Institute of Industrial Science, The University of Tokyo, Chiba 277-8574, Japan.
Department of International Studies, The University of Tokyo, Chiba 277-8561, Japan.
Sensors (Basel). 2022 Aug 25;22(17):6412. doi: 10.3390/s22176412.
We proposed an automatic detection method of slope failure regions using a semantic segmentation method called Mask R-CNN based on a deep learning algorithm to improve the efficiency of damage assessment in the event of slope failure disaster. There is limited research on detecting landslides by deep learning, and the lack of training data is an important issue to be resolved, as aerial photographs are not taken with sufficient frequency during a disaster. This study attempts to use CutMix-based augmentation to improve detection accuracy. We also compare the detection results obtained by augmentation of multiple patterns. In the comparison of the not augmented data case, the recall increased by 0.186 in the case using the augmented data with the shape of the slope failure region maintained. When the image data was augmented while maintaining the shape of the slope failure region, the recall score indicated the low oversights in the prediction result is 0.701. This is an increase of 0.186 compared to the case where no augmentation was performed. In addition, the F1 score was 0.740, this also increased by 0.139, and high values were obtained for other indicators. Therefore, the method proposed in this study is greatly useful for grasping slope failure regions because of the detection with high accuracy, as described above.
我们提出了一种基于深度学习算法的语义分割方法——Mask R-CNN 自动检测边坡失稳区域的方法,以提高边坡失稳灾害发生时的损伤评估效率。目前,基于深度学习的滑坡检测研究还很有限,缺乏训练数据是一个亟待解决的重要问题,因为在灾害发生时,航拍照片的拍摄频率不够高。本研究试图使用基于 CutMix 的增强来提高检测精度。我们还比较了多种模式增强后的检测结果。在未增强数据的对比中,在保持边坡失稳区域形状的情况下,使用增强数据的召回率提高了 0.186。当保持边坡失稳区域形状的图像数据增强时,预测结果的低误报率为 0.701。与未进行增强的情况相比,这增加了 0.186。此外,F1 分数为 0.740,也增加了 0.139,其他指标也获得了较高的值。因此,由于具有上述高精度检测,本研究提出的方法对于掌握边坡失稳区域非常有用。