When approaching the semantic segmentation of overhead imagery in the decimeter spatial resolution range, successful strategies usually combine powerful methods to learn the visual appearance of the semantic classes (e.g. convolutional neural networks) with strategies for spatial regularization (e.g. graphical models such as conditional random fields). In this paper, we propose a method to learn evidence in the form of semantic class likelihoods, semantic boundaries across classes and shallow-to-deep visual features, each one modeled by a multi-task convolutional neural network architecture. We combine this bottom-up information with top-down spatial regularization encoded by a conditional random field model optimizing the label space acros...
Training convolutional neural networks (CNNs) for very high-resolution images requires a lar...
We propose a highly structured neural network architecture for semantic segmentation with an extreme...
This is the CITY-OSM dataset used in the journal publication "Learning Aerial Image Segmentation Fro...
When approaching the semantic segmentation of overhead imagery in the decimeter spatial resolution r...
This paper describes a deep learning approach to semantic segmentation of very high resolution (aeri...
This paper describes a deep learning approach to semantic segmentation of very high resolution (aeri...
This paper describes a deep learning approach to semantic segmentation of very high resolution (aeri...
Traditional approaches to structured semantic segmentation employ appearance-based classifiers to pr...
A new convolution neural network (CNN) architecture for semantic segmentation of high resolution aer...
In this paper, we address the deep semantic segmentation of aerial imagery based on multi-modal data...
Semantic segmentation is an important analysis task for the investigation of aerial imagery. Recentl...
This thesis presents a brief introduction to aerial road detection and semantic segmentation of imag...
Semantic segmentation is a critical problem for many remote sensing (RS) image applications. Benefit...
Semantic segmentation is a significant task in the field of Remote Sensing and Computer Vision. Deep...
Training convolutional neural networks (CNNs) for very high-resolution images requires a large quant...
Training convolutional neural networks (CNNs) for very high-resolution images requires a lar...
We propose a highly structured neural network architecture for semantic segmentation with an extreme...
This is the CITY-OSM dataset used in the journal publication "Learning Aerial Image Segmentation Fro...
When approaching the semantic segmentation of overhead imagery in the decimeter spatial resolution r...
This paper describes a deep learning approach to semantic segmentation of very high resolution (aeri...
This paper describes a deep learning approach to semantic segmentation of very high resolution (aeri...
This paper describes a deep learning approach to semantic segmentation of very high resolution (aeri...
Traditional approaches to structured semantic segmentation employ appearance-based classifiers to pr...
A new convolution neural network (CNN) architecture for semantic segmentation of high resolution aer...
In this paper, we address the deep semantic segmentation of aerial imagery based on multi-modal data...
Semantic segmentation is an important analysis task for the investigation of aerial imagery. Recentl...
This thesis presents a brief introduction to aerial road detection and semantic segmentation of imag...
Semantic segmentation is a critical problem for many remote sensing (RS) image applications. Benefit...
Semantic segmentation is a significant task in the field of Remote Sensing and Computer Vision. Deep...
Training convolutional neural networks (CNNs) for very high-resolution images requires a large quant...
Training convolutional neural networks (CNNs) for very high-resolution images requires a lar...
We propose a highly structured neural network architecture for semantic segmentation with an extreme...
This is the CITY-OSM dataset used in the journal publication "Learning Aerial Image Segmentation Fro...