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Apple Leaf Disease Regcognition Method Base on Improved ShuffleNet V2

机译:基于改进ShuffleNet V2的苹果叶片病害识别方法

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Most of the apple leaf disease images acquired in natural scenes contain complex backgrounds. At the same time, the disease features are more likely to appear at arbitrary locations in the images due to the less stringent shooting requirements. All these factors affect the recognition accuracy of convolutional neural networks. To address this problem, a lightweight apple leaf disease recognition method based on improved ShuffleNet V2 is proposed. Methods based on ShuffleNet V2 network model, max-pooling was introduced to remove the interference information such as complex background to a certain extent, on the other hand, to reduce the excessive sensitivity of the model to feature location. Then, BAM(bottlenect attention module) was integrated to enable the model to learn more important disease features and reduce the interference of information such as complex background. Experiments on apple leaf disease dataset show that the improved model has 1.3M network parameters, 145.7MFLOPs of computation, and 1.5% recognition error rate, which is 2% lower compared to ShuffleNet V2. The proposed method has the advantages of low recognition error rate, lightweight model, and applicability to apple leaf disease images acquired in natural scenes, so it has stronger practicability.
机译:在自然场景中获取的大多数苹果叶片病害图像都包含复杂的背景。同时,由于不太严格的拍摄要求,疾病特征更可能出现在图像中的任意位置。所有这些因素都会影响卷积神经网络的识别精度。针对这一问题,提出了一种基于改进的ShuffleNet V2的苹果叶片病害识别方法。方法在ShuffleNet V2网络模型的基础上,引入最大池,在一定程度上去除复杂背景等干扰信息,同时降低模型对特征定位的过度敏感性。然后,集成BAM(瓶内注意模块),使模型能够学习更重要的疾病特征,减少复杂背景等信息的干扰。在苹果叶片病害数据集上的实验表明,改进后的模型具有1.3M的网络参数,145.7MFLOPs的计算量,1.5%的识别错误率,比ShuffleNet V2低2%。该方法具有识别错误率低、模型轻量级、适用于自然场景下采集的苹果叶片病害图像等优点,具有较强的实用性。

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