BAT Optimized CNN Model Identifies Water Stress in Chickpea Plant Shoot Images

S. Azimi, T. Kaur, T. Gandhi
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引用次数: 7

Abstract

Stress due to water deficiency in plants can significantly lower the agricultural yield. It can affect many visible plant traits such as size and surface area, the number of leaves and their color, etc. In recent years, computer vision-based plant phenomics has emerged as a promising tool for plant research and management. Such techniques have the advantage of being non-destructive, non-evasive, fast, and offer high levels of automation. Pulses like chickpeas play an important role in ensuring food security in poor countries owing to their high protein and nutrition content. In the present work, we have built a dataset comprising of two varieties of chickpea plant shoot images under different moisture stress conditions. Specifically, we propose a BAT optimized ResNet-18 model for classifying stress induced by water deficiency using chickpea shoot images. BAT algorithm identifies the optimal value of the mini-batch size to be used for training rather than employing the traditional manual approach of trial and error. Experimentation on two crop varieties (JG and Pusa) reveals that BAT optimized approach achieves an accuracy of 96% and 91% for JG and Pusa varieties that is better than the traditional method by 4%. The experimental results are also compared with state of the art CNN models like Alexnet, GoogleNet, and ResNet-50. The comparison results demonstrate that the proposed BAT optimized ResNet-18 model achieves higher performance than the comparison counterparts.
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BAT优化CNN模型识别鹰嘴豆植物芽图像中的水分胁迫
植物缺水胁迫可显著降低农业产量。它可以影响许多可见的植物性状,如大小和表面积,叶子的数量和颜色等。近年来,基于计算机视觉的植物表型组学已成为植物研究和管理的一个有前途的工具。这种技术具有非破坏性、非规避性、快速和提供高水平自动化的优点。鹰嘴豆等豆类因其高蛋白和营养含量,在确保贫穷国家粮食安全方面发挥着重要作用。在本工作中,我们建立了一个由两个品种的鹰嘴豆植物在不同水分胁迫条件下的芽图像组成的数据集。具体而言,我们提出了一个BAT优化的ResNet-18模型,用于鹰嘴豆芽图像的缺水胁迫分类。BAT算法识别用于训练的小批大小的最优值,而不是采用传统的人工试错方法。以JG和Pusa两个作物品种为试验对象,BAT优化方法对JG和Pusa品种的识别准确率分别为96%和91%,比传统方法提高了4%。实验结果还与最先进的CNN模型(如Alexnet, GoogleNet和ResNet-50)进行了比较。对比结果表明,本文提出的BAT优化后的ResNet-18模型比对比模型具有更高的性能。
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