An Explainable Vision Transformer with Transfer Learning Combined with Support Vector Machine Based Efficient Drought Stress Identification

Aswini Kumar Patra, Ankit Varshney, Lingaraj Sahoo
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Abstract

Early detection of drought stress is critical for taking timely measures for reducing crop loss before the drought impact becomes irreversible. The subtle phenotypical and physiological changes in response to drought stress are captured by non-invasive imaging techniques and these imaging data serve as valuable resource for machine learning methods to identify drought stress. While convolutional neural networks (CNNs) are in wide use, vision transformers (ViTs) present a promising alternative in capturing long-range dependencies and intricate spatial relationships, thereby enhancing the detection of subtle indicators of drought stress. We propose an explainable deep learning pipeline that leverages the power of ViTs for drought stress detection in potato crops using aerial imagery. We applied two distinct approaches: a synergistic combination of ViT and support vector machine (SVM), where ViT extracts intricate spatial features from aerial images, and SVM classifies the crops as stressed or healthy and an end-to-end approach using a dedicated classification layer within ViT to directly detect drought stress. Our key findings explain the ViT model's decision-making process by visualizing attention maps. These maps highlight the specific spatial features within the aerial images that the ViT model focuses as the drought stress signature. Our findings demonstrate that the proposed methods not only achieve high accuracy in drought stress identification but also shedding light on the diverse subtle plant features associated with drought stress. This offers a robust and interpretable solution for drought stress monitoring for farmers to undertake informed decisions for improved crop management.
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基于支持向量机的可解释视觉变换器与迁移学习相结合的高效干旱压力识别技术
早期检测干旱胁迫对于在干旱影响变得不可逆转之前及时采取措施减少作物损失至关重要。虽然卷积神经网络(CNNs)得到了广泛应用,但视觉变换器(ViTs)在捕捉长程依赖性和错综复杂的空间关系方面提供了一种有前途的替代方法,从而增强了对干旱胁迫微妙指标的检测。我们提出了一种可解释的深度学习流水线,利用视觉转换器的强大功能,利用航空图像检测马铃薯作物的干旱胁迫。我们采用了两种不同的方法:一种是 ViT 和支持向量机(SVM)的协同组合,其中 ViT 从航空图像中提取错综复杂的空间特征,SVM 将作物分类为受胁迫或健康;另一种是端到端方法,使用 ViT 中的专用分类层直接检测干旱胁迫。我们的主要发现通过可视化注意力地图解释了 ViT 模型的决策过程。这些地图突出显示了 ViT 模型作为干旱胁迫特征所关注的航空图像中的特定空间特征。我们的研究结果表明,所提出的方法不仅能实现高精度的干旱胁迫识别,还能揭示与干旱胁迫相关的各种细微植物特征。这为干旱胁迫监测提供了一种稳健且可解释的解决方案,农民可据此做出明智的决策,改善作物管理。
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