분산 자료에 대한 초완비 표현 방법

A method of overcomplete representation for distributed data

  • 이상철 (재능대학 컴퓨터로봇과) ;
  • 박종우 (재능대학 컴퓨터로봇과) ;
  • 곽칠성 (재능대학 디지털정보전자과)
  • 발행 : 2007.07.11

초록

This paper propose a method for representing distributed data of sensor networks. The proposed method is based on a general distributed regression framework that models sensor data by fitting a global function to each of the local measurements and explores the possible extensions of distribution regression by using complex signal representations. In order to reduce the amount of processed data and the required communication, the signal model has to be as compact as possible, with the ability to restore the arbitrary measurements. To achieve this requirement, data compression step is included, where the basis function set is changed to an overcomplete set. This have better advantages in case of nonstationary signal modeling than complete base representation.

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