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Algorithm of Strawberry Disease Recognition Based on Deep Convolutional Neural Network

机译:基于深卷积神经网络的草莓疾病识别算法

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The growth of strawberry will be stressed by biological or abiotic factors, which will cause a great threat to the yield and quality of strawberry, in which various strawberry diseased. However, the traditional identification methods have high misjudgment rate and poor real-time performance. In today's era of increasing demand for strawberry yield and quality, it is obvious that the traditional strawberry disease identification methods mainly rely on personal experience and naked eye observation and cannot meet the needs of people for strawberry disease identification and control. Therefore, it is necessary to find a more effective method to identify strawberry diseases efficiently and provide corresponding disease description and control methods. In this paper, based on the deep convolution neural network technology, the recognition of strawberry common diseases was studied, as well as a new method based on deep convolution neural network (DCNN) strawberry disease recognition algorithm, through the normal training of strawberry image feature representation in different scenes, and then through the application of transfer learning method, the strawberry disease image features are added to the training set, and finally the features are classified and recognized to achieve the goal of disease recognition. Moreover, attention mechanism and central damage function are introduced into the classical convolutional neural network to solve the problem that the information loss of key feature areas in the existing classification methods of convolutional neural network affects the classification effect, and further improves the accuracy of convolutional neural network in image classification.
机译:草莓的生长将受到生物或非生物因素的强调,这将对草莓的产量和质量产生巨大威胁,其中草莓患病。然而,传统的识别方法具有较高的误判率和实时性能差。在当今日益增长的草莓产量和质量的时代,显而易见的是传统的草莓疾病鉴定方法主要依靠个人经验和肉眼观察,并不能满足草莓疾病鉴定和控制的人们的需求。因此,有必要有效地找到更有效的方法,以有效鉴定草莓疾病,并提供相应的疾病描述和控制方法。本文基于深度卷积神经网络技术,研究了草莓常见疾病的识别,以及一种基于深卷积神经网络(DCNN)草莓疾病识别算法的新方法,通过对草莓图像特征的正常训练不同场景中的表示,然后通过转移学习方法的应用,草莓疾病图像特征被添加到训练集中,最后的特征被分类并认识到达到疾病识别的目标。此外,注意机制和中央损伤功能被引入经典的卷积神经网络,解决了卷积神经网络的现有分类方法中关键特征区域的信息丢失影响分类效果,进一步提高了卷积神经的准确性网络分类中的网络。

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