基于不同深度学习模型的自然灾害图像分类

Kibitok Abraham, M. Abdelwahab, M. Abo-Zahhad
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引用次数: 0

摘要

自然灾害通过野火、飓风、地震和洪水继续影响着世界。摄影的出现为我们提供了灾难如何发生及其影响的宝贵图像。许多深度学习模型已经被开发出来对图像进行分类。然而,自然灾害的分类仍然滞后。通过迁移学习,对现有的11个深度学习模型和2个优化器进行了适应,并在基于自然灾害的图像上进行了分析和测试。我们探讨了数据增强对深度学习模型性能的影响。实验结果表明,ResNet-50与SGDM优化器相结合,准确率达到98.6%。然而,与所有采用的深度学习模型相比,AlexNet在4109秒内收敛得更快。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Image Classification of Natural Disasters Using Different Deep Learning Models
Natural disasters continue to affect the world through wildfires, cyclones, earthquakes, and floods. The advent of photography has provided us with valuable images of how disasters happen and their impact. Many deep-learning models have been developed to classify images. However, the classification of natural disasters still lags. Through transfer learning, eleven existing deep learning models and two optimizers were adapted, analyzed and tested on images based on natural disasters. We explore the impact of data augmentation on deep learning model performance. Based on experimental results, ResNet-50 coupled with SGDM optimizer achieved an accuracy of 98.6%. However, AlexNet converge faster in 4109 seconds, compared to all adopted deep learning models.
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