[[abstract]]A novel hardware architecture for c-means clustering is presented in this paper. Our architecture is fully pipelined for both the partitioning and centroid computation operations so that multiple training vectors can be concurrently processed. A simple divider circuit based on lookup table, multiplication and shift operations is employed for reducing both the area cost and latency for centroid computation. The proposed architecture is used as a hardware accelerator for a softcore NIOS CPU implemented on an FPGA device for physical performance measurement. Numerical results reveal that our design is an effective solution with low area cost and high computation performance for c-means design.
Processing power of pattern classification algorithms on conventional platforms has not been able to...
International audienceFPGA devices have been proving to be good candidates to accelerate application...
A multi-core FPGA-based clustering algorithm for high-throughput data intensive applications is pres...
[[abstract]]A novel hardware architecture for k-means clustering is presented in this paper. Our arc...
[[abstract]]A cost-effective parallel VLSI architecture for fuzzy c-means clustering is presented. T...
In this paper, a configurable many-core hardware/ software architecture is proposed to efficiently ...
K-means clustering has been widely used in processing large datasets in many fields of studies. Adva...
Abstract — In this paper, we propose a framework, KACU (standing for K-means with hArdware Centroid ...
[[abstract]]A cost-effective parallel VLSI architecture for fuzzy c-means clustering is presented. T...
This paper presents a novel hardware architecture for fast spike sorting. The architecture is able t...
High-performance document clustering systems enable similar documents to automatically self-organize...
We present a fast general-purpose algorithm for high-throughput clustering of data ”with a two dimen...
Clustering is the task of assigning a set of objects into groups (clusters) so that objects in the s...
In this paper we present a k-means clustering algorithm for the Versat architecture, a small and low...
In mapping the k-means algorithm to FPGA hardware, we examined algorithm level transforms that drama...
Processing power of pattern classification algorithms on conventional platforms has not been able to...
International audienceFPGA devices have been proving to be good candidates to accelerate application...
A multi-core FPGA-based clustering algorithm for high-throughput data intensive applications is pres...
[[abstract]]A novel hardware architecture for k-means clustering is presented in this paper. Our arc...
[[abstract]]A cost-effective parallel VLSI architecture for fuzzy c-means clustering is presented. T...
In this paper, a configurable many-core hardware/ software architecture is proposed to efficiently ...
K-means clustering has been widely used in processing large datasets in many fields of studies. Adva...
Abstract — In this paper, we propose a framework, KACU (standing for K-means with hArdware Centroid ...
[[abstract]]A cost-effective parallel VLSI architecture for fuzzy c-means clustering is presented. T...
This paper presents a novel hardware architecture for fast spike sorting. The architecture is able t...
High-performance document clustering systems enable similar documents to automatically self-organize...
We present a fast general-purpose algorithm for high-throughput clustering of data ”with a two dimen...
Clustering is the task of assigning a set of objects into groups (clusters) so that objects in the s...
In this paper we present a k-means clustering algorithm for the Versat architecture, a small and low...
In mapping the k-means algorithm to FPGA hardware, we examined algorithm level transforms that drama...
Processing power of pattern classification algorithms on conventional platforms has not been able to...
International audienceFPGA devices have been proving to be good candidates to accelerate application...
A multi-core FPGA-based clustering algorithm for high-throughput data intensive applications is pres...