Two-Stage Ensemble Deep Learning Model for Precise Leaf Abnormality Detection in Centella asiatica

Budsaba Buakum, Monika Kosacka-Olejnik, R. Pitakaso, Thanatkij Srichok, Surajet Khonjun, Peerawat Luesak, N. Nanthasamroeng, Sarayut Gonwirat
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引用次数: 0

Abstract

Leaf abnormalities pose a significant threat to agricultural productivity, particularly in medicinal plants such as Centella asiatica (Linn.) Urban (CAU), where they can severely impact both the yield and the quality of leaf-derived substances. In this study, we focus on the early detection of such leaf diseases in CAU, a critical intervention for minimizing crop damage and ensuring plant health. We propose a novel parallel-Variable Neighborhood Strategy Adaptive Search (parallel-VaNSAS) ensemble deep learning method specifically designed for this purpose. Our approach is distinguished by a two-stage ensemble model, which combines the strengths of advanced image segmentation and Convolutional Neural Networks (CNNs) to detect leaf diseases with high accuracy and efficiency. In the first stage, we employ U-net, Mask-R-CNN, and DeepNetV3++ for the precise image segmentation of leaf abnormalities. This step is crucial for accurately identifying diseased regions, thereby facilitating a focused and effective analysis in the subsequent stage. The second stage utilizes ShuffleNetV2, SqueezeNetV2, and MobileNetV3, which are robust CNN architectures, to classify the segmented images into different categories of leaf diseases. This two-stage methodology significantly improves the quality of disease detection over traditional methods. By employing a combination of ensemble segmentation and diverse CNN models, we achieve a comprehensive and nuanced analysis of leaf diseases. Our model’s efficacy is further enhanced through the integration of four decision fusion strategies: unweighted average (UWA), differential evolution (DE), particle swarm optimization (PSO), and Variable Neighborhood Strategy Adaptive Search (VaNSAS). Through extensive evaluations of the ABL-1 and ABL-2 datasets, which include a total of 14,860 images encompassing eight types of leaf abnormalities, our model demonstrates its superiority. The ensemble segmentation method outperforms single-method approaches by 7.34%, and our heterogeneous ensemble model excels by 8.43% and 14.59% compared to the homogeneous ensemble and single models, respectively. Additionally, image augmentation contributes to a 5.37% improvement in model performance, and the VaNSAS strategy enhances solution quality significantly over other decision fusion methods. Overall, our novel parallel-VaNSAS ensemble deep learning method represents a significant advancement in the detection of leaf diseases in CAU, promising a more effective approach to maintaining crop health and productivity.
用于精确检测积雪草叶片异常的两阶段集合深度学习模型
叶片异常对农业生产率构成重大威胁,尤其是积雪草(Centella asiatica (Linn.) Urban)(CAU)等药用植物,它们会严重影响叶片衍生物质的产量和质量。在本研究中,我们将重点放在对百日咳叶片病害的早期检测上,这是减少作物损害和确保植物健康的关键干预措施。为此,我们提出了一种新颖的并行-变量邻域策略自适应搜索(parallel-VaNSAS)集合深度学习方法。我们的方法采用两阶段集合模型,结合先进的图像分割和卷积神经网络(CNN)的优势,以高精度和高效率检测叶片病害。在第一阶段,我们采用 U-net、Mask-R-CNN 和 DeepNetV3++ 对叶片异常进行精确的图像分割。这一步对于准确识别病害区域至关重要,从而有助于在后续阶段进行有针对性的有效分析。第二阶段利用鲁棒 CNN 架构 ShuffleNetV2、SqueezeNetV2 和 MobileNetV3 将分割后的图像划分为不同的叶片病害类别。与传统方法相比,这种两阶段方法大大提高了病害检测的质量。通过将集合分割和不同的 CNN 模型相结合,我们实现了对叶片病害全面而细致的分析。通过整合四种决策融合策略:非加权平均(UWA)、差分进化(DE)、粒子群优化(PSO)和可变邻域策略自适应搜索(VaNSAS),我们模型的功效得到了进一步提升。通过对 ABL-1 和 ABL-2 数据集(共包含 14,860 张图像,涉及八种类型的叶片异常)的广泛评估,我们的模型证明了其优越性。集合分割方法比单一方法高出 7.34%,而我们的异质集合模型比同质集合模型和单一模型分别高出 8.43% 和 14.59%。此外,图像增强使模型性能提高了 5.37%,VaNSAS 策略比其他决策融合方法显著提高了解决方案的质量。总之,我们新颖的并行-VaNSAS集合深度学习方法在检测CAU叶片病害方面取得了重大进展,有望为保持作物健康和生产力提供更有效的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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