Efficiently implementing remote sensing image classification with high spatial resolution imagery can provide great significant value in land-use land-cover classification (LULC). The developments in remote sensing and deep learning technologies have facilitated the extraction of spatiotemporal information for LULC classification. Moreover, the diverse disciplines of science, including remote sensing, have utilised tremendous improvements in image classification by CNNs with Transfer Learning. In this study, instead of training CNNs from scratch, we make use of transfer learning to fine-tune pre-trained networks a) VGG16 and b) Wide Residual Networks (WRNs), by replacing the final layer with additional layers, for LULC classification with EuroSAT dataset. Further, the performance and computational time were compared and optimized with techniques like early stopping, gradient clipping, adaptive learning rates and data augmentation. With the proposed approaches we were able to address the limited-data problem and achieved very good accuracy. Comprehensive comparisons over the EuroSAT RGB version benchmark have successfully established that our method outperforms the previous best-stated results, with a significant improvement over the accuracy from 98.57% to 99.17%.
翻译:以高空间分辨率图像高效实施遥感图像分类可以为土地使用土地覆盖分类(LULC)提供巨大价值。遥感和深层学习技术的发展促进了提取用于LULC分类的时空信息。此外,各种科学学科,包括遥感,利用了有线电视新闻网与转移学习系统在图像分类方面的巨大改进。在这项研究中,我们不是从零开始培训CNN,而是将学习转移到微调的预培训网络(a)VGG16和(b)大型残余网络(WWNN),办法是用额外的层取代LULC分类的最后层,用EuroSAT数据集取代LULC。此外,业绩和计算时间与早期停止、梯度剪裁、适应性学习率和数据增强等技术进行了比较和优化。通过拟议的方法,我们得以解决有限的数据问题,并取得了非常准确性。对欧洲SAT RGB版本基准的全面比较成功地确定,我们的方法比先前的最佳结果要高得多,从98.57%提高到99.17%。