4.7 Article

Unsupervised Deep Learning for Landslide Detection from Multispectral Sentinel-2 Imagery

Journal

REMOTE SENSING
Volume 13, Issue 22, Pages -

Publisher

MDPI
DOI: 10.3390/rs13224698

Keywords

landslide mapping; remote sensing; unsupervised feature learning; convolutional auto-encoder (CAE); mini-batch K-means

Funding

  1. Institute of Advanced Research in Artificial Intelligence (IARAI) GmbH

Ask authors/readers for more resources

This paper introduces a new approach for landslide detection based on unsupervised deep learning model using convolutional auto-encoder to handle limited labeled data. The study utilized Sentinel-2 imagery and DEM, implemented MNF transformation, Huber reconstruction loss evaluation, and mini-batch K-means clustering, demonstrating the significance of deep features in landslide detection across different regions.
This paper proposes a new approach based on an unsupervised deep learning (DL) model for landslide detection. Recently, supervised DL models using convolutional neural networks (CNN) have been widely studied for landslide detection. Even though these models provide robust performance and reliable results, they depend highly on a large labeled dataset for their training step. As an alternative, in this paper, we developed an unsupervised learning model by employing a convolutional auto-encoder (CAE) to deal with the problem of limited labeled data for training. The CAE was used to learn and extract the abstract and high-level features without using training data. To assess the performance of the proposed approach, we used Sentinel-2 imagery and a digital elevation model (DEM) to map landslides in three different case studies in India, China, and Taiwan. Using minimum noise fraction (MNF) transformation, we reduced the multispectral dimension to three features containing more than 80% of scene information. Next, these features were stacked with slope data and NDVI as inputs to the CAE model. The Huber reconstruction loss was used to evaluate the inputs. We achieved reconstruction losses ranging from 0.10 to 0.147 for the MNF features, slope, and NDVI stack for all three study areas. The mini-batch K-means clustering method was used to cluster the features into two to five classes. To evaluate the impact of deep features on landslide detection, we first clustered a stack of MNF features, slope, and NDVI, then the same ones plus with the deep features. For all cases, clustering based on deep features provided the highest precision, recall, F1-score, and mean intersection over the union in landslide detection.

Authors

I am an author on this paper
Click your name to claim this paper and add it to your profile.

Reviews

Primary Rating

4.7
Not enough ratings

Secondary Ratings

Novelty
-
Significance
-
Scientific rigor
-
Rate this paper

Recommended

No Data Available
No Data Available