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Black Spot: a platform for automated and rapid estimation of leaf area from scanned images

机译:黑点(Black Spot):一个从扫描图像自动快速估计叶片面积的平台

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Leaf area and its derivatives (e.g. specific leaf area) are widely used in ecological assessments, especially in the fields of plant-animal interactions, plant community assembly, ecosystem functioning and global change. Estimating leaf area is highly time-consuming, even when using specialized software to process scanned leaf images, because manual inputs are invariably required for scale detection and leaf surface digitisation. We introduce Black Spot Leaf Area Calculator (hereafter, Black Spot), a technique and stand-alone software package for rapid and automated leaf area assessment from images of leaves taken with standard flatbed scanners. Black Spot operates on comprehensive rule-sets for colour band ratios to carry out pixel-based classification which isolates leaf surfaces from the image background. Importantly, the software extracts information from associated image meta-data to detect image scale, thereby eliminating the need for time-consuming manual scale calibration. Black Spot's output provides the user with estimates of leaf area as well as classified images for error checking. We tested this method and software combination on a set of 100 leaves of 51 different plant species collected from the field. Leaf area estimates generated using Black Spot and by manual processing of the images using an image editing software generated statistically identical results. Mean error rate in leaf area estimates from Black Spot relative to manual processing was -0.4 % (SD = 0.76). The key advantage of Black Spot is the ability to rapidly batch process multi-species datasets with minimal user effort and at low cost, thus making it a valuable tool for field ecologists.
机译:叶面积及其衍生物(例如特定叶面积)被广泛用于生态评估,尤其是在植物与动物的相互作用,植物群落的组装,生态系统功能和全球变化等领域。即使使用专用软件处理扫描的叶片图像,估计叶片面积也非常耗时,因为鳞片检测和叶片表面数字化始终需要人工输入。我们引入了“黑点叶面积计算器”(以下称为“黑点”),该技术和独立软件包可从使用标准平板扫描仪拍摄的叶片图像中快速,自动地评估叶面积。 Black Spot根据色带比率的综合规则集进行操作,以执行基于像素的分类,从而将叶片表面与图像背景隔离开来。重要的是,该软件从关联的图像元数据中提取信息以检测图像比例,从而消除了耗时的手动比例校准的需要。 Black Spot的输出为用户提供了叶面积的估计以及用于错误检查的分类图像。我们在从田间收集的51种不同植物物种的100张叶子上测试了该方法和软件组合。使用黑点生成的叶面积估计值,以及使用图像编辑软件对图像进行手动处理生成的统计结果相同。相对于手动处理,来自黑点的叶面积估计值的平均错误率为-0.4%(SD = 0.76)。 Black Spot的主要优势在于能够以最少的用户工作量和低成本快速批处理多物种数据集,因此使其成为现场生态学家的宝贵工具。

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