Land cover change (LCC) is typically characterized by infrequent changes over space and time. Data-driven methods such as deep learning (DL) approaches have proven effective in many domains for predictive and classification tasks. When applied to geospatial data, sequential DL methods such as long short-term memory (LSTM) have yielded promising results in remote sensing and GIScience studies. However, the characteristics of geospatial datasets selected for use with these methods have demonstrated important implications on method performance. The number of data layers available, the rate of LCC, and inherent errors resulting from classification procedures are expected to influence model performance. Yet, it is unknown how these can affect co...
Land Use and Land Cover (LULC) monitoring is crucial for global transformation, sustainable land con...
The use of deep learning (DL) approaches for the analysis of remote sensing (RS) data is rapidly inc...
In this article, we present a novel hybrid framework, which integrates spatial–temporal semantic seg...
Land cover change (LCC) can be viewed as dynamic complex systems which require relevant relationship...
An open problem impeding the use of deep learning (DL) models for forecasting land cover (LC) change...
Land cover change (LCC) studies are increasingly using deep learning (DL) modeling techniques. Past ...
The ability to accurately classify land cover in periods before appropriate training and validation ...
International audienceNowadays, modern earth observation programs produce huge volumes of satellite ...
Current Earth observation systems generate massive amounts of satellite image time series to keep tr...
Land use change (LUC) is a dynamic process that significantly affects the environment, and various a...
Land cover maps are significant in assisting agricultural decision making. However, the existing wor...
This paper presents an approach that aims to produce a Time-Series (TS) of consistent Land-Cover (LC...
This paper presents an approach that aims to produce a Time-Series (TS) of consistent Land-Cover (LC...
Land cover datasets are generally produced from satellite imagery using state-of-the-art model-based...
Land cover and its change are crucial for many environmental applications. This study focuses on the...
Land Use and Land Cover (LULC) monitoring is crucial for global transformation, sustainable land con...
The use of deep learning (DL) approaches for the analysis of remote sensing (RS) data is rapidly inc...
In this article, we present a novel hybrid framework, which integrates spatial–temporal semantic seg...
Land cover change (LCC) can be viewed as dynamic complex systems which require relevant relationship...
An open problem impeding the use of deep learning (DL) models for forecasting land cover (LC) change...
Land cover change (LCC) studies are increasingly using deep learning (DL) modeling techniques. Past ...
The ability to accurately classify land cover in periods before appropriate training and validation ...
International audienceNowadays, modern earth observation programs produce huge volumes of satellite ...
Current Earth observation systems generate massive amounts of satellite image time series to keep tr...
Land use change (LUC) is a dynamic process that significantly affects the environment, and various a...
Land cover maps are significant in assisting agricultural decision making. However, the existing wor...
This paper presents an approach that aims to produce a Time-Series (TS) of consistent Land-Cover (LC...
This paper presents an approach that aims to produce a Time-Series (TS) of consistent Land-Cover (LC...
Land cover datasets are generally produced from satellite imagery using state-of-the-art model-based...
Land cover and its change are crucial for many environmental applications. This study focuses on the...
Land Use and Land Cover (LULC) monitoring is crucial for global transformation, sustainable land con...
The use of deep learning (DL) approaches for the analysis of remote sensing (RS) data is rapidly inc...
In this article, we present a novel hybrid framework, which integrates spatial–temporal semantic seg...