Object detection is crucial in aerial imagery analysis. Previous methods based on convolutional neural networks (CNNs) require large-scale labeled datasets for training to achieve significant success. However, the acquisition and manual annotation of such data is time-consuming and expensive. In this study, we present an original few-shot object detection (FSOD) method that focuses on detecting unseen objects in aerial imagery with limited labeled samples. Specifically, we revisited the multi-similarity network from deep metric learning and incorporated it into a faster region-CNN (R-CNN) architecture for FSOD, learning distinctive feature representations, and effectively improving the performance of unseen class samples. Furthermore, we pr...
Recently, approaches based on deep learning are quite prevalent in the area of remote sensing scene ...
Vehicle detection in aerial images is a crucial image processing step for many applications like scr...
This article proposes a novel subclass-based classifier based on convolutional neural networks (CNNs...
Recent years have witnessed rapid development and remarkable achievements on deep learning object de...
Few-shot object detection is a recently emerging branch in the field of computer vision. Recent rese...
In this paper, we deal with the problem of object detection on remote sensing images. Previous metho...
Accurate detection of objects in aerial images is an important task for many applications such as tr...
To date, few-shot object detection methods have received extensive attention in the field of remote ...
Target recognition based on deep learning relies on a large quantity of samples, but in some specifi...
Vehicle detection in aerial images is a crucial image processing step for many applications like scr...
Abstract Scene classification is a crucial research problem in remote sensing (RS) that has attracte...
Recently, deep learning-based object detection techniques have arisen alongside time-consuming train...
Airplane detection in remote sensing images remains a challenging problem due to the complexity of b...
Detecting vehicles in aerial images is an important task for many applications like traffic monitori...
Scene classification is a critical technology to solve the challenges of image search and image reco...
Recently, approaches based on deep learning are quite prevalent in the area of remote sensing scene ...
Vehicle detection in aerial images is a crucial image processing step for many applications like scr...
This article proposes a novel subclass-based classifier based on convolutional neural networks (CNNs...
Recent years have witnessed rapid development and remarkable achievements on deep learning object de...
Few-shot object detection is a recently emerging branch in the field of computer vision. Recent rese...
In this paper, we deal with the problem of object detection on remote sensing images. Previous metho...
Accurate detection of objects in aerial images is an important task for many applications such as tr...
To date, few-shot object detection methods have received extensive attention in the field of remote ...
Target recognition based on deep learning relies on a large quantity of samples, but in some specifi...
Vehicle detection in aerial images is a crucial image processing step for many applications like scr...
Abstract Scene classification is a crucial research problem in remote sensing (RS) that has attracte...
Recently, deep learning-based object detection techniques have arisen alongside time-consuming train...
Airplane detection in remote sensing images remains a challenging problem due to the complexity of b...
Detecting vehicles in aerial images is an important task for many applications like traffic monitori...
Scene classification is a critical technology to solve the challenges of image search and image reco...
Recently, approaches based on deep learning are quite prevalent in the area of remote sensing scene ...
Vehicle detection in aerial images is a crucial image processing step for many applications like scr...
This article proposes a novel subclass-based classifier based on convolutional neural networks (CNNs...