Object detection in remote sensing images has been frequently used in a wide range of areas such as land planning, city monitoring, traffic monitoring, and agricultural applications. It is essential in the field of aerial and satellite image analysis but it is also a challenge. To overcome this challenging problem, there are many object detection models using convolutional neural networks (CNN). The deformable convolutional structure has been introduced to eliminate the disadvantage of the fixed grid structure of the convolutional neural networks. In this study, a multi-scale Faster R-CNN method based on deformable convolution is proposed for single/low graphics processing unit (GPU) systems. Weight standardization (WS) is used instead of b...
In recent years there is rapid improvement in Object detection in areas of video analysis and image ...
This article proposes a novel subclass-based classifier based on convolutional neural networks (CNNs...
The PASCAL VOC Challenge performance has been significantly boosted by the prevalently CNN-based pip...
Detection of objects from satellite optical remote sensing images is very important for many commerc...
Detection of objects from satellite optical remote sensing images is very important for many commerc...
Daily acquisition of large amounts of aerial and satellite images has facilitated subsequent automat...
The region-based convolutional networks have shown their remarkable ability for object detection in ...
Convolutional neural networks (CNNs) have demonstrated their ability object detection of very high r...
Accurate detection of objects in aerial images is an important task for many applications such as tr...
This report is about explaining how to apply the Faster R-CNN network structure on Object detection ...
With the rapid advances in remote-sensing technologies and the larger number of satellite images, fa...
Most traditional object detection approaches have a deficiency of features, slow detection speed, an...
Computing at the edge offers intriguing possibilities for the development of autonomy and artificial...
Due to the dramatic growth of the amount of video data on the Internet, a need arises for processing...
Geospatial object detection from high spatial resolution (HSR) remote sensing imagery is a significa...
In recent years there is rapid improvement in Object detection in areas of video analysis and image ...
This article proposes a novel subclass-based classifier based on convolutional neural networks (CNNs...
The PASCAL VOC Challenge performance has been significantly boosted by the prevalently CNN-based pip...
Detection of objects from satellite optical remote sensing images is very important for many commerc...
Detection of objects from satellite optical remote sensing images is very important for many commerc...
Daily acquisition of large amounts of aerial and satellite images has facilitated subsequent automat...
The region-based convolutional networks have shown their remarkable ability for object detection in ...
Convolutional neural networks (CNNs) have demonstrated their ability object detection of very high r...
Accurate detection of objects in aerial images is an important task for many applications such as tr...
This report is about explaining how to apply the Faster R-CNN network structure on Object detection ...
With the rapid advances in remote-sensing technologies and the larger number of satellite images, fa...
Most traditional object detection approaches have a deficiency of features, slow detection speed, an...
Computing at the edge offers intriguing possibilities for the development of autonomy and artificial...
Due to the dramatic growth of the amount of video data on the Internet, a need arises for processing...
Geospatial object detection from high spatial resolution (HSR) remote sensing imagery is a significa...
In recent years there is rapid improvement in Object detection in areas of video analysis and image ...
This article proposes a novel subclass-based classifier based on convolutional neural networks (CNNs...
The PASCAL VOC Challenge performance has been significantly boosted by the prevalently CNN-based pip...