Stripe noise removal is a crucial step for the infrared imaging system. Existing stripe removal methods are hard to balance stripe removal and image details preservation. In this paper, a deep multi-scale dense connection convolutional neural network (DMD-CNN) is proposed to address this problem. In DMD-CNN, a multi-scale feature representation unit (FR-Unit) is designed to decompose raw image into different scales which can extract diverse fine and coarse features. Dense connection is introduced into the network, which makes full use of the multi-scale information obtained by FR-Unit and avoids performance degradation. Moreover, the regularization term Lh is defined to depict the vertical direction smoothness property of stripe. Experiment...
Infrared and visible images (multi-sensor or multi-band images) have many complementary features whi...
To better extract feature maps from low-resolution (LR) images and recover high-frequency informatio...
Recent years have witnessed two seemingly opposite developments of deep convolutional neural network...
Stripe noise removal is a crucial step for the infrared imaging system. Existing stripe removal meth...
Aiming at the problem of stripe noise in uncooled infrared imaging system, a multi-scale analysis an...
Infrared images have a wide range of military and civilian applications including night vision, surv...
Infrared images have good anti-environmental interference ability and can capture hot target informa...
Stripe non-uniformity severely affects the quality of infrared images. It is challenging to remove s...
Super resolution methods alleviate the high cost and high difficulty in applying high resolution inf...
The existing nonuniformity correction methods generally have the defects of image blur, artifacts, i...
Deep convolutional neural networks (CNNs) have been widely used and achieved state-of-the-art perfor...
The stripe noise in the multispectral remote sensing images, possibly resulting from the instrument ...
Stripe noise is very common in uncooled infrared imaging systems and often severely degrades the ima...
As the representative of flexibility in optical imaging media, in recent years, fiber bundles have e...
Infrared images often carry obvious streak noises due to the non-uniformity of the infrared detector...
Infrared and visible images (multi-sensor or multi-band images) have many complementary features whi...
To better extract feature maps from low-resolution (LR) images and recover high-frequency informatio...
Recent years have witnessed two seemingly opposite developments of deep convolutional neural network...
Stripe noise removal is a crucial step for the infrared imaging system. Existing stripe removal meth...
Aiming at the problem of stripe noise in uncooled infrared imaging system, a multi-scale analysis an...
Infrared images have a wide range of military and civilian applications including night vision, surv...
Infrared images have good anti-environmental interference ability and can capture hot target informa...
Stripe non-uniformity severely affects the quality of infrared images. It is challenging to remove s...
Super resolution methods alleviate the high cost and high difficulty in applying high resolution inf...
The existing nonuniformity correction methods generally have the defects of image blur, artifacts, i...
Deep convolutional neural networks (CNNs) have been widely used and achieved state-of-the-art perfor...
The stripe noise in the multispectral remote sensing images, possibly resulting from the instrument ...
Stripe noise is very common in uncooled infrared imaging systems and often severely degrades the ima...
As the representative of flexibility in optical imaging media, in recent years, fiber bundles have e...
Infrared images often carry obvious streak noises due to the non-uniformity of the infrared detector...
Infrared and visible images (multi-sensor or multi-band images) have many complementary features whi...
To better extract feature maps from low-resolution (LR) images and recover high-frequency informatio...
Recent years have witnessed two seemingly opposite developments of deep convolutional neural network...