MarshCover: A Web-based Tool for Estimating Vegetation Coverage in Marsh Images Using Convolutional Neural Networks

Lucas Welch, Xudong Liu
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Abstract

Marsh ecosystems are some of our most important, serving many crucial ecological functions. They are also rapidly changing, and it is vital for scientists to track these changes. This includes monitoring the health of marshes via estimating ground coverage by various grass species, a task that requires human labor to look at marsh images and manually estimate the coverage. Clearly, this task can be quite formidable. To automate this standard yet laborsome process, we developa web-based system, called MarshCover, that automates the process of estimating vegetation density in marsh images using convolutional neural networks (CNNs). MarshCover, to the best of our knowledge, is the first such tool available to biologists that uses CNNs for marsh vegetation estimations. In order to select effective CNN models for our MarshCover server, we conduct extensive empirical analyses of three distinct CNNs, i.e., LeNet-5, AlexNet and VGG-16, to compare their performances on a public marsh image dataset. To this end, we address two classification problems for this paper: a binary classification problem classifying points as vegetated and unvegetated, and a multiclass classification problem that classifies points into either an unvegetated class or one of five different species classes. Our experiments identify the VGG16 model as the best classifier to embed in MarshCover for both the binary classification problem and the full classification problem with a two model classifier (called two-shot). These two classifiers had accuracies on test data of 90.76% and 84% respectively. MarshCover is publicly available online.
MarshCover:一个基于网络的工具,用于使用卷积神经网络估计沼泽图像中的植被覆盖
沼泽生态系统是我们最重要的生态系统之一,具有许多重要的生态功能。它们也在迅速变化,科学家追踪这些变化是至关重要的。这包括通过估算各种草的地面覆盖范围来监测沼泽的健康状况,这项任务需要人力来查看沼泽图像并手动估算覆盖范围。显然,这项任务可能相当艰巨。为了自动化这个标准但费力的过程,我们开发了一个基于网络的系统,称为MarshCover,它使用卷积神经网络(cnn)自动估计沼泽图像中的植被密度。据我们所知,MarshCover是生物学家第一个使用cnn进行沼泽植被估计的工具。为了为我们的MarshCover服务器选择有效的CNN模型,我们对LeNet-5、AlexNet和VGG-16这三种不同的CNN进行了广泛的实证分析,以比较它们在公共沼泽图像数据集上的性能。为此,我们解决了两个分类问题:一个是将点分为有植被和无植被的二元分类问题,另一个是将点分为无植被类或五个不同物种类之一的多类分类问题。我们的实验表明,VGG16模型是嵌入到MarshCover中的最佳分类器,无论是用于二进制分类问题还是使用双模型分类器(称为two-shot)的完整分类问题。这两种分类器对测试数据的准确率分别为90.76%和84%。MarshCover在网上是公开的。
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