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Machine Recognition for Broad-Leaved Trees Based on Synthetic Features of Leaves Using Probabilistic Neural Network

机译:基于概率神经网络的叶片合成特征的宽带树木机械识别

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This paper is to effectively solve the problem that the objects of traditional plant identification were too broad and the classification features of it were usually not synthetic and the recognition rate was always slightly low. This study gives one recognition approach, in which the shape features and the texture features of the leaves of broad-leaved trees combine, composing a synthetic feature vector of broad leaves and hoping to realize the computer automatic classification towards broad-leaved plants more convenient, rapidly and efficient. Using Probabilistic Neural Networks (PNN), the rapid recognition for thirty kinds of broad-leaved trees was realized and the average correct recognition rate reached 98.3%. Comparison tests demonstrated that if the shape features of broad leaf solely worked as the recognition features without the texture features, the average correct recognition rate just reached 93.7%.
机译:本文有效解决了传统植物鉴定的对象太广泛的问题,并且通常不合成的分类特征,识别率始终略低。本研究提供一种识别方法,其中阔叶树叶子的形状特征和纹理特征组合,构成了宽叶的合成特征向量,并希望实现计算机自动分类对阔叶植物更方便,快速有效。使用概率神经网络(PNN),实现了三十种阔叶树的快速识别,平均正确识别率达到98.3%。比较试验证明,如果宽叶的形状特征仅作为识别特征而没有纹理特征,则平均正确识别率达到93.7%。

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