利用卷积神经网络识别植物营养缺乏

U. Watchareeruetai, Pavit Noinongyao, Chaiwat Wattanapaiboonsuk, Puriwat Khantiviriya, S. Duangsrisai
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引用次数: 25

摘要

提出了一种基于叶片的植物营养缺乏症图像分析方法。首先,该方法将输入的叶子图像分割成小块。其次,每个叶子像素块被馈送到一组卷积神经网络(cnn)。每个CNN都针对营养缺乏进行了专门的训练,并用于确定街区是否呈现相应的营养缺乏症状。接下来,使用赢家通吃策略,将来自所有cnn的响应集成为块生成单个响应。最后,使用多层感知器将所有块的响应集成为一个,以产生整个叶子的最终响应。在一组营养控制环境下生长的黑克兰(Vigna mungo)植物上验证了所提出的方法。研究了钙、铁、钾、镁、氮五种类型的缺乏,以及一组营养完全的植物。收集了由3000张树叶图像组成的数据集并用于实验。实验结果表明,该方法在营养缺乏症鉴定方面优于训练有素的人。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identification of Plant Nutrient Deficiencies Using Convolutional Neural Networks
A novel image analysis method for identifying nutrient deficiencies in plant based on its leaf is proposed. First, the proposed method divides an input leaf image into small blocks. Second, each block of leaf pixels is fed to a set of convolutional neural networks (CNNs). Each CNN is specifically trained for a nutrient deficiency and is utilized to decide if a block is presenting any symptom of the corresponding nutrient deficiency. Next, the responses from all CNNs are integrated to produce a single response for the block using a winner-take-all strategy. Finally, the responses from all blocks are integrated into one using a multi-layer perceptron to produce a final response for the whole leaf. Validation of the proposed method was performed on a set of black gram (Vigna mungo) plants grown under nutrient-controlled environments. Five types of deficiencies, i.e., Ca, Fe, K, Mg, and N deficiencies, and a group of plants with complete nutrients were studied. A dataset consisting of 3,000 leaf images was collected and used for experimentation. Experimental results indicate the superiority of the proposed method over trained humans in nutrient deficiency identification.
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