Landslide inventory mapping (LIM) is an increasingly important research topic in remote sensing and natural hazards. Past studies achieve LIM mainly using on-screen interpretation of aerial photos, and little attention has been paid to developing more automated methods. In recent years, the use of multitemporal remote sensing images makes it possible to map landslides semi-automatically. Although numerous methods have been proposed, only a few methods are competent for some specific situations and there is large room for improvement in their degree of automation. For these reasons, a semi-automated approach is proposed for reliable and accurate LIM from bitemporal aerial orthophotos. Specifically, it consists of two principal steps: 1) chan...
In this work, a simple methodology is presented for processing high-resolution topographical data ov...
International audienceEarthquake is one of the dominant triggering factors of landslides. Given the ...
In the past, different approaches for automated landslide identification based on multispectral sate...
Landslide mapping (LM) is essential for hazard prevention, mitigation, and vulnerability assessment....
Landslide inventory mapping is essential for hazard assessment and mitigation. In most previous stud...
Landslide inventory maps (LIMs) show where landslides have occurred in an area, and provide informat...
Detecting landslides and monitoring their activity is of great relevance for disaster prevention, pr...
Detecting landslides and monitoring their activity is of great relevance for disaster prevention, pr...
The accurate and rapid identification of landslide region is the basis for emergency disaster proces...
Natural hazards include a wide range of high-impact phenomena that affect socioeconomic and natural ...
AbstractLandslides are present in all continents, and play an important role in the evolution of lan...
Remote sensing technologies have seen extraordinary improvements in both spatial resolution and accu...
Landslides are major and constantly changing threats to urban landscapes and infrastructure. It is e...
We describe a semi-automatic procedure for the classification of satellite imagery into landslide or...
Landslide identification is an increasingly important research topic in remote sensing and the study...
In this work, a simple methodology is presented for processing high-resolution topographical data ov...
International audienceEarthquake is one of the dominant triggering factors of landslides. Given the ...
In the past, different approaches for automated landslide identification based on multispectral sate...
Landslide mapping (LM) is essential for hazard prevention, mitigation, and vulnerability assessment....
Landslide inventory mapping is essential for hazard assessment and mitigation. In most previous stud...
Landslide inventory maps (LIMs) show where landslides have occurred in an area, and provide informat...
Detecting landslides and monitoring their activity is of great relevance for disaster prevention, pr...
Detecting landslides and monitoring their activity is of great relevance for disaster prevention, pr...
The accurate and rapid identification of landslide region is the basis for emergency disaster proces...
Natural hazards include a wide range of high-impact phenomena that affect socioeconomic and natural ...
AbstractLandslides are present in all continents, and play an important role in the evolution of lan...
Remote sensing technologies have seen extraordinary improvements in both spatial resolution and accu...
Landslides are major and constantly changing threats to urban landscapes and infrastructure. It is e...
We describe a semi-automatic procedure for the classification of satellite imagery into landslide or...
Landslide identification is an increasingly important research topic in remote sensing and the study...
In this work, a simple methodology is presented for processing high-resolution topographical data ov...
International audienceEarthquake is one of the dominant triggering factors of landslides. Given the ...
In the past, different approaches for automated landslide identification based on multispectral sate...