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首页> 外文期刊>IEEE Journal of Oceanic Engineering >Segmentation of Sidescan Sonar Imagery Using Markov Random Fields and Extreme Learning Machine
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Segmentation of Sidescan Sonar Imagery Using Markov Random Fields and Extreme Learning Machine

机译:马尔可夫随机场和极限学习机对侧扫声纳图像进行分割

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As a widely used segmentation scheme, Markov random field (MRF) utilizes k-means clustering to calculate the initial model for sidescan sonar image segmentation. However, for the noise and intensity inhomogeneity nature of the sidescan sonar images, the segmentation results of k-means clustering have low accuracy, motivating us to use machine learning methods to initialize MRF. Meanwhile, an extreme learning machine (ELM), a supervised learning algorithm derived from the single-hiddenlayer feedforward neural networks, learns faster than randomly generated hidden-layer parameters and is superior to a support vector machine (SVM). Therefore, in this paper, we proposed a novel method for sidescan sonar image segmentation based on MRF and ELM. The proposed method segments sidescan sonar images in object-highlight, object-shadow, and sea-bottom reverberation areas. Specifically, we intend to use an ELM to get an initial model for MRF. Moreover, to improve the stability of an ELM, a simple ensemble ELM (SE-ELM) based on an ensemble algorithm is utilized to obtain the prediction model. In an SE-ELM, we use an ensemble of ELMs and majority votes to determine the prediction of testing data sets. Then, the classification results of the SE-ELM are utilized to initialize MRF, termed as SE-ELM-MRF. With features consisting of pixels of small image patches, our experiments on real sonar data indicate that the SE-ELM performs better than other machine learning methods such as ELM, kernel-based extreme learning machine, SVM, and convolutional neural networks. Moreover, using SE-ELM as the initial method in the proposed SE-ELM-MRF, the segmentation results are smoother and the segmentation process converges faster than the traditional MRF.
机译:作为一种广泛使用的分割方案,马尔可夫随机场(MRF)利用k均值聚类来计算用于侧扫声纳图像分割的初始模型。但是,由于侧扫声纳图像的噪声和强度不均匀性,k-means聚类的分割结果精度较低,这促使我们使用机器学习方法来初始化MRF。同时,极限学习机(ELM)是一种从单隐藏层前馈神经网络派生的监督学习算法,其学习速度比随机生成的隐藏层参数要快,并且优于支持向量机(SVM)。因此,本文提出了一种基于MRF和ELM的侧扫声纳图像分割新方法。所提出的方法在对象高光,对象阴影和海底混响区域中分割侧扫声纳图像。具体来说,我们打算使用ELM来获得MRF的初始模型。此外,为了提高ELM的稳定性,利用基于集成算法的简单集成ELM(SE-ELM)来获得预测模型。在SE-ELM中,我们使用ELM和多数票的集合来确定测试数据集的预测。然后,利用SE-ELM的分类结果初始化MRF,称为SE-ELM-MRF。通过包含小图像斑块像素的特征,我们对真实声纳数据的实验表明,SE-ELM的性能优于其他机器学习方法,例如ELM,基于内核的极限学习机,SVM和卷积神经网络。此外,在提出的SE-ELM-MRF中使用SE-ELM作为初始方法,分割结果比传统的MRF平滑,并且分割过程收敛得更快。

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