CLASSIFICATION OF TREE SPECIES ON THE BASIS OF TREE BARK TEXTURE

L. Ganschow, T. Thiele, Niklas Deckers, R. Reulke
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引用次数: 3

Abstract

Abstract. Forest inventory is an important topic in forestry and a digital solution which works on the basis of tree images is looked for. Implementing a system which automatically classifies tree species is the overall goal. In this paper the implementation of a convolutional neural net for solving this classification problem is executed and evaluated. The objective is creating a system which works well on unseen data and deriving guidelines and constraints to guarantee good accuracy results. Images including tree segmentation and the corresponding labels are provided as training data. The tree species classification takes the segmentation results of a stereo vision based image segmentation algorithm as input. The basic idea consists of cropping the tree images into quadratic boxes before feeding them into the neural net. First, each box is classified separately and then the results are evaluated to get a classification for the whole tree. Methods for result improvement include altering box size, using overlapping boxes, artificially enlarging the training set, pretraining and finetuning. Cropping a tree image into boxes of a specific size and accumulating the single results to get a classification of the whole tree leads to an accuracy of 96.7% provided that specific constraints like minimum box number and the projected size of the tree on image plane are considered. Finally, ways to further improve performance are pointed out.
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基于树皮纹理的树种分类
摘要森林清查是林业领域的一个重要课题,目前正在寻找一种基于树木图像的数字化解决方案。实现一个自动分类树种的系统是总体目标。本文对卷积神经网络的实现进行了执行和评价。目标是创建一个系统,它可以很好地处理未见过的数据,并得出指导方针和约束,以保证良好的准确性结果。提供包含树分割和相应标签的图像作为训练数据。树种分类以基于立体视觉的图像分割算法的分割结果作为输入。其基本思想包括在将树图像输入神经网络之前将其裁剪成二次框。首先,对每个盒子分别进行分类,然后对结果进行评估,得到整棵树的分类。改进结果的方法包括改变盒大小、使用重叠盒、人为扩大训练集、预训练和微调。在考虑最小框数、树在图像平面上的投影大小等特定约束条件下,将树图像裁剪成特定尺寸的方框,并将单个结果累加得到整棵树的分类,准确率可达96.7%。最后指出了进一步提高性能的途径。
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来源期刊
CiteScore
1.70
自引率
0.00%
发文量
949
审稿时长
16 weeks
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