With the development of convolutional neural networks (CNNs), the semantic understanding of remote sensing (RS) scenes has been significantly improved based on their prominent feature encoding capabilities. While many existing deep-learning models focus on designing different architectures, only a few works in the RS field have focused on investigating the performance of the learned feature embeddings and the associated metric space. In particular, two main loss functions have been exploited: the contrastive and the triplet loss. However, the straightforward application of these techniques to RS images may not be optimal in order to capture their neighborhood structures in the metric space due to the insufficient sampling of image pairs or ...
Learning the similarity between remote sensing (RS) images forms the foundation for content-based RS...
Most deep metric learning-based image characterization methods exploit supervised information to mod...
Traditional methods focus on low-level handcrafted features representations and it is difficult to d...
Deep metric learning has recently received special attention in the field of remote sensing (RS) sce...
Convolutional neural networks (CNNs) have achieved great success when characterizing remote sensing ...
Recently, many deep learning-based methods have been developed for solving remote sensing (RS) scene...
Deep learning methods, especially convolutional neural networks (CNNs), have shown remarkable abilit...
State-of-the-art remote sensing scene classification methods employ different Convolutional Neural N...
The spatial distribution of remote-sensing scene images is highly complex in character, so how to ex...
Scene classification relying on images is essential in many systems and applications related to remo...
Ponencia presentada en: IEEE International Symposium on Geoscience and Remote Sensing (IGARSS) 2021,...
Abstract Due to the rapid development of satellite technology, high‐spatial‐resolution remote sensin...
This is the author accepted manuscript. The final version is available from Taylor & Francis via the...
Remote sensing using overhead imagery has critical impact to the way we understand our environment a...
Remote sensing using overhead imagery has critical impact to the way we understand our environment a...
Learning the similarity between remote sensing (RS) images forms the foundation for content-based RS...
Most deep metric learning-based image characterization methods exploit supervised information to mod...
Traditional methods focus on low-level handcrafted features representations and it is difficult to d...
Deep metric learning has recently received special attention in the field of remote sensing (RS) sce...
Convolutional neural networks (CNNs) have achieved great success when characterizing remote sensing ...
Recently, many deep learning-based methods have been developed for solving remote sensing (RS) scene...
Deep learning methods, especially convolutional neural networks (CNNs), have shown remarkable abilit...
State-of-the-art remote sensing scene classification methods employ different Convolutional Neural N...
The spatial distribution of remote-sensing scene images is highly complex in character, so how to ex...
Scene classification relying on images is essential in many systems and applications related to remo...
Ponencia presentada en: IEEE International Symposium on Geoscience and Remote Sensing (IGARSS) 2021,...
Abstract Due to the rapid development of satellite technology, high‐spatial‐resolution remote sensin...
This is the author accepted manuscript. The final version is available from Taylor & Francis via the...
Remote sensing using overhead imagery has critical impact to the way we understand our environment a...
Remote sensing using overhead imagery has critical impact to the way we understand our environment a...
Learning the similarity between remote sensing (RS) images forms the foundation for content-based RS...
Most deep metric learning-based image characterization methods exploit supervised information to mod...
Traditional methods focus on low-level handcrafted features representations and it is difficult to d...