Semantic segmentation of high-resolution aerial images is of great importance in certain fields, but the increasing spatial resolution brings large intra-class variance and small inter-class differences that can lead to classification ambiguities. Based on high-level contextual features, the deep convolutional neural network (DCNN) is an effective method to deal with semantic segmentation of high-resolution aerial imagery. In this work, a novel dense pyramid network (DPN) is proposed for semantic segmentation. The network starts with group convolutions to deal with multi-sensor data in channel wise to extract feature maps of each channel separately; by doing so, more information from each channel can be preserved. This process is followed b...
Building extraction from aerial images has several applications in problems such as urban planning, ...
Semantic segmentation is one of the significant tasks in understanding aerial images with high spati...
As remote sensing images have complex backgrounds and varying object sizes, their semantic segmentat...
Semantic segmentation of high-resolution aerial images is of great importance in certain fields, but...
In this paper, we address the semantic segmentation of aerial imagery based on the use of multi-moda...
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...
The recent applications of fully convolutional networks (FCNs) have shown to improve the semantic se...
A new convolution neural network (CNN) architecture for semantic segmentation of high resolution aer...
Semantic labeling for high resolution aerial images is a fundamental and necessary task in remote se...
The thriving development of earth observation technology makes more and more high-resolution remote-...
In this paper, we address the deep semantic segmentation of aerial imagery based on multi-modal data...
Deep learning (DL) is currently the dominant approach to image classification and segmentation, but ...
Semantic segmentation is a fundamental task in remote sensing image processing. The large appearance...
Building extraction from aerial images has several applications in problems such as urban planning, ...
Semantic segmentation is one of the significant tasks in understanding aerial images with high spati...
As remote sensing images have complex backgrounds and varying object sizes, their semantic segmentat...
Semantic segmentation of high-resolution aerial images is of great importance in certain fields, but...
In this paper, we address the semantic segmentation of aerial imagery based on the use of multi-moda...
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...
The recent applications of fully convolutional networks (FCNs) have shown to improve the semantic se...
A new convolution neural network (CNN) architecture for semantic segmentation of high resolution aer...
Semantic labeling for high resolution aerial images is a fundamental and necessary task in remote se...
The thriving development of earth observation technology makes more and more high-resolution remote-...
In this paper, we address the deep semantic segmentation of aerial imagery based on multi-modal data...
Deep learning (DL) is currently the dominant approach to image classification and segmentation, but ...
Semantic segmentation is a fundamental task in remote sensing image processing. The large appearance...
Building extraction from aerial images has several applications in problems such as urban planning, ...
Semantic segmentation is one of the significant tasks in understanding aerial images with high spati...
As remote sensing images have complex backgrounds and varying object sizes, their semantic segmentat...