International audienceNowadays, Satellite Image Time Series (SITS) are employed as input to derive land cover maps (LCM) to support decision makers in several application domains like agriculture and biodiversity. The generation of LCM largely relies on available ground truth (GT) data to calibrate supervised ma-chine learning models. Unfortunately, this data are not always accessible. In this scenario, the possibility to transfer a model learnt on a particular year (source domain) to another period of time (target domain) could be a valuable tool to deal with the previously mentioned restrictions. In this paper, we provide an experimental evaluation of recent Unsupervised Domain Adaptation (UDA) methods in the specific context of temporal ...
With a continuous increase in the number of Earth Observation satellites, leading to the development...
This paper presents an approach that aims to produce a Time-Series (TS) of consistent Land-Cover (LC...
Some of the first Earth Observation (EO) missions date back to the 1970s. Over the time, large data...
International audienceNowadays, satellite image time series (SITS) are commonly employed to derive l...
International audienceLand cover maps are a vital input variable in all types of environmental resea...
International audienceThe recent developments of deep learning models that capture the complex tempo...
International audienceVery High spatial Resolution (VHR) imagery is a standard in-put to derive fine...
This paper proposes a novel change-detection-driven transfer learning (TL) approach to update land-c...
The recent developments of deep learning models that capture complex temporal patterns of crop pheno...
Optical sensor time series images allow one to produce land cover maps at a large scale. The supervi...
This chapter revises the recent advances in the automatic classification of remote sensing (RS) imag...
In this paper, a new self-supervised strategy for learning meaningful representations of complex opt...
Nowadays, an ever increasing number of multi-temporal images is available, giving the possibility of...
This paper presents an approach that aims to produce a Time-Series (TS) of consistent Land-Cover (LC...
In this paper we describe our first-place solution to the discovery challenge on time series land co...
With a continuous increase in the number of Earth Observation satellites, leading to the development...
This paper presents an approach that aims to produce a Time-Series (TS) of consistent Land-Cover (LC...
Some of the first Earth Observation (EO) missions date back to the 1970s. Over the time, large data...
International audienceNowadays, satellite image time series (SITS) are commonly employed to derive l...
International audienceLand cover maps are a vital input variable in all types of environmental resea...
International audienceThe recent developments of deep learning models that capture the complex tempo...
International audienceVery High spatial Resolution (VHR) imagery is a standard in-put to derive fine...
This paper proposes a novel change-detection-driven transfer learning (TL) approach to update land-c...
The recent developments of deep learning models that capture complex temporal patterns of crop pheno...
Optical sensor time series images allow one to produce land cover maps at a large scale. The supervi...
This chapter revises the recent advances in the automatic classification of remote sensing (RS) imag...
In this paper, a new self-supervised strategy for learning meaningful representations of complex opt...
Nowadays, an ever increasing number of multi-temporal images is available, giving the possibility of...
This paper presents an approach that aims to produce a Time-Series (TS) of consistent Land-Cover (LC...
In this paper we describe our first-place solution to the discovery challenge on time series land co...
With a continuous increase in the number of Earth Observation satellites, leading to the development...
This paper presents an approach that aims to produce a Time-Series (TS) of consistent Land-Cover (LC...
Some of the first Earth Observation (EO) missions date back to the 1970s. Over the time, large data...