Image VQ Using Two-Stage Self-Organizing Feature Map in the Transform Domain

2 단 Self-Organizing Feature Map 을 사용한 변환 영역 영상의 벡터 양자화

  • 이동학 (포항공과대학교 전자전기공학과) ;
  • 김영환 (포항공과대학교 전자전기공학과)
  • Published : 1995.03.01

Abstract

This paper presents a new classified vector quantization (VQ) technique using a neural network model in the transform domain. Prior to designing a codebook, the proposed approach extracts class features from a set of images using self-organizing feature map (SOFM) that has the pattern recognition characteristics and the same as VQ objective. Since we extract the class features from the training images unlike previous approaches, the reconstructed image quality is improved. Moreover, exploiting the adaptivity of the neural network model makes our approach be easily applied to designing a new vector quantizer when the processed image characteristics are changed. After the generalized BFOS algorithm allocates the given bits to each class, codebooks of each class are also generated using SOFM for the maximal reconstructed image quality. In experimental results using monochromatic images, we obtained a good visual quality in the reconstructed image. Also, PSNR is comparable to that of other classified VQ technique and is higher than that of JPEG baseline system.

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