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Automatic pattern separation of jacquard warp-knitted fabric by supervised multi-scale Markov model

机译:监督多尺度马尔可夫模型自动提花经编图案分离

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In this study, an automatic pattern separation approach using supervised multi-scale Markov model has been proposed. Gaussian low-pass filter has been used to smoothen the jacquard texture produced by various lapping movements, and the noise appearing during the capturing procedure is eliminated. Then the pyramidal multi-scale wavelet decomposition is adopted to lessen calculation burden and prepare specimens for subsequent pattern separation. In view of the non-stationary jacquard fabric image signals, the modified multi-scale MRF model is presented, which can fully capture and utilize correlations over sets of both inter-scale sub-images and intra-scale neighborhoods, and take the influence of weave structure and illumination condition into account. Finally, a supervised parameter estimation method is put forward to carry out pattern separation in Bayesian frame, in which the cost function changes with the decomposition scale, and parts of parameters are obtained by training in advance. Experimental results show that the proposed method is suitable for the pattern separation of jacquard warp-knitted fabric.
机译:在这项研究中,提出了一种使用监督多尺度马尔可夫模型的自动模式分离方法。高斯低通滤波器已被用于平滑由各种研磨运动产生的提花纹理,并且消除了在捕获过程中出现的噪声。然后采用金字塔式多尺度小波分解来减轻计算负担,为后续的模式分离准备样本。针对非平稳提花织物图像信号,提出了改进的多尺度MRF模型,该模型可以充分捕获和利用尺度间子图像和尺度内邻域集的相关性,并且可以编织结构和照明条件。最后,提出了一种监督参数估计方法,在贝叶斯框架中进行模式分离,其中成本函数随分解规模而变化,并通过训练预先获得部分参数。实验结果表明,该方法适用于提花经编织物的图案分离。

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