A key development in the design of visual object recognition systems is the combination of multiple features. In recent years, various popular optimization based feature combination methods have been proposed in the literatures. However, those methods obtain tiny performance improvement at the cost of enormous computation consumption. In this paper, we propose an improved averaging combination (IAC) method based on simple averaging combination. Firstly, the discriminative power of features are evaluated by dominant set clustering. Then, these features are ranked and added into the averaging combination one by one in descending order. At last, we obtain the best performance improvement of averaging combination by selecting the most powerful ...
Ranking hypothesis sets is a powerful concept for efficient object detection. In this work, we propo...
We propose a new classifier combination method, the signal strength-based combining (SSC) approach, ...
The design of optimal feature sets for visual classification problems is still one of the most chall...
A key development in the design of visual object recognition systems is the combination of multiple ...
Feature combination is a powerful approach to improve object classification performance. While vario...
<p>In image classification, feature combination is often used to combine the merits of multiple comp...
A key ingredient in the design of visual object classification systems is the identification of rele...
Real-time and accurate classification of objects in highly complex scenes is an important problem fo...
Abstract The sparse, hierarchical, and modular processing of natural signals is related to the abili...
Abstract: Problem statement: This study deals with object recognition based on image segmentation an...
Partial occlusions, large pose variations, and extreme ambient illumination conditions gen-erally ca...
During the last decade, various local features have been proposed and used to support Content Based ...
The theme of the work presented here is augmentation of the colour averaging based image retrieval t...
Applications like multimedia databases or enterprise-wide information management systems have to mee...
In image classification, multi-scale information is usually combined by concatenating features or se...
Ranking hypothesis sets is a powerful concept for efficient object detection. In this work, we propo...
We propose a new classifier combination method, the signal strength-based combining (SSC) approach, ...
The design of optimal feature sets for visual classification problems is still one of the most chall...
A key development in the design of visual object recognition systems is the combination of multiple ...
Feature combination is a powerful approach to improve object classification performance. While vario...
<p>In image classification, feature combination is often used to combine the merits of multiple comp...
A key ingredient in the design of visual object classification systems is the identification of rele...
Real-time and accurate classification of objects in highly complex scenes is an important problem fo...
Abstract The sparse, hierarchical, and modular processing of natural signals is related to the abili...
Abstract: Problem statement: This study deals with object recognition based on image segmentation an...
Partial occlusions, large pose variations, and extreme ambient illumination conditions gen-erally ca...
During the last decade, various local features have been proposed and used to support Content Based ...
The theme of the work presented here is augmentation of the colour averaging based image retrieval t...
Applications like multimedia databases or enterprise-wide information management systems have to mee...
In image classification, multi-scale information is usually combined by concatenating features or se...
Ranking hypothesis sets is a powerful concept for efficient object detection. In this work, we propo...
We propose a new classifier combination method, the signal strength-based combining (SSC) approach, ...
The design of optimal feature sets for visual classification problems is still one of the most chall...