首页> 外文期刊>Journal of Applied Remote Sensing >Individual tree crown segmentation based on aerial image using superpixel and topological features
【24h】

Individual tree crown segmentation based on aerial image using superpixel and topological features

机译:基于空中图像的各个树冠分割,使用超像素和拓扑特征

获取原文
获取原文并翻译 | 示例
           

摘要

The individual tree crown (ITC) segmentation algorithm based on aerial images is a prerequisite for understanding tree growth, tree species competition, and biomass assessment. We combine superpixel segmentation and topological graph methods to separate the ITC effectively from aerial images. First, the aerial images of forest plots captured by drones was segmented by simple linear iterative clustering of superpixel algorithm, and the crown boundaries of aerial images were obtained by deep learning concept of holistically nested edge detection (HED) network. Second, the similarity weights of neighboring superpixels were measured by three indices, i.e., the difference in color value, the number of intersecting pixels, and the number of boundary pixels defined by HED network in the intersecting area. Finally, the minimum spanning tree topological method was adopted to generate the connected trees of aerial images at the superpixel scale, and the superpixels were merged to realize ITC segmentation depending on the calculated similarity weights. This method was tested on the aerial images of three forest plots with different stand structural features, and the accuracies of the algorithm were evaluated by comparing the results of our algorithm with field measurements. Mixed growth of the withered trees and healthy trees is in the forest plot 1, which complicates the ITC segmentation process and only achieves 86% accuracy. The forest plot 2 with same tree species and approximately sized tree crowns obtains the highest ITC accuracy of 92%. The forest plot 3 has various sizes of tree crowns and is influenced by the upper-right solar illumination, which increases the difficulty of ITC segmentation using our algorithm and obtains 87% accuracy. Overall, the method proposed has promising potential for ITC segmentation from forest aerial images, which provides a new concept based on image processing technique suitable for various types of forests. (C) 2020 Society of Photo-Optical Instrumentation Engineers (SPIE)
机译:基于航拍图像的个体树冠(ITC)分割算法是了解树生长,树种竞争和生物量评估的先决条件。我们将Superpixel分割和拓扑图方法结合起来,从空中图像有效地分离ITC。首先,通过简单的Superpixel算法进行简单的线性迭代聚类来分割由无人机捕获的森林图的空中图像,并且通过完全嵌套边缘检测(HED)网络的深度学习概念获得航空图像的冠界。其次,相邻超像素的相似性重量由三个指数测量,即颜色值的差异,交叉像素的数量以及交叉区域中的蜂窝网络定义的边界像素的数量。最后,采用最小的生成树拓扑方法来在超像素刻度生成空中图像的连接树,并且优质像素被合并以根据计算的相似权重实现ITC分段。在具有不同支架结构特征的三个森林图的空中图像上测试了该方法,通过比较我们算法的算法与现场测量结果来评估算法的精度。枯萎树木和健康树木的混合生长位于森林图1中,使ITC分割过程复杂化,只能达到86%的准确性。森林图2具有相同树种和大约尺寸的树冠获得的最高ITC精度为92%。森林图3具有各种尺寸的树冠,受到右上太阳能照明的影响,这增加了使用我们的算法的ITC分段的难度,并获得了87%的精度。总体而言,提出的方法具有来自森林航天图像的ITC细分的有希望的潜力,这为基于适用于各种类型的森林的图像处理技术提供了一种新概念。 (c)2020光学仪表工程师协会(SPIE)

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号