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首页> 外文期刊>International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences >COMPARITIVE STUDY OF TREE COUNTING ALGORITHMS IN DENSE AND SPARSE VEGETATIVE REGIONS
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COMPARITIVE STUDY OF TREE COUNTING ALGORITHMS IN DENSE AND SPARSE VEGETATIVE REGIONS

机译:密度与稀疏植被区树计数算法的比较研究

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Tree counting can be a challenging and time consuming task, especially if done manually. This study proposes and compares three different approaches for automatic detection and counting of trees in different vegetative regions. First approach is to mark extended minima’s, extended maxima’s along with morphological reconstruction operations on an image for delineation and tree crown segmentation. To separate two touching crowns, a marker controlled watershed algorithm is used. For second approach, the color segmentation method for tree identification is used. Starting with the conversion of an RGB image to HSV color space then filtering, enhancing and thresholding to isolate trees from non-trees elements followed by watershed algorithm to separate touching tree crowns. Third approach involves deep learning method for classification of tree and non-tree, using approximately 2268 positive and 1172 negative samples each. Each segment of an image is then classified and sliding window algorithm is used to locate each tree crown. Experimentation shows that the first approach is well suited for classification of trees is dense vegetation, whereas the second approach is more suitable for detecting trees in sparse vegetation. Deep learning classification accuracy lies in between these two approaches and gave an accuracy of 92% on validation data. The study shows that deep learning can be used as a quick and effective tool to ascertain the count of trees from airborne optical imagery.
机译:树木计数可能是一项艰巨且耗时的任务,尤其是如果手动完成。这项研究提出并比较了三种不同方法,用于自动检测和计数不同植物区的树木。第一种方法是在图像上标记扩展的最小值,扩展的最大值以及形态重构操作,以进行轮廓描绘和树冠分割。为了分离两个接触的表冠,使用了标记控制的分水岭算法。对于第二种方法,使用了用于树识别的颜色分割方法。首先是将RGB图像转换为HSV色彩空间,然后进行滤波,增强和阈值处理以将树木与非树木元素隔离开,然后采用分水岭算法来分离可触摸的树冠。第三种方法涉及用于树和非树分类的深度学习方法,分别使用大约2268个正样本和1172个负样本。然后对图像的每个片段进行分类,并使用滑动窗口算法来定位每个树冠。实验表明,第一种方法非常适合于树木的分类是茂密的植被,而第二种方法更适合于检测稀疏植被中的树木。深度学习分类的准确性介于这两种方法之间,并且在验证数据上的准确性为92%。研究表明,深度学习可以作为一种快速有效的工具来确定机载光学图像中树木的数量。

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