A LSTM-UNet and Zero Padding technique to detect deforestation in Amazon area

Irham Muhammad Fadhil, A. M. Arymurthy
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引用次数: 1

Abstract

The Amazon Rainforest is the largest forest in the world that stores various kinds of biodiversity, both flora and fauna. The protection of the integrity and sustainability of this rainforest is a concern for the entire international community. One form of protection is by mapping the deforestation areas by using deep learning. This paper proposes a novel Deep Learning method that combines U-Net with LSTM and Zero Padding in each convolution layer in U-net to map deforestation areas. Boundary between deforested and non-deforested area is made to boost the overall precision of the model. Generally, the proposed method indicates good accuracy in mapping the deforestation areas, which is 93.35% with an F1-score of 93.82% and a low loss value of 0.1654, while boundary use slightly boosted the overall precision into 94.06% because the use of boundaries aims to limit areas with very narrow class differences.
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基于LSTM-UNet和零填充技术的亚马逊森林砍伐检测
亚马逊雨林是世界上最大的森林,拥有各种生物多样性,包括植物群和动物群。保护热带雨林的完整性和可持续性是整个国际社会关注的问题。一种保护形式是通过使用深度学习绘制毁林区域。本文提出了一种新的深度学习方法,该方法将U-Net与LSTM相结合,并在U-Net的每个卷积层中使用零填充来绘制森林砍伐区域。为了提高模型的整体精度,对毁林区和非毁林区进行了边界划分。总体而言,本文方法对森林砍伐区域的映射精度较高,为93.35%,f1得分为93.82%,损失值较低,为0.1654,而边界的使用略微提高了整体精度,达到94.06%,因为使用边界的目的是限制类别差异非常小的区域。
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