A RESEARCH OF TREE IMAGE MARKOV RANDOM FIELD SEGMENTATION METHOD BASED ON GENETIC ALGORITHM, 166-171.

Xiaosong Wang, Xiurong Li, Zheng Zhiqing, and Li Yuan

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