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An adaptive multi-threshold segmentation algorithm for complex images under unstable imaging environment

机译:不稳定成像环境下复杂图像的自适应多阈值分割算法

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摘要

Images acquired from actual manufacturing practice are difficult to segment for uncertainty surface quality of work-piece and unstable imaging environment, which may result in limited robustness for traditional image segmentation algorithms. Nevertheless, the result of image segmentation will affect the precision of subsequent feature extraction, image analysis and robot positioning. To address the above issues, an adaptive multi-threshold segmentation algorithm for complex images under unstable imaging environment is proposed to further improve the stability of an industrial vision system in a given inspection scheme. The proposed approach consists of three basic parts and each of them is indispensable for achieving high accuracy. Firstly, curve fitting with cubic spline interpolation to determine peaks and troughs of grey histogram by calculating function extremums, and then the higher greyscale between top-peak and sub-peak is selected as the initial lower threshold. Secondly, the initial upper threshold is constrained by calculating the probability density distribution of ROI. Thirdly, the upper threshold and lower threshold are iteratively calculated until the threshold range of ROI is achieved. The proposed algorithm was compared to state-of-the-art segmentation approaches in both synthetic and real images to demonstrate its superior performance.
机译:从实际制造实践中获取的图像难以用于工件和不稳定的成像环境的不确定性表面质量,这可能导致传统图像分割算法的鲁棒性有限。然而,图像分割的结果将影响随后的特征提取,图像分析和机器人定位的精度。为了解决上述问题,提出了一种在不稳定的成像环境下复杂图像的自适应多阈值分割算法,以进一步提高给定检查方案中的工业视觉系统的稳定性。所提出的方法由三个基本部件组成,每个基本部分都是实现高精度的必不可少的。首先,通过计算函数极值来确定具有立方样条插值的曲线,以确定灰度直方图的峰值和槽,然后选择顶部峰值和子峰之间的较高灰度作为初始阈值。其次,通过计算ROI的概率密度分布来限制初始上阈值。第三,迭代地计算上阈值和较低阈值,直到实现了ROI的阈值范围。将所提出的算法与合成和真实图像中的最先进的分段方法进行比较,以展示其优越的性能。

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