This paper focuses on the task of RGB-D indoor scene classification. It is a very challenging task due to two folds. 1) Learning robust representation for indoor scene is difficult because of various objects and layouts. 2) Fusing the complementary cues in RGB and Depth is nontrivial since there are large semantic gaps between the two modalities. Most existing works learn representation for classification by training a deep network with softmax loss and fuse the two modalities by simply concatenating the features of them. However, these pipelines do not explicitly consider intra-class and inter-class similarity as well as inter-modal intrinsic relationships. To address these problems, this paper proposes a Discriminative Feature Learning an...
In computer vision, holistic indoor scene understanding from images is a complex and important task ...
Dissimilar to object classification, scene classification needs to consider not only the components ...
Abstract. Motivated by the success of Deep Neural Networks in com-puter vision, we propose a deep Re...
In multi-class indoor semantic segmentation using RGB-D data, it has been shown that incorporating d...
Multi-modal fusion has been proved to help enhance the performance of scene classification tasks. Th...
Scene recognition with RGB images has been extensively studied and has reached very remarkable recog...
© Springer International Publishing AG 2016. In this paper, we tackle the problem of RGB-D semantic ...
While deep convolutional neural networks have shown a remarkable success in image classification, th...
Classification of indoor environments is a challenging problem. The availability of low-cost depth s...
| openaire: EC/H2020/780069/EU//MeMADConvolutional neural networks (CNNs) have recently achieved out...
RGB-D data has turned out to be a very useful representation for solving fundamental computer visio...
8 pages, 3 figuresInternational audienceThis work addresses multi-class segmentation of indoor scene...
This work addresses multi-class segmentation of indoor scenes with RGB-D in-puts. While this area of...
International audienceMany research works focus on leveraging the complementary geometric informatio...
Indoor scene recognition is a multi-faceted and challenging problem due to the diverse intra-class v...
In computer vision, holistic indoor scene understanding from images is a complex and important task ...
Dissimilar to object classification, scene classification needs to consider not only the components ...
Abstract. Motivated by the success of Deep Neural Networks in com-puter vision, we propose a deep Re...
In multi-class indoor semantic segmentation using RGB-D data, it has been shown that incorporating d...
Multi-modal fusion has been proved to help enhance the performance of scene classification tasks. Th...
Scene recognition with RGB images has been extensively studied and has reached very remarkable recog...
© Springer International Publishing AG 2016. In this paper, we tackle the problem of RGB-D semantic ...
While deep convolutional neural networks have shown a remarkable success in image classification, th...
Classification of indoor environments is a challenging problem. The availability of low-cost depth s...
| openaire: EC/H2020/780069/EU//MeMADConvolutional neural networks (CNNs) have recently achieved out...
RGB-D data has turned out to be a very useful representation for solving fundamental computer visio...
8 pages, 3 figuresInternational audienceThis work addresses multi-class segmentation of indoor scene...
This work addresses multi-class segmentation of indoor scenes with RGB-D in-puts. While this area of...
International audienceMany research works focus on leveraging the complementary geometric informatio...
Indoor scene recognition is a multi-faceted and challenging problem due to the diverse intra-class v...
In computer vision, holistic indoor scene understanding from images is a complex and important task ...
Dissimilar to object classification, scene classification needs to consider not only the components ...
Abstract. Motivated by the success of Deep Neural Networks in com-puter vision, we propose a deep Re...