Significant work has been done in the field of computer vision focusing on learning and clustering methods. The use of improved learning methods has paved a way forward for researches to explore various theories to improve existing methods. One among various learning methods is Hierarchical learning which has showed impressive benefits and performance over traditional sequential learning approaches. In general, machine learning models require a lot of data for every new scenario which is not always possible and if so, is very expensive. Transfer learning, which focuses on transferring knowledge across trained machine learning models, is a promising machine learning methodology for solving the above problem. In this thesis, we propose an end...
Classification of large amount of data is a time consuming process but crucial for analysis and deci...
Tscherepanow M. Incremental On-line Clustering with a Topology-Learning Hierarchical ART Neural Netw...
: Structure of incremental neural network (IncNet) is controlled by growing and pruning to match th...
Significant work has been done in the field of computer vision focusing on learning and clustering m...
This paper proposes a novel learning algorithm for constructing data classifiers with radial basis f...
The major drawback of a non-modular neural network classifier is its inability to cope with the incr...
In this paper, a Radial Basis Function Network (RBFN) trained with the Dynamic Decay Adjustment (DDA...
This paper presents a novel neuron learning machine (NLM) which can extract hierarchical features fr...
Radial basis function (RBF) neural network is constructed of certain number of RBF neurons, and thes...
The success of many tasks depends on good feature representation which is often domain-specific and ...
Transfer functions play a very important role in learning process of neural systems. This paper pres...
This paper presents a novel learning algorithm for efficient construction of the radial basis functi...
Abstract: A framework for Similarity-Based Methods (SBMs) includes many classification models as spe...
Hierarchical Incremental Class Learning (HICL) is a new task decomposition method that addresses the...
Hierarchical clustering using hybrid learning model of KFLANN and Multilayer Perceptron with Backpro...
Classification of large amount of data is a time consuming process but crucial for analysis and deci...
Tscherepanow M. Incremental On-line Clustering with a Topology-Learning Hierarchical ART Neural Netw...
: Structure of incremental neural network (IncNet) is controlled by growing and pruning to match th...
Significant work has been done in the field of computer vision focusing on learning and clustering m...
This paper proposes a novel learning algorithm for constructing data classifiers with radial basis f...
The major drawback of a non-modular neural network classifier is its inability to cope with the incr...
In this paper, a Radial Basis Function Network (RBFN) trained with the Dynamic Decay Adjustment (DDA...
This paper presents a novel neuron learning machine (NLM) which can extract hierarchical features fr...
Radial basis function (RBF) neural network is constructed of certain number of RBF neurons, and thes...
The success of many tasks depends on good feature representation which is often domain-specific and ...
Transfer functions play a very important role in learning process of neural systems. This paper pres...
This paper presents a novel learning algorithm for efficient construction of the radial basis functi...
Abstract: A framework for Similarity-Based Methods (SBMs) includes many classification models as spe...
Hierarchical Incremental Class Learning (HICL) is a new task decomposition method that addresses the...
Hierarchical clustering using hybrid learning model of KFLANN and Multilayer Perceptron with Backpro...
Classification of large amount of data is a time consuming process but crucial for analysis and deci...
Tscherepanow M. Incremental On-line Clustering with a Topology-Learning Hierarchical ART Neural Netw...
: Structure of incremental neural network (IncNet) is controlled by growing and pruning to match th...