This paper proposes an efficient framework for scene categorization by combining generative model and discriminative model. A state-of-the-art approach for scene categorization is the Bag-of-Words (BoW) framework. However, there exist many categories in scenes. Generally when a new category is considered, the codebook in BoW framework needs to be re-generated, which will involve exhaustive computation. In view of this, this paper tries to address the issue by designing a new framework with good scalability. When an additional category is considered, much lower computational cost is needed while the resulting image signatures are still discriminative. The image signatures for training discriminative model are carefully designed based on the ...
This work is focused on objects and scenes recognition using machine learning and computer vision to...
Category detection is a lively area of research. While categorization algorithms tend to agree in us...
Most approaches to learn classifiers for structured objects (e.g., images) use generative models in ...
This paper proposes an efficient framework for scene categorization by combining generative model an...
ABSTRACT This paper proposes a simple yet new and effective framework by combining generative model ...
This paper proposes an efficient technique for learning a discriminative codebook for scene categori...
Natural scene categorization from images represents a very useful task for automatic image analysis ...
Many successful systems for scene recognition transform low-level descriptors into complex represent...
AbstractThis paper proposes a new bags-of-words (BoW)-based algorithm for scene/place recognition. C...
We investigate whether dimensionality reduction using a latent generative model is beneficial for th...
Many successful systems for scene recognition transform low-level descriptors into complex represent...
We investigate whether dimensionality reduction using a latent generative model is beneficial for th...
Natural scene categorization of images represents a very useful task for automatic image analysis sy...
The scene classification area has been growing over the last years, becoming relevant in order to be...
IS&T/SPIE Conference on Intelligent Robots and Computer Vision XXVI: Algorithms and TechniquesIn thi...
This work is focused on objects and scenes recognition using machine learning and computer vision to...
Category detection is a lively area of research. While categorization algorithms tend to agree in us...
Most approaches to learn classifiers for structured objects (e.g., images) use generative models in ...
This paper proposes an efficient framework for scene categorization by combining generative model an...
ABSTRACT This paper proposes a simple yet new and effective framework by combining generative model ...
This paper proposes an efficient technique for learning a discriminative codebook for scene categori...
Natural scene categorization from images represents a very useful task for automatic image analysis ...
Many successful systems for scene recognition transform low-level descriptors into complex represent...
AbstractThis paper proposes a new bags-of-words (BoW)-based algorithm for scene/place recognition. C...
We investigate whether dimensionality reduction using a latent generative model is beneficial for th...
Many successful systems for scene recognition transform low-level descriptors into complex represent...
We investigate whether dimensionality reduction using a latent generative model is beneficial for th...
Natural scene categorization of images represents a very useful task for automatic image analysis sy...
The scene classification area has been growing over the last years, becoming relevant in order to be...
IS&T/SPIE Conference on Intelligent Robots and Computer Vision XXVI: Algorithms and TechniquesIn thi...
This work is focused on objects and scenes recognition using machine learning and computer vision to...
Category detection is a lively area of research. While categorization algorithms tend to agree in us...
Most approaches to learn classifiers for structured objects (e.g., images) use generative models in ...