需要平衡计算成本和通信成本。这些发现对于开发用于医疗应用的高效移动边缘计算系统具有重要意义。利用MEC和Task Offloading,医疗保健专业人员可以在资源受限的移动设备上利用DL模型对脑肿瘤进行分类,从而确保准确和及时的诊断。这些技术进步为未来更容易获得和更有效的医疗解决方案铺平了道路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Performance Analysis of Task Offloading in Mobile Edge Cloud Computing for Brain Tumor Classification Using Deep Learning
The increasing prevalence of brain tumors necessitates accurate and efficient methods for their identification and classification. While deep learning (DL) models have shown promise in this domain, their computational demands pose challenges when deploying them on resource-constrained mobile devices. This paper investigates the potential of Mobile Edge Computing (MEC) and Task Offloading to improve the performance of DL models for brain tumor classification. A comprehensive framework was developed, considering the computational capabilities of mobile devices and edge servers, as well as communication costs associated with task offloading. Various factors influencing task offloading decisions were analyzed, including model size, available resources, and network conditions. Results demonstrate that task offloading effectively reduces the time and energy required to process DL models for brain tumor classification, while maintaining accuracy. The study emphasizes the need to balance computation and communication costs when deciding on task offloading. These findings have significant implications for the development of efficient mobile edge computing systems for medical applications. Leveraging MEC and Task Offloading enables healthcare professionals to utilize DL models for brain tumor classification on resource-constrained mobile devices, ensuring accurate and timely diagnoses. These technological advancements pave the way for more accessible and efficient medical solutions in the future.
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CiteScore
1.50
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