Semantic segmentation models are often affected by illumination changes, and fail to predict correct labels. Although there has been a lot of research on indoor semantic segmentation, it has not been studied in low-light environments. In this paper we propose a new framework, LISU, for Low-light Indoor Scene Understanding. We first decompose the low-light images into reflectance and illumination components, and then jointly learn reflectance restoration and semantic segmentation. To train and evaluate the proposed framework, we propose a new data set, namely LLRGBD, which consists of a large synthetic low-light indoor data set (LLRGBD-synthetic) and a small real data set (LLRGBD-real). The experimental results show that the illumination-inv...
Indoor scenes have the characteristics of abundant semantic categories, illumination changes, occlus...
In multi-class indoor semantic segmentation using RGB-D data, it has been shown that incorporating d...
Low-light images challenge both human perceptions and computer vision algorithms. It is crucial to m...
Semantic segmentation models are often affected by illumination changes, and fail to predict correct...
Semantic segmentation models are often affected by illumination changes, and fail to predict correct...
Semantic segmentation using convolutional neural networks (CNNs) achieves higher accuracy than tradi...
© Springer International Publishing AG 2016. In this paper, we tackle the problem of RGB-D semantic ...
International audienceMany research works focus on leveraging the complementary geometric informatio...
Low-light images suffer severe degradation of low lightness and noise corruption, causing unsatisfac...
This work addresses multi-class segmentation of indoor scenes with RGB-D in-puts. While this area of...
8 pages, 3 figuresInternational audienceThis work addresses multi-class segmentation of indoor scene...
Low-light image enhancement (LLE) remains challenging due to the unfavorable prevailing low-contrast...
While most of the recent literature on semantic segmentation has focused on outdoor scenarios, the g...
Abstract In this paper, we address the problems of contour detection, bottom-up grouping, object det...
Depth information has proven to be a useful cue in the semantic segmentation of RGB-D images for pro...
Indoor scenes have the characteristics of abundant semantic categories, illumination changes, occlus...
In multi-class indoor semantic segmentation using RGB-D data, it has been shown that incorporating d...
Low-light images challenge both human perceptions and computer vision algorithms. It is crucial to m...
Semantic segmentation models are often affected by illumination changes, and fail to predict correct...
Semantic segmentation models are often affected by illumination changes, and fail to predict correct...
Semantic segmentation using convolutional neural networks (CNNs) achieves higher accuracy than tradi...
© Springer International Publishing AG 2016. In this paper, we tackle the problem of RGB-D semantic ...
International audienceMany research works focus on leveraging the complementary geometric informatio...
Low-light images suffer severe degradation of low lightness and noise corruption, causing unsatisfac...
This work addresses multi-class segmentation of indoor scenes with RGB-D in-puts. While this area of...
8 pages, 3 figuresInternational audienceThis work addresses multi-class segmentation of indoor scene...
Low-light image enhancement (LLE) remains challenging due to the unfavorable prevailing low-contrast...
While most of the recent literature on semantic segmentation has focused on outdoor scenarios, the g...
Abstract In this paper, we address the problems of contour detection, bottom-up grouping, object det...
Depth information has proven to be a useful cue in the semantic segmentation of RGB-D images for pro...
Indoor scenes have the characteristics of abundant semantic categories, illumination changes, occlus...
In multi-class indoor semantic segmentation using RGB-D data, it has been shown that incorporating d...
Low-light images challenge both human perceptions and computer vision algorithms. It is crucial to m...