International audienceFaults form dense, complex multi‐scale networks generally featuring a master fault and myriads of smaller‐scale faults and fractures off its trace, often referred to as damage. Quantification of the architecture of these complex networks is critical to understanding fault and earthquake mechanics. Commonly, faults are mapped manually in the field or from optical images and topographic data through the recognition of the specific curvilinear traces they form at the ground surface. However, manual mapping is time‐consuming, which limits our capacity to produce complete representations and measurements of the fault networks. To overcome this problem, we have adopted a machine learning approach, namely a U‐Net Convolutiona...
International audienceWe develop a novel method based on Deep Convolutional Networks (DCN) to automa...
Investigating post-earthquake surface ruptures is important for understanding the tectonics of seism...
International audienceWe develop a novel method based on Deep Convolutional Networks (DCN) to automa...
International audienceFaults form dense, complex multi‐scale networks generally featuring a master f...
International audienceFaults form dense, complex multi‐scale networks generally featuring a master f...
International audienceFaults form dense, complex multi‐scale networks generally featuring a master f...
International audienceIdentifying and mapping fractures and faults are important in geosciences, esp...
International audienceIdentifying and mapping fractures and faults are important in geosciences, esp...
International audienceIdentifying and mapping fractures and faults are important in geosciences, esp...
presented at 2020 AGU Fall MeetingTectonic faults are the source of earthquakes. They commonly form ...
presented at 2020 AGU Fall MeetingTectonic faults are the source of earthquakes. They commonly form ...
International audienceIdentifying and mapping fractures and faults are important in geosciences, esp...
The identification and characterization of faults is an important process that provides necessary kn...
International audienceWe develop a novel method based on Deep Convolutional Networks (DCN) to automa...
International audienceWe develop a novel method based on Deep Convolutional Networks (DCN) to automa...
International audienceWe develop a novel method based on Deep Convolutional Networks (DCN) to automa...
Investigating post-earthquake surface ruptures is important for understanding the tectonics of seism...
International audienceWe develop a novel method based on Deep Convolutional Networks (DCN) to automa...
International audienceFaults form dense, complex multi‐scale networks generally featuring a master f...
International audienceFaults form dense, complex multi‐scale networks generally featuring a master f...
International audienceFaults form dense, complex multi‐scale networks generally featuring a master f...
International audienceIdentifying and mapping fractures and faults are important in geosciences, esp...
International audienceIdentifying and mapping fractures and faults are important in geosciences, esp...
International audienceIdentifying and mapping fractures and faults are important in geosciences, esp...
presented at 2020 AGU Fall MeetingTectonic faults are the source of earthquakes. They commonly form ...
presented at 2020 AGU Fall MeetingTectonic faults are the source of earthquakes. They commonly form ...
International audienceIdentifying and mapping fractures and faults are important in geosciences, esp...
The identification and characterization of faults is an important process that provides necessary kn...
International audienceWe develop a novel method based on Deep Convolutional Networks (DCN) to automa...
International audienceWe develop a novel method based on Deep Convolutional Networks (DCN) to automa...
International audienceWe develop a novel method based on Deep Convolutional Networks (DCN) to automa...
Investigating post-earthquake surface ruptures is important for understanding the tectonics of seism...
International audienceWe develop a novel method based on Deep Convolutional Networks (DCN) to automa...