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Temporal Feature Characterization via Dynamic Hidden Markov Tree

机译:动态隐马尔可夫树的时间特征刻画

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We present a novel multiscale dynamic methodology for automatic machine vision inspection aiming at characterizing temporal features of tobacco leaves. The image sequences of tobacco leaves are transformed from RGB color space to L*a*b* color space, which provides a uniform perceptual difference measure. The image sequences are then represented by a multiscale Dynamic Hidden Markov tree (DHMT), which models not only inter and intra scale dependences of wavelet coefficients, but also temporal dependences of foreground/background observational properties. Experimental results demonstrate temporal consistent mean and covariance values of model coefficients in a* color channel.
机译:我们提出了一种新颖的多尺度动态方法,用于自动机器视觉检查,旨在表征烟草叶片的时间特征。烟叶的图像序列从RGB颜色空间转换为L * a * b *颜色空间,从而提供了统一的感知差异度量。然后,图像序列由多尺度动态隐马尔可夫树(DHMT)表示,该树不仅建模小波系数的尺度间和尺度内依赖性,而且还模拟前景/背景观测属性的时间依赖性。实验结果表明,a *颜色通道中模型系数的时间一致性均值和协方差值。

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