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Industrial Smoke Image Segmentation Based on a New Algorithm of Cross-Entropy Model

机译:基于新跨熵模型算法的工业烟雾图像分割

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Smoke segmentation from the industrial images is a key concern of environmental monitoring. As the similarities between the gray value of the background and the smoke, the existing segmentation algorithms are difficult to accurately segment the target smoke. In this paper, we construct a cross-entropy based industrial smoke image segmentation by integrating the iterative convolution-thresholding. Specially, we use the iterative convolution-thresholding to implicitly represent the interface of each image domain through a characteristic function. We further perform the combination of a reg-ularization term and a fidelity term in the cross-entropy model. In the proposed algorithm, the fidelity term is first converted into the product of the characteristic function and the cross-entropy function. Then the functional of the characteristic function is used to obtain the regularization term by the approach of thermonuclear convolution approximation. The experimental results demonstrate that our proposal has a more accurate segmentation effect and higher segmentation efficiency.
机译:来自工业形象的烟雾细分是环境监测的关键问题。作为背景和烟雾的灰度值之间的相似性,现有的分割算法难以准确地分割目标烟雾。在本文中,我们通过整合迭代卷积阈值来构建基于跨熵的工业烟雾图像分割。特别是,我们使用迭代卷积阈值依赖性来通过特征函数隐式代表每个图像域的接口。我们进一步在交叉熵模型中执行reg-ulization项和保真术语的组合。在所提出的算法中,首先将保真术语转换为特征函数和交叉熵函数的乘积。然后,特征函数的功能用于通过热核卷积近似的方法获得正则化术语。实验结果表明,我们的建议具有更准确的分割效果和更高的分割效率。

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