The ability to scene understanding in adverse visual conditions, e.g., nighttime, has sparked active research for RGB-Thermal (RGB-T) semantic segmentation. However, it is essentially hampered by two critical problems: 1) the day-night gap of RGB images is larger than that of thermal images, and 2) the class-wise performance of RGB images at night is not consistently higher or lower than that of thermal images. we propose the first test-time adaptation (TTA) framework, dubbed Night-TTA, to address the problems for nighttime RGBT semantic segmentation without access to the source (daytime) data during adaptation. Our method enjoys three key technical parts. Firstly, as one modality (e.g., RGB) suffers from a larger domain gap than that of th...
The RGB and thermal (RGB-T) object tracking task is challenging, especially with various target chan...
Thermal imagery is emerging as a viable candidate for 24-7, all-weather pedestrian detection owning ...
Color Invariant Convolution (CIConv) is a learnable Convolutional Neural Network (CNN) layer that re...
The ability to scene understanding in adverse visual conditions, e.g., nighttime, has sparked active...
This work presents a new method for unsupervised thermal image classification and semantic segmentat...
RGB-Thermal (RGB-T) semantic segmentation has shown great potential in handling low-light conditions...
By exploiting the complementary information of RGB modality and thermal modality, RGB-thermal (RGB-T...
Vehicle detection accuracy is fairly accurate in good-illumination conditions but susceptible to poo...
International audienceThis paper presents an image-based algorithm for simulating the visual adaptat...
Can we improve detection in the thermal domain by borrowing features from rich domains like visual R...
Semantic segmentation models gain robustness against adverse illumination conditions by taking advan...
We explore the zero-shot setting for day-night domain adaptation. The traditional domain adaptation ...
Multimodal (RGB and thermal) applications are swiftly gaining importance in the computer vision comm...
2019 IEEE Intelligent Vehicles Symposium (IV), Paris, France, 9-12 Jun. 2019Perception in autonomous...
In this paper, we look into the problem of estimating per-pixel depth maps from unconstrained RGB mo...
The RGB and thermal (RGB-T) object tracking task is challenging, especially with various target chan...
Thermal imagery is emerging as a viable candidate for 24-7, all-weather pedestrian detection owning ...
Color Invariant Convolution (CIConv) is a learnable Convolutional Neural Network (CNN) layer that re...
The ability to scene understanding in adverse visual conditions, e.g., nighttime, has sparked active...
This work presents a new method for unsupervised thermal image classification and semantic segmentat...
RGB-Thermal (RGB-T) semantic segmentation has shown great potential in handling low-light conditions...
By exploiting the complementary information of RGB modality and thermal modality, RGB-thermal (RGB-T...
Vehicle detection accuracy is fairly accurate in good-illumination conditions but susceptible to poo...
International audienceThis paper presents an image-based algorithm for simulating the visual adaptat...
Can we improve detection in the thermal domain by borrowing features from rich domains like visual R...
Semantic segmentation models gain robustness against adverse illumination conditions by taking advan...
We explore the zero-shot setting for day-night domain adaptation. The traditional domain adaptation ...
Multimodal (RGB and thermal) applications are swiftly gaining importance in the computer vision comm...
2019 IEEE Intelligent Vehicles Symposium (IV), Paris, France, 9-12 Jun. 2019Perception in autonomous...
In this paper, we look into the problem of estimating per-pixel depth maps from unconstrained RGB mo...
The RGB and thermal (RGB-T) object tracking task is challenging, especially with various target chan...
Thermal imagery is emerging as a viable candidate for 24-7, all-weather pedestrian detection owning ...
Color Invariant Convolution (CIConv) is a learnable Convolutional Neural Network (CNN) layer that re...