Quantifying Visual Differences in Drought-Stressed Maize through Reflectance and Data-Driven Analysis

AI Pub Date : 2024-06-04 DOI:10.3390/ai5020040
Sanjana Banerjee, J. Reynolds, Matt Taggart, Michael Daniele, Alper Bozkurt, Edgar J. Lobaton
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Abstract

Environmental factors, such as drought stress, significantly impact maize growth and productivity worldwide. To improve yield and quality, effective strategies for early detection and mitigation of drought stress in maize are essential. This paper presents a detailed analysis of three imaging trials conducted to detect drought stress in maize plants using an existing, custom-developed, low-cost, high-throughput phenotyping platform. A pipeline is proposed for early detection of water stress in maize plants using a Vision Transformer classifier and analysis of distributions of near-infrared (NIR) reflectance from the plants. A classification accuracy of 85% was achieved in one of our trials, using hold-out trials for testing. Suitable regions on the plant that are more sensitive to drought stress were explored, and it was shown that the region surrounding the youngest expanding leaf (YEL) and the stem can be used as a more consistent alternative to analysis involving just the YEL. Experiments in search of an ideal window size showed that small bounding boxes surrounding the YEL and the stem area of the plant perform better in separating drought-stressed and well-watered plants than larger window sizes enclosing most of the plant. The results presented in this work show good separation between well-watered and drought-stressed categories for two out of the three imaging trials, both in terms of classification accuracy from data-driven features as well as through analysis of histograms of NIR reflectance.
通过反射和数据驱动分析量化干旱胁迫玉米的视觉差异
干旱胁迫等环境因素严重影响着全球玉米的生长和产量。为了提高产量和质量,必须采取有效的策略来早期检测和缓解玉米的干旱胁迫。本文详细分析了利用现有定制开发的低成本高通量表型平台检测玉米植株干旱胁迫的三项成像试验。本文提出了一种利用视觉变换器分类器和植物近红外(NIR)反射率分布分析来早期检测玉米植株水分胁迫的方法。在我们进行的一项试验中,利用保留试验进行测试,分类准确率达到了 85%。我们探索了植株上对干旱胁迫更敏感的合适区域,结果表明,最年轻的展开叶(YEL)和茎干周围的区域可用于替代只涉及 YEL 的分析。寻找理想窗口大小的实验表明,在区分干旱胁迫植物和水分充足植物方面,叶片和植物茎部周围的小包围盒比包围大部分植物的大窗口大小效果更好。无论是从数据驱动特征的分类准确性来看,还是从近红外反射率直方图的分析来看,在三次成像试验中,有两次试验的结果都显示出水分充足和干旱胁迫两类植物之间的良好分离效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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