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Combining active learning and transductive support vector machines for sea ice detection

机译:用于海冰检测的主动学习和变频支持向量机

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Sea ice can cause some of the most prominent marine disasters in polar and high latitude regions, and remote sensing technology provides an important means to detect such hazards. The accuracy of sea ice detection depends on the number and quality of labeled samples, but because of environmental conditions in sea ice regions, acquisition of labeled samples can be time-consuming and labor-intensive. To solve this problem, we propose a combined active learning (AL) and semisupervised learning (SSL) classification framework for sea ice detection. At first, we acquire most informative and representative samples by AL; then labeled samples acquired by AL are used as the initial labeled samples for SSL, in this framework, we not only choose the most valuable samples but also use the large number of unlabeled samples to enhance the classification accuracy. In AL phase, we use two different sampling strategies: uncertainty and diversity. In the SSL phase, we utilize a sampling function integrating AL to acquire semilabeled samples, and we use a transductive support vector machine as a classification model. We analyze three remote sensing images (hyperspectral and multispectral) and conduct detailed comparative analyses between the proposed method and others. Our proposed method achieves the highest classification accuracies (89.9734%, 97.4919%, and 89.7166%) in both experiments. These results show that the proposed method exhibits better overall performance than other methods and can be effectively applied to sea ice detection using remote sensing. (C) 2018 Society of Photo-Optical Instrumentation Engineers (SPIE)
机译:海冰可能导致极地和高纬度地区的一些最突出的海洋灾害,遥感技术提供了检测此类危害的重要手段。海冰检测的准确性取决于标记样品的数量和质量,但由于海冰区域的环境条件,收购标记样品可能是耗时和劳动密集型的。为了解决这个问题,我们提出了一种用于海冰检测的联合主动学习(AL)和半体育学习(SSL)分类框架。首先,我们通过al获得最具信息丰富的和代表性样本;然后由Al获取的标记样本用作SSL的初始标记样本,在此框架中,我们不仅选择最有价值的样本,还使用大量未标记的样本来提高分类准确性。在AL阶段,我们使用两种不同的抽样策略:不确定性和多样性。在SSL阶段,我们利用集成AL的采样功能来获取半标带样品,并且我们使用转换支持向量机作为分类模型。我们分析了三个遥感图像(高光谱和多光谱),并在所提出的方法和其他方面进行详细的比较分析。我们所提出的方法在两种实验中实现了最高分类的准确性(89.9734%,97.4919%和89.7166%)。这些结果表明,该方法表现出比其他方法更好的整体性能,并且可以使用遥感有效地应用于海冰检测。 (c)2018年光学仪表工程师协会(SPIE)

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