Object-oriented analysis (OOA) has been demonstrated to produce more accurate results than pixel-based image processing. Studies carried out by previous researchers have shown how landslide inventories can be prepared from multispectral satellite images using OOA. However, panchromatic images are frequently the only data available after a landslide event. Furthermore, preparation of historical inventories relies on the analysis of satellite images and aerial photographs acquired over past few decades that are also mostly only available in black and white. In such cases the methodology developed using multispectral data cannot be used directly due to limited spectral information, in particular in near-infrared bands. In this paper we present...
Earth observation (EO) data are very useful for the detection of landslides after triggering events,...
The severity of the landslide hazard in Hong Kong has resulted in the establishment of a comprehensi...
Landslide inventory mapping (LIM) is an increasingly important research topic in remote sensing and ...
A comparative analysis of landslides detected by pixel-based and object-oriented analysis (OOA) meth...
Slope failures are among the most frequent disasters experienced by the Himalayan terrains of India ...
International audienceEarthquake is one of the dominant triggering factors of landslides. Given the ...
[[abstract]]The vast availability and improved quality of optical satellite data and digital elevati...
AbstractLandslides are present in all continents, and play an important role in the evolution of lan...
Landslides are destructive and recurrent natural disasters that cost annually significant social and...
In the past, different approaches for automated landslide identification based on multispectral sate...
Light Detection and Ranging (LiDAR) and its derivative products have become a powerful tool in lands...
AbstractThe increasing availability of very high resolution (VHR) remote sensing images has been lea...
Rainfall-induced landslides are a major threat in the hilly and gully regions of the Loess Plateau. ...
Advances in classification using multispectral remote sensing imagery have gained increasing attenti...
Availability of high-resolution optical imagery and advances in image processing technologies have s...
Earth observation (EO) data are very useful for the detection of landslides after triggering events,...
The severity of the landslide hazard in Hong Kong has resulted in the establishment of a comprehensi...
Landslide inventory mapping (LIM) is an increasingly important research topic in remote sensing and ...
A comparative analysis of landslides detected by pixel-based and object-oriented analysis (OOA) meth...
Slope failures are among the most frequent disasters experienced by the Himalayan terrains of India ...
International audienceEarthquake is one of the dominant triggering factors of landslides. Given the ...
[[abstract]]The vast availability and improved quality of optical satellite data and digital elevati...
AbstractLandslides are present in all continents, and play an important role in the evolution of lan...
Landslides are destructive and recurrent natural disasters that cost annually significant social and...
In the past, different approaches for automated landslide identification based on multispectral sate...
Light Detection and Ranging (LiDAR) and its derivative products have become a powerful tool in lands...
AbstractThe increasing availability of very high resolution (VHR) remote sensing images has been lea...
Rainfall-induced landslides are a major threat in the hilly and gully regions of the Loess Plateau. ...
Advances in classification using multispectral remote sensing imagery have gained increasing attenti...
Availability of high-resolution optical imagery and advances in image processing technologies have s...
Earth observation (EO) data are very useful for the detection of landslides after triggering events,...
The severity of the landslide hazard in Hong Kong has resulted in the establishment of a comprehensi...
Landslide inventory mapping (LIM) is an increasingly important research topic in remote sensing and ...