基于双关注的植物病虫害识别轻量级网络

Sivasubramaniam Janarthan, S. Thuseethan, S. Rajasegarar, J. Yearwood
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引用次数: 0

摘要

从田间图像中及时识别植物有害生物对避免作物产量的潜在损失具有重要意义。传统的基于卷积神经网络的深度学习模型需要很高的计算能力,并且需要对每种害虫类型进行大量标记样本进行训练。另一方面,现有的基于轻量级网络的害虫分类方法由于多种植物害虫具有共同的特征和高度的相似性,在正确分类害虫方面存在一定的问题。在这项工作中,提出了一种新的基于双注意的轻量级深度学习架构来自动识别不同的植物害虫。轻量级网络有助于更快和更小的数据训练,而双注意力模块通过专注于最相关的信息来提高性能。该方法在两个公开数据集的三个变体上分别达到了96.61%、99.08%和91.60%,分别为5869、545和500个样本。此外,对比结果表明,该方法在小数据集和大数据集上都优于现有方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Double Attention-based Lightweight Network for Plant Pest Recognition
Timely recognition of plant pests from field images is significant to avoid potential losses of crop yields. Traditional convolutional neural network-based deep learning models demand high computational capability and require large labelled samples for each pest type for training. On the other hand, the existing lightweight network-based approaches suffer in correctly classifying the pests because of common characteristics and high similarity between multiple plant pests. In this work, a novel double attention-based lightweight deep learning architecture is proposed to automatically recognize different plant pests. The lightweight network facilitates faster and small data training while the double attention module increases performance by focusing on the most pertinent information. The proposed approach achieves 96.61%, 99.08% and 91.60% on three variants of two publicly available datasets with 5869, 545 and 500 samples, respectively. Moreover, the comparison results reveal that the proposed approach outperforms existing approaches on both small and large datasets consistently.
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