Convolutional neural networks (CNNs) have been widely used in the task of object detection in remote sensing. Remote sensing targets can have arbitrary angles, and many anchor-base methods use a lot of anchors with different angles which cause efficiency and precision problems. To solve the problem caused by too many anchors, this paper presents a novel matching algorithm in the matching stage of the rotating anchor and object, which determines a more accurate rotating region of interests (RRoIs) for target regression using the copies set for each oriented anchor. It makes use of the high recall rate brought by a large number of anchor boxes with different angles and avoids the computation brought by a large number of anchor boxes. We use t...
Endowing convolutional neural networks (CNNs) with the rotation-invariant capability is important fo...
Ship detection with rotated bounding boxes in synthetic aperture radar (SAR) images is now a hot spo...
The detection of rotated objects is a meaningful and challenging research work. Although the state-o...
To detect rotated objects in remote sensing images, researchers have proposed a series of arbitrary-...
Arbitrarily-oriented object detection is a challenging task. Since the object orientation in remote ...
Remote sensing images are widely distributed, small in object size, and complex in background, resul...
In remote sensing images, the absolute orientation of objects is arbitrary. Depending on an object's...
Ship detection plays an important role in automatic remote sensing image interpretation. The scale d...
Since remote sensing images are captured from the top of the target, such as from a satellite or pla...
Arbitrarily oriented object detection has recently attracted increasing attention for its wide appli...
With the development of oriented object detection technology, especially in the area of remote sensi...
In recent years, the emergence of convolutional neural networks (CNN) has greatly promoted the devel...
Due to the variations of aircraft types, sizes, orientations, and complexity of remote sensing image...
Despite significant progress in object detection tasks, remote sensing image target detection is sti...
Compared to traditional object detection of horizontal bounding box, detecting rotated objects with ...
Endowing convolutional neural networks (CNNs) with the rotation-invariant capability is important fo...
Ship detection with rotated bounding boxes in synthetic aperture radar (SAR) images is now a hot spo...
The detection of rotated objects is a meaningful and challenging research work. Although the state-o...
To detect rotated objects in remote sensing images, researchers have proposed a series of arbitrary-...
Arbitrarily-oriented object detection is a challenging task. Since the object orientation in remote ...
Remote sensing images are widely distributed, small in object size, and complex in background, resul...
In remote sensing images, the absolute orientation of objects is arbitrary. Depending on an object's...
Ship detection plays an important role in automatic remote sensing image interpretation. The scale d...
Since remote sensing images are captured from the top of the target, such as from a satellite or pla...
Arbitrarily oriented object detection has recently attracted increasing attention for its wide appli...
With the development of oriented object detection technology, especially in the area of remote sensi...
In recent years, the emergence of convolutional neural networks (CNN) has greatly promoted the devel...
Due to the variations of aircraft types, sizes, orientations, and complexity of remote sensing image...
Despite significant progress in object detection tasks, remote sensing image target detection is sti...
Compared to traditional object detection of horizontal bounding box, detecting rotated objects with ...
Endowing convolutional neural networks (CNNs) with the rotation-invariant capability is important fo...
Ship detection with rotated bounding boxes in synthetic aperture radar (SAR) images is now a hot spo...
The detection of rotated objects is a meaningful and challenging research work. Although the state-o...