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Unsupervised low-key image segmentation using curve evolution approach

机译:使用曲线演化方法的无监督低调图像分割

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Low-key images widely exist in imaging-based systems such as space telescopes, medical imaging equipment, machine vision systems. Unsupervised low-key image segmentation is an important process for image analysis or digital measurement in these applications. In this paper, a novel active contour model with the probability density function (PDF) of gamma distribution for image segmentation is proposed. The flexible gamma distribution is used to describe both of the heterogeneous foreground and dark background in a low-key image. Besides, an unsupervised curve initialization method is also designed in this paper, which helps to accelerate the convergence speed of curve evolution. The effectiveness of the proposed algorithm is demonstrated through comparison with the CV model. Finally, an industrial application based on proposed approach is described in this paper.
机译:低调图像广泛存在于基于成像的系统中,例如太空望远镜,医学成像设备,机器视觉系统。在这些应用中,无监督的低调图像分割是图像分析或数字测量的重要过程。本文提出了一种具有伽玛分布概率密度函数(PDF)的新型主动轮廓模型,用于图像分割。灵活的伽玛分布用于描述低调图像中的异质前景和深色背景。此外,本文还设计了一种无监督的曲线初始化方法,有助于加快曲线演化的收敛速度。通过与CV模型的比较证明了所提算法的有效性。最后,本文介绍了基于提出的方法的工业应用。

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