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An Underwater Laser Image Segmentation Algorithm Based on Pulse Coupled Neural Network and Morphology

机译:一种基于脉冲耦合神经网络和形态学的水下激光图像分割算法

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Range-gated underwater laser imaging technology, which is very promising in oceanic research, deep sea exploration, and robotic works, is one of the most effective methods to suppress the effect of backward scattering of water medium. However, the special features of underwater laser images, such as speckle noise and nonuniform illumination, bring great difficulty for image segmentation. In this paper, an image segmentation algorithm which combines improved pulse coupled neural network with morphology is proposed. The morphology is applied to eliminate the speckle noise, while the cross-entropy is calculated as an optimization criterion for determination of the optimal segmentation. The experimental results of the proposed algorithm are compared with those of NCut, Mean-shift, Fuzzy C-means, and Watershed methods, and the quantitative evaluation confirms that the proposed algorithm is significantly superior to the other four algorithms in segmentation accuracy and robustness against speckle noise and nonuniform illumination.
机译:广泛门控水下激光成像技术,在海洋研究,深海勘探和机器人工作中非常有前途,是抑制水介质后向散射效果的最有效方法之一。然而,水下激光图像的特殊特征,例如散斑噪声和非均匀照明,对图像分割带来了很大的困难。本文提出了一种与形态学的改进脉冲耦合神经网络相结合的图像分割算法。应用形态以消除斑点噪声,而跨熵计算为用于确定最佳分割的优化标准。将所提出的算法的实验结果与Ncut,平均换档,模糊C型和流域方法进行比较,并且定量评估证实,所提出的算法显着优于分割精度和鲁棒性的其他四种算法斑点噪声和非均匀照明。

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