Speckle Reduction for Remote-sensing Images Using Contextual Hidden Markov Tree Model

Ming Yu Shih, Din Chang Tseng

研究成果: 會議貢獻類型會議論文同行評審

摘要

We propose a contextual hidden Markov tree (CHMT) model by adding intrascale dependences in the hidden Markov tree (HMT) model to capture more wavelet clustering property and apply the model for SAR image despeckling. Instead of directly adding the transition probabilities between two adjacent hidden states in the HMT model, we add transition probabilities between hidden states of a wavelet coefficient and several hidden states of the virtual coefficients that are duplicated from the adjacent coefficients of the considered coefficient, such that the merit of the HMT model is kept, and the persistent and clustering properties of wavelet coefficients are completed described in the model. In experiments, the proposed CHMT model produced better results than the HMT model produced for image despeckling. Furthermore, with the same results, the CHMT model needs fewer iterations than the HMT model needs.

原文???core.languages.en_GB???
頁面1663-1665
頁數3
出版狀態已出版 - 2003
事件2003 IGARSS: Learning From Earth's Shapes and Colours - Toulouse, France
持續時間: 21 7月 200325 7月 2003

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???event.eventtypes.event.conference???2003 IGARSS: Learning From Earth's Shapes and Colours
國家/地區France
城市Toulouse
期間21/07/0325/07/03

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