Lin Hong, Tse Rita, Tang Su-Kit, Qiang Zhen-Ping, Pau Giovanni
Faculty of Applied Sciences, Macao Polytechnic University, Macau, Macao SAR, China.
Engineering Research Centre of Applied Technology on Machine Translation and Artificial Intelligence of Ministry of Education, Macao Polytechnic University, Macau, Macao SAR, China.
Front Plant Sci. 2022 Sep 16;13:907916. doi: 10.3389/fpls.2022.907916. eCollection 2022.
Image-based deep learning method for plant disease diagnosing is promising but relies on large-scale dataset. Currently, the shortage of data has become an obstacle to leverage deep learning methods. Few-shot learning can generalize to new categories with the supports of few samples, which is very helpful for those plant disease categories where only few samples are available. However, two challenging problems are existing in few-shot learning: (1) the feature extracted from few shots is very limited; (2) generalizing to new categories, especially to another domain is very tough. In response to the two issues, we propose a network based on the Meta-Baseline few-shot learning method, and combine cascaded multi-scale features and channel attention. The network takes advantage of multi-scale features to rich the feature representation, uses channel attention as a compensation module efficiently to learn more from the significant channels of the fused features. Meanwhile, we propose a group of training strategies from data configuration perspective to match various generalization requirements. Through extensive experiments, it is verified that the combination of multi-scale feature fusion and channel attention can alleviate the problem of limited features caused by few shots. To imitate different generalization scenarios, we set different data settings and suggest the optimal training strategies for intra-domain case and cross-domain case, respectively. The effects of important factors in few-shot learning paradigm are analyzed. With the optimal configuration, the accuracy of 1-shot task and 5-shot task achieve at 61.24% and 77.43% respectively in the task targeting to single-plant, and achieve at 82.52% and 92.83% in the task targeting to multi-plants. Our results outperform the existing related works. It demonstrates that the few-shot learning is a feasible potential solution for plant disease recognition in the future application.
基于图像的深度学习植物病害诊断方法前景广阔,但依赖大规模数据集。目前,数据短缺已成为应用深度学习方法的障碍。少样本学习能够在少量样本的支持下推广到新类别,这对于那些只有少量样本的植物病害类别非常有帮助。然而,少样本学习存在两个具有挑战性的问题:(1)从少量样本中提取的特征非常有限;(2)推广到新类别,尤其是跨领域推广非常困难。针对这两个问题,我们提出了一种基于元基线少样本学习方法的网络,并结合了级联多尺度特征和通道注意力。该网络利用多尺度特征丰富特征表示,有效使用通道注意力作为补偿模块,从融合特征的重要通道中学习更多信息。同时,我们从数据配置角度提出了一组训练策略,以匹配各种推广需求。通过大量实验验证,多尺度特征融合与通道注意力的结合可以缓解少样本导致的特征有限问题。为模拟不同的推广场景,我们设置了不同的数据设置,并分别针对域内情况和跨域情况提出了最优训练策略。分析了少样本学习范式中重要因素的影响。在最优配置下,针对单株植物的任务中,单样本任务和多样本任务的准确率分别达到61.24%和77.43%,针对多株植物的任务中分别达到82.52%和92.83%。我们的结果优于现有相关工作。这表明少样本学习在未来应用中是植物病害识别的一种可行潜在解决方案。