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Semantic Segmentation for Ships Detection from Satellite Imagery

机译:卫星图像船舶检测的语义分割

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Ships detection, as well as other object detection, and localization tasks in satellite images are the central problems in the field where remote sensing and computer vision coalesce. They are commonly used in different areas like environment monitoring, fishery management, logistics, insurance and many others. This paper provides an approach based on the Convolutional Neural Networks (CNN) as the main algorithm/instrument for detecting ships in optical satellite images of different spatial resolution. For achieving the best performance, we divided the problem into stages, which gave a possibility to control the quality of intermediate outcomes. The proposed method contains two parts: 1) building a classifier based on XCeption, 2) using baseline Unet model with Resnet18 as encoder for exact segmentation which allow us to achieve accuracy of more than 84%.
机译:船舶检测以及卫星图像中的其他对象检测以及本地化任务是遥感和计算机视觉聚结的领域中的核心问题。它们通常用于环境监测,渔业管理,物流,保险等不同领域。本文提供了一种基于卷积神经网络(CNN)的方法作为用于检测不同空间分辨率的光学卫星图像中的船舶的主要算法/仪器。为了实现最佳性能,我们将问题分为阶段,这使得能够控制中间结果的质量。所提出的方法包含两部分:1)构建基于Xcepion的分类器,2)使用基线UNET模型与Reset18为Encoder的精确分割,允许我们实现超过84%的准确性。

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