Linear Prediction of Multispectral Images Per Pel Using Classification

영역분류를 이용한 다분광 영상 데이터의 화소 단위 선형 예측 기법

  • 조윤상 (충남대학교 전자공학과, 통신실험실) ;
  • 구한승 (충남대학교 전자공학과, 통신실험실) ;
  • 나성웅 (충남대학교 전자공학과, 통신실험실)
  • Published : 2000.11.01

Abstract

In this paper, we will present a lossy data compression method for coding multispectral images. The proposed method uses both spatial and spectra] correlation inherent in multispectral images. First, band 2 and band 6 are vector quantized. Secondly, band 4 is estimated with the quantized band 2 using the predictive coding. Errors of band 4 are encoded at a second stage based on the magnitude of the errors. Thirdly, remaining bands are calculated with the quantized band 2 and band 4. Errors of residual bands are wavelet transformed and then we apply the SPIHT coding on the transformed coefficients. We classify classes without extra information transmitting and then use linear predictor. And errors can be encoded by SPIHT coding at any target rate we are want. It is shown that this method has better performance than FPVQ. Average PSNR rises 0.645 dB at the same bit rate.

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