论文标题
探索大区域图自动化的卷积神经网络体系结构
Exploration of Convolutional Neural Network Architectures for Large Region Map Automation
论文作者
论文摘要
深度学习语义分割算法为自动生产土地使用和土地覆盖(LULC)地图提供了改进的框架,从而大大增加了地图产生的频率以及生产质量的一致性。在这项研究中,总共检查了28种不同的模型变化,以提高LULC图的准确性。使用Landsat 5/7或Landsat 8卫星图像进行实验,并带有北美土地变化监测系统标签。评估了各种CNN和扩展组合的性能,其中vggnet的输出步幅为4,而修改的U-NET体系结构则提供了最佳的结果。还提供了生成的LULC图的其他扩展分析。使用深层神经网络,这项工作的精度达到了曼尼托巴省南部的13个LULC类别的精度,代表NALCMS的结果比公开的结果提高了15.8%。基于感兴趣的较大区域,Landsat 8数据的较高辐射分辨率导致了更好的总体精度(88.04%),与Landsat 5/7(80.66%)相比,16个LULC类别比较。与先前发表的NALCMS结果相比,这代表总体准确性增长11.44%和4.06%,包括较大的土地面积和与其他已发表的LULC MAP Automation方法相比,该模型中纳入模型的LULC类别的数量更高。
Deep learning semantic segmentation algorithms have provided improved frameworks for the automated production of Land-Use and Land-Cover (LULC) maps, which significantly increases the frequency of map generation as well as consistency of production quality. In this research, a total of 28 different model variations were examined to improve the accuracy of LULC maps. The experiments were carried out using Landsat 5/7 or Landsat 8 satellite images with the North American Land Change Monitoring System labels. The performance of various CNNs and extension combinations were assessed, where VGGNet with an output stride of 4, and modified U-Net architecture provided the best results. Additional expanded analysis of the generated LULC maps was also provided. Using a deep neural network, this work achieved 92.4% accuracy for 13 LULC classes within southern Manitoba representing a 15.8% improvement over published results for the NALCMS. Based on the large regions of interest, higher radiometric resolution of Landsat 8 data resulted in better overall accuracies (88.04%) compare to Landsat 5/7 (80.66%) for 16 LULC classes. This represents an 11.44% and 4.06% increase in overall accuracy compared to previously published NALCMS results, including larger land area and higher number of LULC classes incorporated into the models compared to other published LULC map automation methods.