Landslides are destructive and recurrent natural disasters on steep slopes and represent a risk to lives and properties. Knowledge of relict landslides' location is vital to understand their mechanisms, update inventory maps and improve risk assessment. However, relict landslide mapping is complex in tropical regions covered with rainforest vegetation. A new CNN approach is proposed for semi-automatic detection of relict landslides, which uses a dataset generated by a k-means clustering algorithm and has a pre-training step. The weights computed in the pre-training are used to fine-tune the CNN training process. A comparison between the proposed and standard approaches is performed using CBERS-4A WPM images. Three CNNs for semantic segmentation are used (U-Net, FPN, Linknet) with two augmented datasets. A total of 42 combinations of CNNs are tested. Values of precision and recall were very similar between the combinations tested. Recall was higher than 75\% for every combination, but precision values were usually smaller than 20\%. False positives (FP) samples were addressed as the cause for these low precision values. Predictions of the proposed approach were more accurate and correctly detected more landslides. This work demonstrates that there are limitations for detecting relict landslides in areas covered with rainforest, mainly related to similarities between the spectral response of pastures and deforested areas with \textit{Gleichenella sp.} ferns, commonly used as an indicator of landslide scars.
翻译:山崩是陡坡上的破坏性和经常性的自然灾害,对生命和财产构成风险。对圣物滑坡地点的了解对于了解其机制、更新清单地图和改进风险评估至关重要。然而,在雨林植被覆盖的热带区域,遗物滑坡测绘工作十分复杂。建议采用新的CNN方法,对遗迹滑坡进行半自动检测,该方法使用K- means群集算法生成的数据集,并有一个培训前步骤。在培训前计算出的权重用于微调CNN培训过程。利用CBERS-4A WPM图像对拟议方法和标准方法进行比较。使用3个CNN(U-Net、FPN、Linknet)进行语义分解,并配有2个强化数据集。测试了总共42个CNN的组合。每组组合的精确值和回顾值都非常相似。每组使用的精确值高于75 ⁇,但精确值通常小于20{{}。假正值样本是这些低精确值的原因。使用3个CNMSN(U、FP)、3个CNN,用于语义分分解的调分解。这一方法的预测性,主要用来测量地标,并测量了红平地标区域。