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Coarse Image Region Segmentation Using Region- and Boundary-based Coupled MRF Models and Their PWM VLSI Implementation

机译:使用基于区域和基于边界的耦合MRF模型及其PWM VLSI实现的粗糙图像区域分割

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This paper proposes a novel region-based coupled Markov Random Field (MRF) model for coarse image region segmentation on silicon platforms. Coupled MRF models are classified into boundary- and region-based models, in which hidden variables are referred to as a line process and a label process, respectively. These hidden variables are crucial for detecting discontinuities in motion, intensity, color, and depth in visual scenes. For a coarse image region segmentation task, we address a region-based coupled MRF model with hidden phase variables. It is shown that the region-based coupled MRF model has an advantage over the resistive-fuse network, which is a boundary-based coupled MRF model, in dealing with the hidden variables explicitly. These models work complementarily for a coarse image region segmentation task. For real-time region segmentation operation, we have designed a merged analog/digital CMOS circuit implementing both functions of the boundary- and region-based coupled MRF models using a pulse modulation approach.
机译:本文提出了一种用于硅平台上的粗糙图像区域分割的基于新的基于区域的耦合马尔可夫随机场(MRF)模型。耦合MRF模型分为基于边界和区域的模型,其中隐藏变量分别被称为行过程和标签过程。这些隐藏变量对于检测视觉场景中的运动,强度,颜色和深度的不连续性是至关重要的。对于粗略图像区域分割任务,我们通过隐藏的相位变量来解决基于区域的耦合MRF模型。结果表明,基于区域的耦合MRF模型在电阻熔丝网络上具有优于基于基于边界的耦合MRF模型的优点,其在明确地处理隐藏变量。这些模型互补地用于粗略图像区域分割任务。对于实时区域分割操作,我们设计了使用脉冲调制方法实现了实现基于边界和区域的耦合MRF模型的功能的合并模拟/数字CMOS电路。

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