Marine activities occupy an important position in human society. The accurate classification of ships is an effective monitoring method. However, traditional image classification has the problem of low classification accuracy, and the corresponding ship dataset also has the problem of long-tail distribution. Aimed at solving these problems, this paper proposes a fine-grained classification method of optical remote sensing ship images based on deep convolution neural network. We use three-level images to extract three-level features for classification. The first-level image is the original image as an auxiliary. The specific position of the ship in the original image is located by the gradient-weighted class activation mapping. The target-le...
With the successful application of the convolutional neural network (CNN), significant progress has ...
In high spatial resolution remote sensing imagery (HRSI), ship detection plays a fundamental role in...
Ship detection is an important and challenging task in remote sensing applications. Most metho...
Ship detection and classification is critical for national maritime security and national defense. A...
As an important part of maritime traffic, ships play an important role in military and civilian appl...
The automatic classification of ships from aerial images is a considerable challenge. Previous works...
The automatic classification of ships from aerial images is a considerable challenge. Previous works...
The automatic classification of ships from aerial images is a considerable challenge. Previous works...
With the extensive application of artificial intelligence, ship detection from optical satellite rem...
The shipping industry is developing towards intelligence rapidly. An accurate and fast method for sh...
Ship detection in optical remote sensing images has potential applications in national maritime secu...
The ability to locate and identify vessels of interest in satellite imagery plays a vital role in ma...
With the capability to automatically learn discriminative features, deep learning has experienced gr...
In current remote sensing literature, the problems of sea-land segmentation and ship detection (incl...
In current remote sensing literature, the problems of sea-land segmentation and ship detection (incl...
With the successful application of the convolutional neural network (CNN), significant progress has ...
In high spatial resolution remote sensing imagery (HRSI), ship detection plays a fundamental role in...
Ship detection is an important and challenging task in remote sensing applications. Most metho...
Ship detection and classification is critical for national maritime security and national defense. A...
As an important part of maritime traffic, ships play an important role in military and civilian appl...
The automatic classification of ships from aerial images is a considerable challenge. Previous works...
The automatic classification of ships from aerial images is a considerable challenge. Previous works...
The automatic classification of ships from aerial images is a considerable challenge. Previous works...
With the extensive application of artificial intelligence, ship detection from optical satellite rem...
The shipping industry is developing towards intelligence rapidly. An accurate and fast method for sh...
Ship detection in optical remote sensing images has potential applications in national maritime secu...
The ability to locate and identify vessels of interest in satellite imagery plays a vital role in ma...
With the capability to automatically learn discriminative features, deep learning has experienced gr...
In current remote sensing literature, the problems of sea-land segmentation and ship detection (incl...
In current remote sensing literature, the problems of sea-land segmentation and ship detection (incl...
With the successful application of the convolutional neural network (CNN), significant progress has ...
In high spatial resolution remote sensing imagery (HRSI), ship detection plays a fundamental role in...
Ship detection is an important and challenging task in remote sensing applications. Most metho...