International audienceObject detection from aerial and satellite remote sensing images has been an active research topic over the past decade. Thanks to the increase in computational resources and data availability, deep learning-based object detection methods have achieved numerous successes in computer vision, and more recently in remote sensing. However, the ability of current detectors to deal with (very) small objects still remains limited. In particular, the fast detection of small objects from a large observed scene is still an open question. In this work, we address this challenge and introduce an enhanced one-stage deep learning-based detection model, called You Only Look Once (YOLO)-fine, which is based on the structure of YOLOv3....
The improved YOLOv8 model (DCN_C2f+SC_SA+YOLOv8, hereinafter referred to...
Few-shot object detection is a recently emerging branch in the field of computer vision. Recent rese...
To address the problems of tiny objects and high resolution of object detection in remote sensing im...
International audienceObject detection from aerial and satellite remote sensing images has been an a...
International audienceObject detection from aerial and satellite remote sensing images has been an a...
International audienceObject detection from aerial and satellite remote sensing images has been an a...
International audienceObject detection from aerial and satellite remote sensing images has been an a...
International audienceObject detection from aerial and satellite remote sensing images has been an a...
Aerial remote sensing image object detection, based on deep learning, is of great significance in ge...
In view of the existence of remote sensing images with large variations in spatial resolution, small...
In this paper, we deal with the problem of object detection on remote sensing images. Previous metho...
Recent years have witnessed rapid development and remarkable achievements on deep learning object de...
Object detection in high resolution remote sensing images is a fundamental and challenging problem i...
In unmanned aerial vehicle photographs, object detection algorithms encounter challenges in enhancin...
The identification of some specific targets in remote sensing images is still quite challenging desp...
The improved YOLOv8 model (DCN_C2f+SC_SA+YOLOv8, hereinafter referred to...
Few-shot object detection is a recently emerging branch in the field of computer vision. Recent rese...
To address the problems of tiny objects and high resolution of object detection in remote sensing im...
International audienceObject detection from aerial and satellite remote sensing images has been an a...
International audienceObject detection from aerial and satellite remote sensing images has been an a...
International audienceObject detection from aerial and satellite remote sensing images has been an a...
International audienceObject detection from aerial and satellite remote sensing images has been an a...
International audienceObject detection from aerial and satellite remote sensing images has been an a...
Aerial remote sensing image object detection, based on deep learning, is of great significance in ge...
In view of the existence of remote sensing images with large variations in spatial resolution, small...
In this paper, we deal with the problem of object detection on remote sensing images. Previous metho...
Recent years have witnessed rapid development and remarkable achievements on deep learning object de...
Object detection in high resolution remote sensing images is a fundamental and challenging problem i...
In unmanned aerial vehicle photographs, object detection algorithms encounter challenges in enhancin...
The identification of some specific targets in remote sensing images is still quite challenging desp...
The improved YOLOv8 model (DCN_C2f+SC_SA+YOLOv8, hereinafter referred to...
Few-shot object detection is a recently emerging branch in the field of computer vision. Recent rese...
To address the problems of tiny objects and high resolution of object detection in remote sensing im...