U-Net Based Water Region Segmentation for LAPAN-A2 MSI

Silmie Vidiya Fani, Kamirul, Astriany Noer, Stevry Yushady Ch Bissa
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引用次数: 1

Abstract

In this work, we analyzed the performance of a deep learning-based segmentation method in extracting water regions from multispectral imageries (MSI) taken by LAPANA2 microsatellite. The interested water regions include open seas and the river as well as their branches. The capability of detecting and segmenting the water component on LAPAN-A2 MSI is important as the satellite was dedicated to support maritime surveillance missions on Indonesian waters. Therefore, this capability will help future water object detection to encapsulate its region of interest, i.e., water. The segmentation has been performed by employing a state-of-the-art deep learning-based method, U-Net, using 696 training images. This method is considered due to its capability to provide promising accuracy without requiring an extremely extensive amount of training dataset. Based on our experiment, the trained U-Net has shown a satisfying result with an accuracy of 89.13% as measured using Intersection over Union (IoU) metric.
基于U-Net的LAPAN-A2 MSI水区分割
在这项工作中,我们分析了基于深度学习的分割方法从LAPANA2微卫星拍摄的多光谱图像(MSI)中提取水体区域的性能。感兴趣的水域包括公海和河流及其分支。LAPAN-A2 MSI的探测和分割水成分的能力非常重要,因为该卫星专门用于支持印度尼西亚水域的海上监视任务。因此,这种能力将有助于未来的水目标检测封装其感兴趣的区域,即水。使用最先进的基于深度学习的方法U-Net,使用696张训练图像进行分割。这种方法被认为是由于它能够提供有希望的准确性,而不需要非常广泛的训练数据集。基于我们的实验,训练后的U-Net显示出令人满意的结果,使用交集/联盟(IoU)度量测量的准确率为89.13%。
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