Semantic Segmentation And Segmentation Refinement Using Machine Learning Case Study: Water Turbidity Segmentation

Daniel Sande Bona, A. Murni, P. Mursanto
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引用次数: 2

Abstract

Classical methods for image segmentation such as pixel thresholding, clustering, region growing, maximum likelihood have been used regularly and relied on for a long time. However, these classical methods have limitations, particularly on images where there are many overlapping pixel values between features, which is common in remote sensing images. The advent of machine learning, in particular, deep learning in computer vision and image analysis, has gained interest in the remote sensing field. Current deep learning architecture has been able to achieve high accuracy for image recognition, object detection, and segmentation. This study performed image segmentation on the coastal area with high water turbidity using Landsat-8 images. Currently, the standard tool to derive water turbidity data from Landsat-8 images is the level-2 plugin of SEADAS software. However, due to its rigorous processing method, the processing time using SEADAS Level-2 Plugin is quite long; for example, processing one Landsat-8 image took around 8 hours. As a consequence, the amount of time needed to process multiple images is increasing. Deep learning has advantages once the model trained, the inference or prediction process is quite fast. Therefore it has the potential to be used as a complementary tool to predict and segment high turbidity areas, because in deep learning. In this study, we implemented U-Net architecture with ResNet connection and used Generative-Adversarial Network (GAN) to refined segmentation results.
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使用机器学习的语义分割和分割改进案例研究:水浑浊度分割
传统的图像分割方法有像素阈值分割、聚类分割、区域生长分割、最大似然分割等。然而,这些经典方法存在局限性,特别是在遥感图像中常见的特征之间存在许多重叠像素值的图像上。机器学习的出现,特别是计算机视觉和图像分析中的深度学习,引起了遥感领域的兴趣。目前的深度学习架构已经能够在图像识别、目标检测和分割方面实现高精度。本研究利用Landsat-8图像对水体浑浊度高的沿海地区进行图像分割。目前,从Landsat-8图像中获取水浊度数据的标准工具是SEADAS软件的二级插件。但是,由于其严格的加工方法,使用SEADAS Level-2 Plugin的加工时间相当长;例如,处理一张Landsat-8图像大约需要8个小时。因此,处理多幅图像所需的时间正在增加。深度学习的优点是,一旦模型训练好,推理或预测过程相当快。因此,它有潜力被用作预测和分割高浊度区域的补充工具,因为在深度学习中。在本研究中,我们实现了带有ResNet连接的U-Net架构,并使用生成对抗网络(GAN)来改进分割结果。
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