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Classification Accuracy Improvement for Small-Size Citrus Pests and Diseases Using Bridge Connections in Deep Neural Networks

机译:在深神经网络中使用桥接连接的小型柑橘害虫和疾病的分类准确性改进

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摘要

Due to the rich vitamin content in citrus fruit, citrus is an important crop around the world. However, the yield of these citrus crops is often reduced due to the damage of various pests and diseases. In order to mitigate these problems, several convolutional neural networks were applied to detect them. It is of note that the performance of these selected models degraded as the size of the target object in the image decreased. To adapt to scale changes, a new feature reuse method named bridge connection was developed. With the help of bridge connections, the accuracy of baseline networks was improved at little additional computation cost. The proposed BridgeNet-19 achieved the highest classification accuracy (95.47%), followed by the pre-trained VGG-19 (95.01%) and VGG-19 with bridge connections (94.73%). The use of bridge connections also strengthens the flexibility of sensors for image acquisition. It is unnecessary to pay more attention to adjusting the distance between a camera and pests and diseases.
机译:由于柑橘类水果中丰富的维生素含量,柑橘是世界各地的重要作物。然而,由于各种害虫和疾病的损害,这些柑橘作物的产量通常会降低。为了减轻这些问题,应用了几个卷积神经网络来检测它们。值得注意的是,这些所选模型的性能在图像中的目标对象的大小降低时降低。为了适应缩放更改,开发了一个名为Bridge Connection的新功能重用方法。在桥接连接的帮助下,基线网络的准确性几乎没有提高了额外的计算成本。所提出的BridGanet-19实现了最高的分类精度(95.47%),其次是预先训练的VGG-19(95.01%)和VGG-19,具有桥接连接(94.73%)。桥接连接的使用还增强了传感器的图像采集的灵活性。不需要更多地关注调整相机与害虫和疾病之间的距离。

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