Deep models trained on large-scale RGB image datasets have shown tremendous success. It is important to apply such deep models to real-world problems. However, these models suffer from a performance bottleneck under illumination changes. Thermal IR cameras are more robust against such changes, and thus can be very useful for the real-world problems. In order to investigate efficacy of combining feature-rich visible spectrum and thermal image modalities, we propose an unsupervised domain adaptation method which does not require RGB-to-thermal image pairs. We employ large-scale RGB dataset MS-COCO as source domain and thermal dataset FLIR ADAS as target domain to demonstrate results of our method. Although adversarial domain adaptation method...
The measurement accuracy and reliability of thermography is largely limited by a relatively low spat...
In this paper, we are presenting a proof of concept of our system for training of the YOLOv3 neural ...
One of the most important discoveries in the field of deep learning in recent years is the Generativ...
Imaging sensors capturing the surroundings of an autonomous vehicle are vital for its understanding ...
This work presents a new method for unsupervised thermal image classification and semantic segmentat...
Training data is an essential ingredient within supervised learning, yet time con-suming, expensive ...
With the fast growth in the visual surveillance and security sectors, thermal infrared images have b...
Can we improve detection in the thermal domain by borrowing features from rich domains like visual R...
Traditional methods for creating classifiers have two main disadvantages. Firstly, it is time consum...
Abstract Thermal infrared image colorization is very difficult, and colorized images suffer from poo...
Recently, self-supervised learning of depth and ego-motion from thermal images shows strong robustne...
Object detection from infrared-band (thermal) imagery has been a challenging problem for many years....
Thermal spectrum cameras are gaining interest in many applications due to their long wavelength whic...
Thermal spectrum cameras are gaining interest in many applications due to their long wavelength whic...
Thermal infrared imaging is attracting much attention due to its strength against illuminance variat...
The measurement accuracy and reliability of thermography is largely limited by a relatively low spat...
In this paper, we are presenting a proof of concept of our system for training of the YOLOv3 neural ...
One of the most important discoveries in the field of deep learning in recent years is the Generativ...
Imaging sensors capturing the surroundings of an autonomous vehicle are vital for its understanding ...
This work presents a new method for unsupervised thermal image classification and semantic segmentat...
Training data is an essential ingredient within supervised learning, yet time con-suming, expensive ...
With the fast growth in the visual surveillance and security sectors, thermal infrared images have b...
Can we improve detection in the thermal domain by borrowing features from rich domains like visual R...
Traditional methods for creating classifiers have two main disadvantages. Firstly, it is time consum...
Abstract Thermal infrared image colorization is very difficult, and colorized images suffer from poo...
Recently, self-supervised learning of depth and ego-motion from thermal images shows strong robustne...
Object detection from infrared-band (thermal) imagery has been a challenging problem for many years....
Thermal spectrum cameras are gaining interest in many applications due to their long wavelength whic...
Thermal spectrum cameras are gaining interest in many applications due to their long wavelength whic...
Thermal infrared imaging is attracting much attention due to its strength against illuminance variat...
The measurement accuracy and reliability of thermography is largely limited by a relatively low spat...
In this paper, we are presenting a proof of concept of our system for training of the YOLOv3 neural ...
One of the most important discoveries in the field of deep learning in recent years is the Generativ...