论文标题

高光谱遥感基准数据库,用于隔离森林引导的漏油检测

Hyperspectral Remote Sensing Benchmark Database for Oil Spill Detection with an Isolation Forest-Guided Unsupervised Detector

论文作者

Duan, Puhong, Kang, Xudong, Ghamisi, Pedram

论文摘要

近年来,由于海洋漏油事故严重影响环境,自然资源和沿海居民的生活,近年来,漏油事件引起了人们的关注。高光谱遥感图像提供了丰富的光谱信息,这有助于监测复杂的海洋场景中的漏油事件。但是,大多数现有方法基于受监督和半监督的框架,以检测高光谱图像(HSIS)的漏油事件,这些框架需要大量努力来注释一定数量的高质量训练集。在这项研究中,我们首次尝试基于HSIS的隔离林开发一种无监督的漏油检测方法。首先,考虑到不同频段之间的噪声水平有所不同,因此利用了噪声方差估计方法来评估不同频段的噪声水平,并且消除了因严重噪声而损坏的频段。其次,使用内核主成分分析(KPCA)来降低HSIS的高维度。然后,用隔离林估计属于海水和溢油类别之一的每个像素的概率,并且在检测到的概率上使用簇算法自动生产一组伪标记的训练样品。最后,可以通过在降低降低数据上执行支持向量机(SVM)来获得初始检测图,然后使用扩展的随机助步器(ERW)模型进一步优化初始检测结果,以提高漏油的检测准确性。关于我们自己创建的空气传播高光谱溢油数据(HOSD)的实验表明,该方法在其他最先进的检测方法方面获得了卓越的检测性能。

Oil spill detection has attracted increasing attention in recent years since marine oil spill accidents severely affect environments, natural resources, and the lives of coastal inhabitants. Hyperspectral remote sensing images provide rich spectral information which is beneficial for the monitoring of oil spills in complex ocean scenarios. However, most of the existing approaches are based on supervised and semi-supervised frameworks to detect oil spills from hyperspectral images (HSIs), which require a huge amount of effort to annotate a certain number of high-quality training sets. In this study, we make the first attempt to develop an unsupervised oil spill detection method based on isolation forest for HSIs. First, considering that the noise level varies among different bands, a noise variance estimation method is exploited to evaluate the noise level of different bands, and the bands corrupted by severe noise are removed. Second, kernel principal component analysis (KPCA) is employed to reduce the high dimensionality of the HSIs. Then, the probability of each pixel belonging to one of the classes of seawater and oil spills is estimated with the isolation forest, and a set of pseudo-labeled training samples is automatically produced using the clustering algorithm on the detected probability. Finally, an initial detection map can be obtained by performing the support vector machine (SVM) on the dimension-reduced data, and then, the initial detection result is further optimized with the extended random walker (ERW) model so as to improve the detection accuracy of oil spills. Experiments on airborne hyperspectral oil spill data (HOSD) created by ourselves demonstrate that the proposed method obtains superior detection performance with respect to other state-of-the-art detection approaches.

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