[[abstract]]A novel algorithm for field programmable gate array (FPGA) realization of kNN classifier is presented in this paper. The algorithm identifies first k closest vectors in the design set of a kNN classifier for each input vector by performing the partial distance search (PDS) in the wavelet domain. It employs subspace search, bitplane reduction and multiple-coefficient accumulation techniques for the effective reduction of the area complexity and computation latency. The proposed implementation has been embedded in a softcore CPU for physical performance measurement. Experimental results show that the implementation provides a cost-effective solution to the FPGA realization of kNN classification systems where both high throughput a...
The thesis deals with image classifiers and their implementation using FPGA technology. There are di...
Data classification has improved significantly over time and nowadays is used in a variety of purpos...
Many industrial applications concerning pattern recognition techniques often demand to develop suite...
[[abstract]]A novel algorithm for field programmable gate array (FPGA) realization of kNN classifier...
K-nearest neighbor(KNN) classification algorithm performs slowly for large scale training set and hi...
[[abstract]]This paper presents a novel algorithm for the field programmable gate array (FPGA) reali...
13th International Conference on Neural Informational Processing -- OCT 03-06, 2006 -- Hong Kong, PE...
[[abstract]]This paper presents a novel algorithm for field programmable gate array (FPGA) realizati...
International audienceK-Nearest Neighbor (kNN) is an efficient algorithm used in many applications, ...
This paper describes how to implement a partially connected neural network by Giga-Ops Spectrum G800...
Bioinformatics data tend to be highly dimensional in nature thus impose significant computational de...
This paper describes the implementation of a partially connected neural network using FPGAs (Field P...
Abstract: This paper presents a hardware efficient logic for fault detection and classification in t...
The paper presents the first results of the prototype implementation of the eXtended learning Classi...
This paper describes our implementation of a multilayer perceptron (MLP) learning network on a Cyclo...
The thesis deals with image classifiers and their implementation using FPGA technology. There are di...
Data classification has improved significantly over time and nowadays is used in a variety of purpos...
Many industrial applications concerning pattern recognition techniques often demand to develop suite...
[[abstract]]A novel algorithm for field programmable gate array (FPGA) realization of kNN classifier...
K-nearest neighbor(KNN) classification algorithm performs slowly for large scale training set and hi...
[[abstract]]This paper presents a novel algorithm for the field programmable gate array (FPGA) reali...
13th International Conference on Neural Informational Processing -- OCT 03-06, 2006 -- Hong Kong, PE...
[[abstract]]This paper presents a novel algorithm for field programmable gate array (FPGA) realizati...
International audienceK-Nearest Neighbor (kNN) is an efficient algorithm used in many applications, ...
This paper describes how to implement a partially connected neural network by Giga-Ops Spectrum G800...
Bioinformatics data tend to be highly dimensional in nature thus impose significant computational de...
This paper describes the implementation of a partially connected neural network using FPGAs (Field P...
Abstract: This paper presents a hardware efficient logic for fault detection and classification in t...
The paper presents the first results of the prototype implementation of the eXtended learning Classi...
This paper describes our implementation of a multilayer perceptron (MLP) learning network on a Cyclo...
The thesis deals with image classifiers and their implementation using FPGA technology. There are di...
Data classification has improved significantly over time and nowadays is used in a variety of purpos...
Many industrial applications concerning pattern recognition techniques often demand to develop suite...