In this paper we propose a new feature extractor technique for pattern classification that is based on the calculation of texture descriptors. Starting from the standard feature vector representation, we rearrange the patterns as matrices and then apply such standard texture descriptor techniques as local binary patterns, local ternary patterns, and Coiflet wavelets. In our classification experiments using several well-known benchmark datasets, support vector machines are used both for the vector-based descriptors and the texture descriptors. Using our new feature extractor technique, the feature vector is arranged as a matrix by random assignment. For each pattern, 50 different random assignments are performed, and then the classification ...
Here we propose a system that incorporates two different state-of-the-art classifiers (support vecto...
Here we propose a system that incorporates two different state-of-the-art classifiers (support vecto...
Here we propose a system that incorporates two different state-of-the-art classifiers (support vecto...
In this paper we propose a new feature extractor technique for pattern classification that is based ...
In this paper we propose a new feature extractor technique for pattern classification that is based ...
In this paper we propose a new feature extractor technique for pattern classification that is based ...
none3In this paper we propose a new feature extractor technique for pattern classification that is b...
Presented in this paper is a novel feature extractor technique based on texture descriptors. Startin...
Good feature extraction methods are key in many pattern classification problems since the quality of...
Good feature extraction methods are key in many pattern classification problems since the quality of...
Presented in this paper is a novel feature extractor technique based on texture descriptors. Startin...
Good feature extraction methods are key in many pattern classification problems since the quality of...
Pattern representation affects classification performance. Although discovering “universal” features...
Pattern representation affects classification performance. Although discovering “universal” features...
none3siPattern representation affects classification performance. Although discovering “universal” f...
Here we propose a system that incorporates two different state-of-the-art classifiers (support vecto...
Here we propose a system that incorporates two different state-of-the-art classifiers (support vecto...
Here we propose a system that incorporates two different state-of-the-art classifiers (support vecto...
In this paper we propose a new feature extractor technique for pattern classification that is based ...
In this paper we propose a new feature extractor technique for pattern classification that is based ...
In this paper we propose a new feature extractor technique for pattern classification that is based ...
none3In this paper we propose a new feature extractor technique for pattern classification that is b...
Presented in this paper is a novel feature extractor technique based on texture descriptors. Startin...
Good feature extraction methods are key in many pattern classification problems since the quality of...
Good feature extraction methods are key in many pattern classification problems since the quality of...
Presented in this paper is a novel feature extractor technique based on texture descriptors. Startin...
Good feature extraction methods are key in many pattern classification problems since the quality of...
Pattern representation affects classification performance. Although discovering “universal” features...
Pattern representation affects classification performance. Although discovering “universal” features...
none3siPattern representation affects classification performance. Although discovering “universal” f...
Here we propose a system that incorporates two different state-of-the-art classifiers (support vecto...
Here we propose a system that incorporates two different state-of-the-art classifiers (support vecto...
Here we propose a system that incorporates two different state-of-the-art classifiers (support vecto...