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Detection and species classification of young trees using machine perception for a semi-autonomous forest machine

机译:半自动森林机器的基于机器感知的幼树检测和物种分类

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An approach to automatically detect and classify young spruce and birch trees in forest environment is presented. The method could be used in autonomous or semi-autonomous forest machines during tending operations. Detection is done by segmenting laser range images formed by a rotating laser scanner. Classification is done with a two-class Naive Bayes classifier based on image texture features. Multiple combinations of 99 features were tested and the best classifier included eight features from the co-occurrence matrix, local binary patterns, statistical geometrical features and Gabor filter. 79% of spruces and birches in the testing material were detected and 74% of these were correctly classified. Results suggest that the approach is suitable but there are still some challenges in each of the processing steps. Iteration between segmentation and classification is needed to increase reliability.
机译:提出了一种在森林环境中自动检测和分类年轻云杉和桦树的方法。该方法可在抚育操作期间用于自治或半自治林木机械中。通过分割由旋转激光扫描仪形成的激光测距图像来完成检测。使用基于图像纹理特征的两类朴素贝叶斯分类器进行分类。测试了99个特征的多种组合,最佳分类器包括来自共现矩阵,局部二进制模式,统计几何特征和Gabor滤波器的8个特征。检测到测试材料中有79%的云杉和桦树,其中74%被正确分类。结果表明该方法是合适的,但是在每个处理步骤中仍然存在一些挑战。需要在分段和分类之间进行迭代以提高可靠性。

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