Infrared and visible images (multi-sensor or multi-band images) have many complementary features which can effectively boost the performance of object detection. Recently, convolutional neural networks (CNNs) have seen frequent use to perform object detection in multi-band images. However, it is very difficult for CNNs to extract complementary features from infrared and visible images. In order to solve this problem, a difference maximum loss function is proposed in this paper. The loss function can guide the learning directions of two base CNNs and maximize the difference between features from the two base CNNs, so as to extract complementary and diverse features. In addition, we design a focused feature-enhancement module to make features...
Automatic and robust object detection in remote sensing images is of vital significance in real-worl...
Pixel-level image fusion is an effective way to fully exploit the rich texture information of visibl...
Object detection from infrared-band (thermal) imagery has been a challenging problem for many years....
Object detection from infrared-band (thermal) imagery has been a challenging problem for many years....
In recent years, almost all of the current top-performing object detection networks use CNN (convolu...
This paper presents an algorithm for infrared and visible image fusion using significance detection ...
Visual object classification has long been studied in visible spectrum by utilizing conventional cam...
<p> Infrared small target detection is an important research topic in the field of infrared image p...
Infrared images have a wide range of military and civilian applications including night vision, surv...
The development of object detection in infrared images has attracted more attention in recent years....
Imaging sensors capturing the surroundings of an autonomous vehicle are vital for its understanding ...
Convolutional Neural Networks can solve the target detection problem satisfactorily. However, the pr...
Object detection is an important task of remote sensing applications. In recent years, with the deve...
RGB-induced salient object detection has recently witnessed substantial progress, which is attribute...
Object detection, which aims to recognize and locate objects within images using bounding boxes, is ...
Automatic and robust object detection in remote sensing images is of vital significance in real-worl...
Pixel-level image fusion is an effective way to fully exploit the rich texture information of visibl...
Object detection from infrared-band (thermal) imagery has been a challenging problem for many years....
Object detection from infrared-band (thermal) imagery has been a challenging problem for many years....
In recent years, almost all of the current top-performing object detection networks use CNN (convolu...
This paper presents an algorithm for infrared and visible image fusion using significance detection ...
Visual object classification has long been studied in visible spectrum by utilizing conventional cam...
<p> Infrared small target detection is an important research topic in the field of infrared image p...
Infrared images have a wide range of military and civilian applications including night vision, surv...
The development of object detection in infrared images has attracted more attention in recent years....
Imaging sensors capturing the surroundings of an autonomous vehicle are vital for its understanding ...
Convolutional Neural Networks can solve the target detection problem satisfactorily. However, the pr...
Object detection is an important task of remote sensing applications. In recent years, with the deve...
RGB-induced salient object detection has recently witnessed substantial progress, which is attribute...
Object detection, which aims to recognize and locate objects within images using bounding boxes, is ...
Automatic and robust object detection in remote sensing images is of vital significance in real-worl...
Pixel-level image fusion is an effective way to fully exploit the rich texture information of visibl...
Object detection from infrared-band (thermal) imagery has been a challenging problem for many years....