With the development of computer vision, attention mechanisms have been widely studied. Although the introduction of an attention module into a network model can help to improve classification performance on remote sensing scene images, the direct introduction of an attention module can increase the number of model parameters and amount of calculation, resulting in slower model operations. To solve this problem, we carried out the following work. First, a channel attention module and spatial attention module were constructed. The input features were enhanced through channel attention and spatial attention separately, and the features recalibrated by the attention modules were fused to obtain the features with hybrid attention. Then, to redu...
Semantic-level land-use scene classification is a challenging problem, in which deep learning method...
Abstract Scene classification for remote sensing is a popular topic, and many recent convolutional n...
Deep convolutional neural networks (DCNNs) are driving progress in object detection of high-resoluti...
The remote sensing scene images classification has been of great value to civil and military fields....
The classification of remote sensing scenes is always a challenging task due to the large range of v...
With the development of remote sensing scene image classification, convolutional neural networks hav...
Remote sensing scene classification converts remote sensing images into classification information t...
Convolutional neural network (CNN) is capable of automatically extracting image features and has bee...
Abstract Due to the rapid development of satellite technology, high‐spatial‐resolution remote sensin...
The objects in remote sensing images have large-scale variations, arbitrary directions, and are usua...
A deep neural network is suitable for remote sensing image pixel-wise classification because it effe...
The complexity of scene images makes the research on remote-sensing image scene classification chall...
Remote sensing (RS) scene classification is a highly challenging task because of the unique characte...
Scene classification of very high resolution remote sensing images is becoming more and more importa...
Remote sensing (RS) scene classification plays an important role in a wide range of RS applications....
Semantic-level land-use scene classification is a challenging problem, in which deep learning method...
Abstract Scene classification for remote sensing is a popular topic, and many recent convolutional n...
Deep convolutional neural networks (DCNNs) are driving progress in object detection of high-resoluti...
The remote sensing scene images classification has been of great value to civil and military fields....
The classification of remote sensing scenes is always a challenging task due to the large range of v...
With the development of remote sensing scene image classification, convolutional neural networks hav...
Remote sensing scene classification converts remote sensing images into classification information t...
Convolutional neural network (CNN) is capable of automatically extracting image features and has bee...
Abstract Due to the rapid development of satellite technology, high‐spatial‐resolution remote sensin...
The objects in remote sensing images have large-scale variations, arbitrary directions, and are usua...
A deep neural network is suitable for remote sensing image pixel-wise classification because it effe...
The complexity of scene images makes the research on remote-sensing image scene classification chall...
Remote sensing (RS) scene classification is a highly challenging task because of the unique characte...
Scene classification of very high resolution remote sensing images is becoming more and more importa...
Remote sensing (RS) scene classification plays an important role in a wide range of RS applications....
Semantic-level land-use scene classification is a challenging problem, in which deep learning method...
Abstract Scene classification for remote sensing is a popular topic, and many recent convolutional n...
Deep convolutional neural networks (DCNNs) are driving progress in object detection of high-resoluti...