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AN UNSUPERVISED LABELING APPROACH FOR HYPERSPECTRAL IMAGE CLASSIFICATION

机译:超光图像分类的无监督标记方法

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The application of hyperspectral image analysis for land cover classification is mainly executed in presence of manually labeled data. The ground truth represents the distribution of the actual classes and it is mostly derived from field recorded information. Its manual generation is ineffective, tedious and very time-consuming. The continuously increasing amount of proprietary and publicly available datasets makes it imperative to reduce these related costs. In addition, adequately equipped computer systems are more capable of identifying patterns and neighbourhood relationships than a human operator. Based on these facts, an unsupervised labeling approach is presented to automatically generate labeled images used during the training of a convolutional neural network (CNN) classifier. The proposed method begins with the segmentation stage where an adapted version of the simple linear iterative clustering (SLIC) algorithm for dealing with hyperspectral data is used. Consequently, the Hierarchical Agglomerative Clustering (HAC) and Fuzzy C-Means (FCM) algorithms are employed to efficiently group similar superpixels considering distances with respect to each other. The distinct utilization of these clustering techniques defines a complementary stage for overcoming class overlapping during image generation. Ultimately, a CNN classifier is trained using the computed image to pixel-wise predict classes on unseen datasets. The labeling results, obtained using two hyperspectral benchmark datasets, indicate that the current approach is able to detect objects boundaries, automatically assign class labels to the entire dataset and to classify new data with a prediction certainty of 90%. Additionally, this method is also capable of achieving better classification accuracy and visual correspondence with reality than the ground truth images.
机译:Hyperspectral图像分析对陆地覆盖分类的应用主要是在手动标记数据的情况下执行。地面真理代表了实际类的分布,它主要来自现场记录的信息。它的手册生成无效,乏味且非常耗时。不断增加的专有和公共数据集数量使得能够降低这些相关成本。此外,装备充分的计算机系统更能够识别比人类运营商的模式和邻居关系。基于这些事实,提出了无监督的标签方法以自动生成在卷积神经网络(CNN)分类器的训练期间使用的标记图像。所提出的方法从分割阶段开始,使用用于处理高光谱数据的简单线性迭代聚类(SLIC)算法的适应版本。因此,采用分层附聚类聚类(HAC)和模糊C-MEAR(FCM)算法,以有效地将相似的超像素彼此考虑距离。这些聚类技术的不同利用率定义了用于在图像生成期间克服类重叠的互补阶段。最终,使用计算的图像训练CNN分类器,以在看不见的数据集上的Pixel-Wise预测类。使用两个超光线基准数据集获得的标签结果表明当前方法能够检测对象边界,自动将类标签分配给整个数据集,并以预测确定为90%的新数据。另外,该方法还能够实现比地面真理图像更好的分类准确性和视觉对应关系。

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