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Semantic Segmentation On Medium-Resolution Satellite Images Using Deep Convolutional Networks With Remote Sensing Derived Indices

机译:使用具有遥感衍生指标的深度卷积网络对中分辨率卫星图像进行语义分割

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Semantic Segmentation is a fundamental task in computer vision and remote sensing imagery. Many applications, such as urban planning, change detection, and environmental monitoring, require the accurate segmentation; hence, most segmentation tasks are performed by humans. Currently, with the growth of Deep Convolutional Neural Network (DCNN), there are many works aiming to find the best network architecture fitting for this task. However, all of the studies are based on very-high resolution satellite images, and surprisingly; none of them are implemented on medium resolution satellite images. Moreover, no research has applied geoinformatics knowledge. Therefore, we purpose to compare the semantic segmentation models, which are FCN, SegNet, and GSN using medium resolution images from Landsat-8 satellite. In addition, we propose a modified SegNet model that can be used with remote sensing derived indices. The results show that the model that achieves the highest accuracy RGB bands of medium resolution aerial imagery is SegNet. The overall accuracy of the model increases when includes Near Infrared (NIR) and Short-Wave Infrared (SWIR) band. The results showed that our proposed method (our modified SegNet model, named RGB-IR-IDX-MSN method) outperforms all of the baselines in terms of mean F1 scores.
机译:语义分割是计算机视觉和遥感影像中的一项基本任务。许多应用程序,例如城市规划,变更检测和环境监控,都需要精确的细分;因此,大多数分割任务是由人执行的。当前,随着深度卷积神经网络(DCNN)的发展,有许多旨在寻找最适合该任务的网络体系结构的工作。然而,所有的研究都是基于超高分辨率的卫星图像,这令人惊讶。它们都没有在中等分辨率的卫星图像上实现。而且,还没有研究应用地理信息学知识。因此,我们打算使用Landsat-8卫星的中等分辨率图像来比较语义分割模型,即FCN,SegNet和GSN。此外,我们提出了一种改进的SegNet模型,该模型可与遥感衍生指标一起使用。结果表明,实现中分辨率航空影像的最高精度RGB波段的模型是SegNet。当包含近红外(NIR)和短波红外(SWIR)频段时,模型的整体精度会提高。结果表明,我们提出的方法(改进的SegNet模型,称为RGB-IR-IDX-MSN方法)在平均F1得分方面优于所有基线。

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