This study investigates the application of iterative sparse annotations for semantic segmentation in remote-sensing imagery, focusing on minimizing the laborious and expensive data labeling process. By leveraging Geographic Information Systems (GIS), we implemented circular polygon shapefiles to label portions of each class, attributing a value of -1 outside these polygons. The model training used the simplified BSB Aerial Dataset with eight classes. The semantic segmentation model was U-Net architecture with the Efficient-net-B7 backbone and a modified cross-entropy loss function. Our results showed promising improvement, particularly in error-prone classes, with the iterative addition of more samples. This approach suggests a quicker meth...
Semantic segmentation consists of the generation of a categorical map, given an image in which each ...
Weakly Supervised Semantic Segmentation (WSSS) with only image-level labels reduces the annotation b...
This paper studies the problem of training a semantic segmentation neural network with weak annotati...
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...
Existing deep learning-based remote sensing images semantic segmentation methods require large-scale...
International audienceThis paper explores different aspects of semantic segmentation of remote sensi...
Semantic segmentation is a critical problem for many remote sensing (RS) image applications. Benefit...
Transfer learning is a powerful way to adapt existing deep learning models to new emerging use-cases...
With the development of deep learning, the performance of image semantic segmentation in remote sens...
When approaching the semantic segmentation of overhead imagery in the decimeter spatial resolution r...
International audienceThe development of semi-supervised learning techniques is essential to enhance...
Scene understanding of satellite and aerial images is a pivotal task in various remote sensing (RS) ...
Semantic segmentation requires methods capable of learning high-level features while dealing with la...
Scene understanding of satellite and aerial images is a pivotal task in various remote sensing (RS) ...
Semantic segmentation consists of the generation of a categorical map, given an image in which each ...
Weakly Supervised Semantic Segmentation (WSSS) with only image-level labels reduces the annotation b...
This paper studies the problem of training a semantic segmentation neural network with weak annotati...
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...
Existing deep learning-based remote sensing images semantic segmentation methods require large-scale...
International audienceThis paper explores different aspects of semantic segmentation of remote sensi...
Semantic segmentation is a critical problem for many remote sensing (RS) image applications. Benefit...
Transfer learning is a powerful way to adapt existing deep learning models to new emerging use-cases...
With the development of deep learning, the performance of image semantic segmentation in remote sens...
When approaching the semantic segmentation of overhead imagery in the decimeter spatial resolution r...
International audienceThe development of semi-supervised learning techniques is essential to enhance...
Scene understanding of satellite and aerial images is a pivotal task in various remote sensing (RS) ...
Semantic segmentation requires methods capable of learning high-level features while dealing with la...
Scene understanding of satellite and aerial images is a pivotal task in various remote sensing (RS) ...
Semantic segmentation consists of the generation of a categorical map, given an image in which each ...
Weakly Supervised Semantic Segmentation (WSSS) with only image-level labels reduces the annotation b...
This paper studies the problem of training a semantic segmentation neural network with weak annotati...