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Adaptive Multi-Threshold Object Selection in Digital Images

机译:数字图像中的自适应多阈值对象选择

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摘要

A new algorithm for adaptive selection of compact and extended objects is investigated. The algorithm is based on the initial multi-threshold processing of the original monochrome image, which creates a set of binary layers. On their basis, using the percolation effect, a three-dimensional hierarchical structure is constructed that allows solving the optimization problem, i.e. choosing the best binary layer for each object in terms of the geometric criterion used. The key idea of the algorithm is that the solution is based on a posteriori information about the properties of objects that can be selected from each binary layer. Using this information, you can successfully solve adaptive selection problems, while maintaining the shape of each object of interest, despite the nonstationary background. In the test problem of detection against the background of Gaussian noise, the use of selection provides a gain in the signal-to-noise ratio of at least 6 dB. The results of selection of objects on typical noisy model and real television image show the efficiency and effectiveness of selection of compact (spotted) and elongated objects of interest with minimal distortion of their borders at a fairly low signal-to-noise ratio.
机译:研究了一种新的自适应选择紧凑型和扩展对象的算法。该算法基于原始单色图像的初始多阈值处理,其创建一组二进制层。在使用渗透效应的基础上,构建了三维层次结构,允许解决优化问题,即在所使用的几何标准方面为每个对象选择最佳二进制层。该算法的关键概念是该解决方案基于关于可以从每个二进制层中选择的对象的属性的后验信息。尽管非标准的背景,但是使用此信息可以成功解决自适应选择问题,同时保持每个感兴趣对象的形状。在对高斯噪声背景的检测的测试问题中,使用选择提供了至少6dB的信噪比的增益。典型嘈杂模型和实际电视图像上的对象选择结果表明,在相当低的信噪比下,它们的边界的最小失真的效率和有效性的效率和有效性。

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