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Subspace based active contours with a joint distribution metric for semi-supervised natural image segmentation

机译:具有联合分布度量的基于子空间的活动轮廓,用于半监督自然图像分割

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In this paper, we present an efficient active contour with a joint distribution metric for semi-supervised natural image segmentation. Firstly, we project an RGB image into two-dimensional subspace and draw a polygon curve around the Region of Interest (ROI) as the initial evolving curve. Then, we model the regional statistics in terms of joint probability distributions and propose an effective distribution metric to regularize the active contours for evolution. Subsequently, we convert the resultant zero level set function into binary pattern and find all the 8-connected regions. Finally, the largest region is selected as the desired ROI and smoothed with a circular averaging filter so that the corresponding final segmentation result can be obtained. Meanwhile, the proposed approach also features fast convergence and easy implementation in comparison with the traditional methods, which need a laborious process of re-initializing the zero level set in terms of a sign distance function (SDF) periodically. The experiments show the promising results.
机译:在本文中,我们提出了一种具有联合分布度量的有效主动轮廓,用于半监督自然图像分割。首先,我们将RGB图像投影到二维子空间中,并在感兴趣区域(ROI)周围绘制多边形曲线作为初始演化曲线。然后,我们根据联合概率分布对区域​​统计数据进行建模,并提出有效的分布指标来规范活动等值线的演化。随后,我们将所得的零电平设置函数转换为二进制模式,并找到所有8个相连的区域。最后,将最大区域选择为所需的ROI,并使用圆形平均滤波器对其进行平滑处理,以便获得相应的最终分割结果。同时,与传统方法相比,所提出的方法还具有快速收敛和易于实现的特点,传统方法需要费时的过程来周期性地重新初始化根据符号距离函数(SDF)设置的零电平。实验表明了有希望的结果。

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