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首页> 外文期刊>Ecological informatics: an international journal on ecoinformatics and computational ecology >Applying machine learning based on multiscale classifiers to detect remote phenology patterns in Cerrado savanna trees
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Applying machine learning based on multiscale classifiers to detect remote phenology patterns in Cerrado savanna trees

机译:应用基于多尺度分类器的机器学习来检测Cerrado稀树草原树木的远程物候模式

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Plant phenology is one of the most reliable indicators of species responses to global climate change, motivating the development of newtechnologies for phenological monitoring. Digital cameras or near remote systems have been efficiently applied as multi-channel imaging sensors, where leaf color information is extracted from the RGB (Red, Green, and Blue) color channels, and the changes in green levels are used to infer leafing patterns of plant species. In this scenario, texture information is a great ally for image analysis that has been little used in phenology studies. We monitored leaf-changing patterns of Cerrado savanna vegetation by taking daily digital images. We extract RGB channels from the digital images and correlate them with phenological changes. Additionally, we benefit from the inclusion of textural metrics for quantifying spatial heterogeneity. Our first goals are: (1) to test if color change information is able to characterize the phenological pattern of a group of species; (2) to test if the temporal variation in image texture is useful to distinguish plant species; and (3) to test if individuals from the same species may be automatically identified using digital images. In this paper, we present a machine learning approach based on multiscale classifiers to detect phenological patterns in the digital images. Our results indicate that: (1) extreme hours (morning and afternoon) are the best for identifying plant species; (2) different plant species present a different behaviorwith respect to the color change information; and (3) texture variation along temporal images is promising information for capturing phenological patterns. Based on those results, we suggest that individuals from the same species and functional group might be identified using digital images, and introduce a newtool to help phenology experts in the identification of new individuals from the same species in the image and their location on the ground.
机译:植物物候学是物种对全球气候变化的反应的最可靠指标之一,从而推动了物候监测新技术的发展。数码相机或近距离远程系统已被有效地用作多通道成像传感器,在该传感器中,从RGB(红色,绿色和蓝色)颜色通道中提取叶子颜色信息,并使用绿色水平的变化来推断叶子的叶子图案。植物品种。在这种情况下,纹理信息是图像分析的重要盟友,在物候研究中很少使用。我们通过拍摄每日数字图像来监控Cerrado稀树草原植被的变叶模式。我们从数字图像中提取RGB通道,并将其与物候变化相关联。此外,我们受益于包含用于量化空间异质性的纹理度量。我们的首要目标是:(1)测试颜色变化信息是否能够表征一组物种的物候模式; (2)测试图像纹理的时间变化是否有助于区分植物; (3)测试是否可以使用数字图像自动识别同一物种的个体。在本文中,我们提出了一种基于多尺度分类器的机器学习方法来检测数字图像中的物候模式。我们的结果表明:(1)极端时间(早晨和下午)最适合识别植物物种; (2)不同的植物物种在颜色变化信息方面表现出不同的行为; (3)沿时间图像的纹理变化是捕捉物候模式的有前途的信息。根据这些结果,我们建议可以使用数字图像来识别同一物种和功能组中的个体,并引入一种新工具来帮助物候学专家识别图像中同一物种中的新个体及其在地面上的位置。

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