姜万冬, 席江波, 李振洪, 丁明涛, 杨立功, 谢大帅. 模拟困难样本的Mask R-CNN滑坡分割识别[J]. 武汉大学学报 ( 信息科学版), 2023, 48(12): 1931-1942. DOI: 10.13203/j.whugis20200692
引用本文: 姜万冬, 席江波, 李振洪, 丁明涛, 杨立功, 谢大帅. 模拟困难样本的Mask R-CNN滑坡分割识别[J]. 武汉大学学报 ( 信息科学版), 2023, 48(12): 1931-1942. DOI: 10.13203/j.whugis20200692
JIANG Wandong, XI Jiangbo, LI Zhenhong, DING Mingtao, YANG Ligong, XIE Dashuai. Landslide Detection and Segmentation Using Mask R-CNN with Simulated Hard Samples[J]. Geomatics and Information Science of Wuhan University, 2023, 48(12): 1931-1942. DOI: 10.13203/j.whugis20200692
Citation: JIANG Wandong, XI Jiangbo, LI Zhenhong, DING Mingtao, YANG Ligong, XIE Dashuai. Landslide Detection and Segmentation Using Mask R-CNN with Simulated Hard Samples[J]. Geomatics and Information Science of Wuhan University, 2023, 48(12): 1931-1942. DOI: 10.13203/j.whugis20200692

模拟困难样本的Mask R-CNN滑坡分割识别

Landslide Detection and Segmentation Using Mask R-CNN with Simulated Hard Samples

  • 摘要: 随着人工智能的发展,利用高分影像进行滑坡等地质灾害识别逐渐成为研究热点。滑坡目视解译需依赖专家经验,传统滑坡自动识别方法又易将滑坡和裸地、道路等地物混淆。针对以上问题,提出了基于模拟困难样本的掩模区域卷积神经网络(mask region-based convolutional neural network,Mask R-CNN)滑坡提取方法。在现有样本的基础上,利用滑坡的形状、颜色、纹理等特征模拟更为复杂的滑坡背景进行困难样本挖掘增强,并将得到的困难样本输入Mask R-CNN网络进行滑坡精细检测分割。在实际研究区域中,由于滑坡数量有限,因此在频率域进行小样本学习,在减少数据需求的同时,保证分割识别的准确度。中国贵州省毕节市的实验结果表明,基于模拟困难样本的Mask R-CNN方法检测精度为94.0%,像素分割平均准确率为90.3%,可实现低虚警率下的高性能检测分割;采用频率域学习,在一半数据输入量的情况下,模型检测精度仍可得到提升。利用中国甘肃省天水地区的滑坡区域进行实际验证,进一步证明了所提方法的有效性。

     

    Abstract:
    Objectives With the advance in artificial intelligence, using high-resolution images to detect geological hazards has gradually become a research hotspot. Visual interpretation of landslides heavily relies on expert experience, and conventional automatic landslide detection approaches are sensitive to the presence of bare land, roads and other ground objects.
    Methods To address these, a mask region-based convolutional neural network(Mask R-CNN) with simulated hard samples is presented for landslide detection and segmentation. Based on existing landslide samples, hard landslide samples are simulated by utilizing the shapes, colors, textures, and other characteristics of landslides to make each of the samples with a more complicated background. The original imagery and simulated hard samples are then fed into the Mask R-CNN for landslide detection and segmentation. Since the number of landslides is often limited in reality, small sample learning in the frequency domain is also presented to reduce the number of input samples while ensuring the accuracy of detection and segmentation.
    Results The experimental results in Bijie City, Guizhou Province, show that the detection and the average pixel segmentation accuracies of the proposed Mask R-CNN method with simulated hard samples are 94.0% and 90.3%, respectively. It is seen that the proposed method has high performance on landslide detection and segmentation with low false alarm rates. In addition, the performance of the proposed small-sample-based learning method in frequency domain can be improved even with a half of the data input.
    Conclusions The effectiveness of the proposed Mask R-CNN method is further proved by the successful detection of Tianshui landslides in Gansu Province, China.

     

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