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  4. Low Complexity Design of Logistic Distance Metric Adaptive Filter for Impulsive Noise Environments
 
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Low Complexity Design of Logistic Distance Metric Adaptive Filter for Impulsive Noise Environments

Source
IEEE Transactions on Very Large Scale Integration VLSI Systems
ISSN
10638210
Date Issued
2024-01-01
Author(s)
Ghosh, Shouharda
Meher, Pramod Kumar
Ray, Dwaipayan
George, Nithin V. 
DOI
10.1109/TVLSI.2024.3407732
Volume
32
Issue
8
Abstract
In many practical scenarios, non-Gaussian noise contaminates the desired signal and introduces outliers. The recently proposed logistic distance metric adaptive filter (LDMAF) outperforms the existing algorithms and provides better performance in the presence of such outliers. There is a need for efficient hardware architecture for the implementation of LDMAF. This article proposes an efficient VLSI architecture of LDMAF. The implementation of error-gradient function of LDMAF puts significant implementation problem in terms of delay and cost. We introduce here an efficient tangent-based piecewise linear (TPL) approximation algorithm for implementing the corresponding architecture. The proposed approach improves the power, performance, and area (PPA) metrics over state-of-the-art implementations of other robust algorithms while meeting system performance within an acceptable deviation. 1063-8210
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URI
https://d8.irins.org/handle/IITG2025/29216
Subjects
Adaptive filters | approximate computing | impulsive noise | logistic distance metric adaptive filter (LDMAF) | piecewise linear approximation | system identification | VLSI architectures
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