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Side scan sonar image segmentation based on neutrosophic set and quantum-behaved particle swarm optimization algorithm

机译:基于中智集和量子行为粒子群优化算法的侧扫声纳图像分割

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摘要

To fulfill side scan sonar (SSS) image segmentation accurately and efficiently, a novel segmentation algorithm based on neutrosophic set (NS) and quantum-behaved particle swarm optimization (QPSO) is proposed in this paper. Firstly, the neutrosophic subset images are obtained by transforming the input image into the NS domain. Then, a co-occurrence matrix is accurately constructed based on these subset images, and the entropy of the gray level image is described to serve as the fitness function of the QPSO algorithm. Moreover, the optimal two-dimensional segmentation threshold vector is quickly obtained by QPSO. Finally, the contours of the interested target are segmented with the threshold vector and extracted by the mathematic morphology operation. To further improve the segmentation efficiency, the single threshold segmentation, an alternative algorithm, is recommended for the shadow segmentation by considering the gray level characteristics of the shadow. The accuracy and efficiency of the proposed algorithm are assessed with experiments of SSS image segmentation.
机译:为了准确有效地完成侧扫声纳(SSS)图像分割,提出了一种基于中智集(NS)和量子行为粒子群优化(QPSO)的分割算法。首先,通过将输入图像转换为NS域获得中智子集图像。然后,基于这些子集图像精确构建共现矩阵,并描述灰度图像的熵作为QPSO算法的适应度函数。此外,通过QPSO可以快速获得最佳的二维分割阈值矢量。最后,将感兴趣目标的轮廓与阈值向量进行分割,并通过数学形态学运算将其提取。为了进一步提高分割效率,建议通过考虑阴影的灰度特性,将单阈值分割(一种替代算法)用于阴影分割。通过SSS图像分割实验评估了所提算法的准确性和有效性。

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