梯度重构与迭代极小值标定的分水岭分割算法
Watershed Segmentation Algorithm Based on Gradient Recovery and Iterative Minima Calibration
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摘要: 分割是面向对象遥感影像分类的首要步骤和重要环节, 但是传统的分水岭分割算法往往产生过分割现象, 导致分割的地物影像对象过于细碎。研究发现, 可以从微分算子计算梯度和区域合并2个方面对分水岭分割算法进行改进。利用Sobel算子进行梯度运算时, 引入各波段熵值, 以每个波段的熵值在全波段的比率作为梯度权重, 进行梯度重构; 同时对区域合并极小值阈值标定进行改进, 通过前后景标定后, 代入前景均值与后景均值的迭代计算, 获得极小值阈值, 完成影像分割。经过结果对比分析, 此方法在较好地解决过分割的同时, 也尽可能地保留了地物的边缘信息, 能够更好地支持后续的地物对象分析和检测。Abstract: Segmentation is the primary step and an important link in object-oriented remote sensing image classification. However, traditional watershed segmentation algorithms often lead to over-segmentation, causing the segmented ground feature image objects to be overly fragmented. It is found that the watershed segmentation algorithm can be improved from two aspects: the calculation of gradient by using differential operators and region merging. When performing gradient operations by using the Sobel operator, the entropy values of each band are introduced, and the ratio of entropy value of each band to the total entropy value of all bands is used as the gradient weight for gradient recovery. Meanwhile, for the improvement of the minima calibration for region merging, after calibrating the foreground and background, iterative calculation of the foreground mean and background mean is substituted to obtain the minima threshold and complete the image segmentation. Through comparative analysis of the results, this method not only solves the problem of over-segmentation well, but also ensures the edge information of ground features to the greatest extent possible, providing better support for subsequent analysis and detection of ground feature objects.