International audienceThis article tackles the problem of detecting small objects in satellite or aerial remote sensing images by relying on super-resolution to increase image spatial resolution, thus the size and details of objects to be detected. We show how to improve the super-resolution framework starting from the learning of a generative adversarial network (GAN) based on residual blocks and then its integration into a cycle model. Furthermore, by adding to the framework an auxiliary network tailored for object detection, we considerably improve the learning and the quality of our final super-resolution architecture, and more importantly increase the object detection performance. Besides the improvement dedicated to the network archit...
One common issue of object detection in aerial imagery is the small size of objects in proportion to...
International audienceThe low resolution of remote sensing images often limits the land cover classi...
Despite the promising performance on benchmark datasets that deep convolutional neural networks have...
International audienceThis article tackles the problem of detecting small objects in satellite or ae...
Owing to the relatively small size of vehicles in remote sensing images, lacking sufficient detailed...
Super-resolution (SR) brings an excellent opportunity to improve a wide range of different remote se...
Recently, the number of satellite imaging sensors deployed in space has experienced a considerable i...
Abstract Detecting small objects are difficult because of their poor‐quality appearance and small si...
The current trend in remote sensing image superresolution (SR) is to use supervised deep learning mo...
Sentinel-2 satellites can provide free optical remote-sensing images with a spatial resolution of up...
Deep learning has recently attracted extensive attention and developed significantly in remote sensi...
With the development of science and technology, neural networks, as an effective tool in image proce...
Aimed at the problems of small object detection in high resolution remote sensing images, such as di...
The current trend in remote sensing image superresolution (SR) is to use supervised deep learning mo...
Arbeit an der Bibliothek noch nicht eingelangt - Daten nicht geprüftAbweichender Titel nach Übersetz...
One common issue of object detection in aerial imagery is the small size of objects in proportion to...
International audienceThe low resolution of remote sensing images often limits the land cover classi...
Despite the promising performance on benchmark datasets that deep convolutional neural networks have...
International audienceThis article tackles the problem of detecting small objects in satellite or ae...
Owing to the relatively small size of vehicles in remote sensing images, lacking sufficient detailed...
Super-resolution (SR) brings an excellent opportunity to improve a wide range of different remote se...
Recently, the number of satellite imaging sensors deployed in space has experienced a considerable i...
Abstract Detecting small objects are difficult because of their poor‐quality appearance and small si...
The current trend in remote sensing image superresolution (SR) is to use supervised deep learning mo...
Sentinel-2 satellites can provide free optical remote-sensing images with a spatial resolution of up...
Deep learning has recently attracted extensive attention and developed significantly in remote sensi...
With the development of science and technology, neural networks, as an effective tool in image proce...
Aimed at the problems of small object detection in high resolution remote sensing images, such as di...
The current trend in remote sensing image superresolution (SR) is to use supervised deep learning mo...
Arbeit an der Bibliothek noch nicht eingelangt - Daten nicht geprüftAbweichender Titel nach Übersetz...
One common issue of object detection in aerial imagery is the small size of objects in proportion to...
International audienceThe low resolution of remote sensing images often limits the land cover classi...
Despite the promising performance on benchmark datasets that deep convolutional neural networks have...