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首页> 外文期刊>International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences >EVALUATION OF SEMANTIC SEGMENTATION METHODS FOR DEFORESTATION DETECTION IN THE AMAZON
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EVALUATION OF SEMANTIC SEGMENTATION METHODS FOR DEFORESTATION DETECTION IN THE AMAZON

机译:亚马逊砍伐森林检测语义分割方法的评价

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摘要

Deforestation is a wide-reaching problem, responsible for serious environmental issues, such as biodiversity loss and global climate change. Containing approximately ten percent of all biomass on the planet and home to one tenth of the known species, the Amazon biome has faced important deforestation pressure in the last decades. Devising efficient deforestation detection methods is, therefore, key to combat illegal deforestation and to aid in the conception of public policies directed to promote sustainable development in the Amazon. In this work, we implement and evaluate a deforestation detection approach which is based on a Fully Convolutional, Deep Learning (DL) model: the DeepLabv3+. We compare the results obtained with the devised approach to those obtained with previously proposed DL-based methods (Early Fusion and Siamese Convolutional Network) using Landsat OLI-8 images acquired at different dates, covering a region of the Amazon forest. In order to evaluate the sensitivity of the methods to the amount of training data, we also evaluate them using varying training sample set sizes. The results show that all tested variants of the proposed method significantly outperform the other DL-based methods in terms of overall accuracy and F1-score. The gains in performance were even more substantial when limited amounts of samples were used in training the evaluated methods.
机译:森林砍伐是一个广泛的问题,负责严重的环境问题,如生物多样性损失和全球气候变化。亚马逊生物群系在过去几十年中含有大约十分之一的地球和第十分之一的生物量的约10%,在过去几十年中面临着重要的森林砍伐压力。因此,设计有效的森林砍伐检测方法是打击非法森林砍伐的关键,并帮助援助指导的公共政策的概念,以促进亚马逊的可持续发展。在这项工作中,我们实施并评估了一种基于完全卷积的深度学习(DL)模型的森林检测方法:Deeplabv3 +。我们将设计方法与先前提出的基于DL的方法(早期融合和暹罗卷积网络)获得的那些进行比较,使用不同日期获得的Landsat Oli-8图像,覆盖亚马逊森林的区域。为了评估方法对培训数据量的敏感性,我们还使用不同的训练样本集大小来评估它们。结果表明,所提出的方法的所有测试变体都在整体准确性和F1分数方面显着优于其他基于DL的方法。当使用有限量的样品在训练评估方法时,性能的增长更加重要。

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