A Lightweight CNN Architecture for Land Classification on Satellite Images

Gourab Patowary, Meenakshi Agarwalla, S. Agarwal, M. Sarma
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引用次数: 5

Abstract

Land cover classification using satellite images is an important tool in the study of terrestrial resources. Satellite based information is presently available as huge sets of high resolution images from a large number of satellites like Sentinel, Landsat-8, etc. Land cover classification from these images is a difficult task because of very large sized data and high variation types. Deep Neural Networks can play a vital role in this regard and can perform classification on these large sized data. Related works in this field have used lighter models and included a large number of handcrafted parameters which requires domain knowledge on the subject. It is realised that most models are too shallow for such a complicated image. In this paper, a deeper Convolutional Neural Network (CNN) model without any satellite image specific parameters is proposed. On SAT4 and SAT6 images, our 13-layered network has achieved better accuracy upto 99.84% and 99.47% which is state-of-the-art. It is still called lightweight model because most models in Artificial Intelligence(AI)-CNN are much deeper and larger than ours.
用于卫星图像土地分类的轻量级CNN架构
利用卫星影像进行土地覆被分类是陆地资源研究的重要工具。目前,基于卫星的信息是来自大量卫星(如Sentinel, Landsat-8等)的大量高分辨率图像。从这些图像中进行土地覆盖分类是一项艰巨的任务,因为数据量非常大,变化类型也很高。深度神经网络可以在这方面发挥至关重要的作用,并且可以对这些大型数据进行分类。该领域的相关工作使用了较轻的模型,并包含大量手工制作的参数,这需要该主题的领域知识。人们意识到,对于如此复杂的图像,大多数模型都太浅了。本文提出了一种不含卫星图像特定参数的深度卷积神经网络(CNN)模型。在SAT4和SAT6图像上,我们的13层网络的准确率达到了99.84%和99.47%,达到了最先进的水平。它仍然被称为轻量级模型,因为人工智能(AI)-CNN中的大多数模型都比我们的模型更深更大。
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