전자공학회논문지C (Journal of the Korean Institute of Telematics and Electronics C)
- 제34C권1호
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- Pages.42-50
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- 1997
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- 1226-5853(pISSN)
학습 횟수 조절 신경 회로망을 이용한 영상 신호의 벡터 양자화
Vector Quantization of Image Signal using Larning Count Control Neural Networks
초록
Vector quantization has shown to be useful for compressing data related with a wide rnage of applications such as image processing, speech processing, and weather satellite. Neural networks of images this paper propses a efficient neural network learning algorithm, called learning count control algorithm based on the frquency sensitive learning algorithm. This algorithm can train a results more codewords can be assigned to the sensitive region of the human visual system and the quality of the reconstructed imate can be improved. We use a human visual systrem model that is a cascade of a nonlinear intensity mapping function and a modulation transfer function with a bandpass characteristic.
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