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Multi- feature fusion in weed recognition based on Dempster-Shafer's theory

机译:基于Dempster-Shafer理论的杂草识别中的多特征融合

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As accurate identification of weeds from crops is the prerequisite for precise herbicides spraying, this paper proposes a multi-feature fusion method based on neutral network and D-S evidential theory to improve the accuracy of weed recognition. Firstly, three kinds of single features such as color, shape and texture are extracted from the weed and crop leaves after a series of image processing. Secondly, the leaves are classified with each kind of feature by neutral network and the output of each sub-network are made as an independent evidences to construct the basic belief assignment. Finally, using D-S combination rule of evidence to achieve the decision and giving final recognition results by classification rules. The experimental results have shown that the multi-feature fusion method has good performance on accuracy compared to the single feature-based method in weed recognition.
机译:由于精确识别作物的杂草是精确除草剂喷涂的先决条件,本文提出了一种基于中性网络和D-S证据理论的多特征融合方法,提高杂草识别的准确性。首先,在一系列图像处理之后从杂草和裁剪叶子中提取三种单一特征,例如颜色,形状和纹理。其次,叶子通过中性网络分类为每种特征,并且每个子网的输出被制成为构建基本信仰分配的独立证据。最后,使用D-S组合规则来实现决定并通过分类规则赋予最终识别结果。实验结果表明,与杂草识别中的单一特征的方法相比,多特征融合方法对准确度具有良好的性能。

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