This study aims at the great limitations caused by the non-ROI (region of interest) information interference in traditional scene classification algorithms, including the changes of multiscale or various visual angles and the high similarity between classes and other factors. An effective indoor scene classification mechanism based on multiple descriptors fusion is proposed, which introduces the depth images to improve descriptor efficiency. The greedy descriptor filter algorithm (GDFA) is proposed to obtain valuable descriptors, and the multiple descriptor combination method is also given to further improve descriptor performance. Performance analysis and simulation results show that multiple descriptors fusion not only can achieve higher ...
In order to recognize indoor scenarios, we extract image features for detecting objects, however, co...
Indoor scene recognition is a challenging open problem in high level vision. Most scene recognition ...
Recently, we have witnessed a surge of interests of learning a low-dimensional subspace for scene cl...
Along with the progress of the content-based image retrieval research and the development of the MPE...
Indoor scene recognition is a multi-faceted and challenging problem due to the diverse intra-class v...
Abstract. Scene categorization is an important mechanism for provid-ing high-level context which can...
Unlike standard object classification, where the image to be classified contains one or multiple ins...
This paper focuses on the task of RGB-D indoor scene classification. It is a very challenging task d...
Enhancing perception of the local environment with semantic information like the room type is an imp...
Scene classification is a useful, yet challenging problem in computer vision. Two important tasks fo...
In computer vision, holistic indoor scene understanding from images is a complex and important task ...
Recently, efficient image descriptors have shown promise for image classification tasks. Moreover, m...
Humans are endowed with the ability to grasp the overall meaning or the gist of a complex visual sce...
Abstract. This paper proposes a novel approach for the construction and use of multi-feature spaces ...
Scene image classification and retrieval not only have a great impact on scene image management, but...
In order to recognize indoor scenarios, we extract image features for detecting objects, however, co...
Indoor scene recognition is a challenging open problem in high level vision. Most scene recognition ...
Recently, we have witnessed a surge of interests of learning a low-dimensional subspace for scene cl...
Along with the progress of the content-based image retrieval research and the development of the MPE...
Indoor scene recognition is a multi-faceted and challenging problem due to the diverse intra-class v...
Abstract. Scene categorization is an important mechanism for provid-ing high-level context which can...
Unlike standard object classification, where the image to be classified contains one or multiple ins...
This paper focuses on the task of RGB-D indoor scene classification. It is a very challenging task d...
Enhancing perception of the local environment with semantic information like the room type is an imp...
Scene classification is a useful, yet challenging problem in computer vision. Two important tasks fo...
In computer vision, holistic indoor scene understanding from images is a complex and important task ...
Recently, efficient image descriptors have shown promise for image classification tasks. Moreover, m...
Humans are endowed with the ability to grasp the overall meaning or the gist of a complex visual sce...
Abstract. This paper proposes a novel approach for the construction and use of multi-feature spaces ...
Scene image classification and retrieval not only have a great impact on scene image management, but...
In order to recognize indoor scenarios, we extract image features for detecting objects, however, co...
Indoor scene recognition is a challenging open problem in high level vision. Most scene recognition ...
Recently, we have witnessed a surge of interests of learning a low-dimensional subspace for scene cl...