遥感增强转移学习法用于农业损害和变化检测:深度学习视角

IF 4.3 3区 材料科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC ACS Applied Electronic Materials Pub Date : 2024-03-20 DOI:10.1016/j.bdr.2024.100449
Zehua Liu , Jiuhao Li , Mahmood Ashraf , M.S. Syam , Muhammad Asif , Emad Mahrous Awwad , Muna Al-Razgan , Uzair Aslam Bhatti
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引用次数: 0

摘要

随着科学技术的不断进步,全世界人民的安全意识日益增强。野火、地震和洪水等自然灾害对我们赖以生存的地球的生命和财产构成了持续的威胁。虽然我们不可能预防或完全避免这些灾难,但灾后快速识别受灾地区并及时进行损失评估,可大大有助于制定有效的救援策略,最终挽救更多生命。本文深入探讨了迁移学习在卫星图像损害评估中的应用--这种方法涉及迁移以前获得的知识,以增强模型对新任务的适应性。鉴于用于卫星图像分析的数据集有限,迁移学习被证明是一种有效的方法。具体来说,本研究提出了一种基于 YOLOv5 的迁移学习方法,用于卫星图像损伤评估。首先,使用大量自然图像数据集训练一个通用卷积神经网络模型。随后,该模型的早期层被冻结,而后期层则接受训练以适应卫星图像数据。然后再进行微调,以进一步提高模型的整体性能。结果表明,这种方法在卫星图像损坏评估方面具有很高的准确率。此外,与传统的深度学习方法相比,所提出的方法有效地利用了预训练模型的知识,从而降低了数据依赖性。此外,该方法在不同的任务和数据集上都表现出了强大的泛化能力,凸显了其促进跨领域迁移学习的潜力。
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Remote sensing-enhanced transfer learning approach for agricultural damage and change detection: A deep learning perspective

With the continuous advancement of science and technology, there has been a growing awareness of safety among people worldwide. Natural disasters such as wildfires, earthquakes, and floods pose persistent threats to both lives and property on our planet, which serves as our fundamental habitat. While it is impossible to prevent or entirely avert these calamities, rapid identification of affected areas and prompt damage assessment post-disaster can significantly aid in the formulation of effective rescue strategies, ultimately saving more lives. This article delves into the application of transfer learning in satellite image damage assessment—a methodology that involves transferring previously acquired knowledge to enhance a model's adaptability to new tasks. Given the limited availability of datasets for satellite image analysis, transfer learning proves to be an effective approach. Specifically, the study proposes a transfer learning method based on YOLOv5 for satellite image damage assessment. Initially, a general convolutional neural network model is trained using a substantial dataset of natural images. Subsequently, the early layers of this model are frozen, while the later layers undergo training to adapt to satellite image data. Fine-tuning is then employed to further enhance the overall model performance. The results demonstrate that this approach yields a high accuracy rate in satellite image damage assessment. Moreover, compared to conventional deep learning methods, the proposed method effectively leverages pre-trained models' knowledge, thereby reducing data dependency. Additionally, it displays robust generalization capabilities across diverse tasks and datasets, underscoring its potential for facilitating transfer learning across various domains.

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来源期刊
CiteScore
7.20
自引率
4.30%
发文量
567
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