Deep learning models are data driven. For example, the most popular convolutional neural network (CNN) model used for image classification or object detection requires large labeled databases for training to achieve competitive performances. This requirement is not difficult to be satisfied in the visible domain since there are lots of labeled video and image databases available nowadays. However, given the less popularity of infrared (IR) camera, the availability of labeled infrared videos or image databases is limited. Therefore, training deep learning models in infrared domain is still challenging. In this chapter, we applied the pix2pix generative adversarial network (Pix2Pix GAN) and cycle-consistent GAN (Cycle GAN) models to convert v...
Object detection from infrared-band (thermal) imagery has been a challenging problem for many years....
Generative Adversarial Network is the topic of interest in today’s research in the field of image pr...
Over the past few years, with the introduction of deep learning techniques such as convolution neura...
Deep learning models are data driven. For example, the most popular convolutional neural network (CN...
One of the most important discoveries in the field of deep learning in recent years is the Generativ...
To apply powerful deep-learning-based algorithms for object detection and classification in infrared...
Infrared image simulation is challenging because it is complex to model. To estimate the correspondi...
Image generation technology is currently one of the popular directions in computer vision research, ...
Infrared (IR) images can distinguish targets from their backgrounds based on difference in thermal r...
Visible images contain clear texture information and high spatial resolution but are unreliable unde...
Training data is an essential ingredient within supervised learning, yet time con-suming, expensive ...
In infrared (IR) and visible image fusion, the significant information is extracted from each source...
Unsupervised image-to-image translation techniques have been used in many applications, including vi...
Near-infrared images are used in low-light conditions and night vision environments, playing an impo...
Fusing the infrared (IR) and visible images has many advantages and can be applied to applications s...
Object detection from infrared-band (thermal) imagery has been a challenging problem for many years....
Generative Adversarial Network is the topic of interest in today’s research in the field of image pr...
Over the past few years, with the introduction of deep learning techniques such as convolution neura...
Deep learning models are data driven. For example, the most popular convolutional neural network (CN...
One of the most important discoveries in the field of deep learning in recent years is the Generativ...
To apply powerful deep-learning-based algorithms for object detection and classification in infrared...
Infrared image simulation is challenging because it is complex to model. To estimate the correspondi...
Image generation technology is currently one of the popular directions in computer vision research, ...
Infrared (IR) images can distinguish targets from their backgrounds based on difference in thermal r...
Visible images contain clear texture information and high spatial resolution but are unreliable unde...
Training data is an essential ingredient within supervised learning, yet time con-suming, expensive ...
In infrared (IR) and visible image fusion, the significant information is extracted from each source...
Unsupervised image-to-image translation techniques have been used in many applications, including vi...
Near-infrared images are used in low-light conditions and night vision environments, playing an impo...
Fusing the infrared (IR) and visible images has many advantages and can be applied to applications s...
Object detection from infrared-band (thermal) imagery has been a challenging problem for many years....
Generative Adversarial Network is the topic of interest in today’s research in the field of image pr...
Over the past few years, with the introduction of deep learning techniques such as convolution neura...