Black Gram Disease Classification via Deep Ensemble Model with Optimal Training

IF 0.8 Q4 COMPUTER SCIENCE, SOFTWARE ENGINEERING
Neha Hajare, A. Rajawat
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引用次数: 0

Abstract

Black gram crop belongs to the Fabaceae family and its scientific name is Vigna Mungo.It has high nutritional content, improves the fertility of the soil, and provides atmospheric nitrogen fixation in the soil. The quality of the black gram crop is degraded by diseases such as Yellow mosaic, Anthracnose, Powdery Mildew, and Leaf Crinkle which causes economic loss to farmers and degraded production. The agriculture sector needs to classify plant nutrient deficiencies in order to increase crop quality and yield. In order to handle a variety of difficult challenges, computer vision and deep learning technologies play a crucial role in the agricultural and biological sectors. The typical diagnostic procedure involves a pathologist visiting the site and inspecting each plant. However, manually crop disease assessment is limited due to lesser accuracy and limited access of personnel. To address these problems, it is necessary to develop automated methods that can quickly identify and classify a wide range of plant diseases. In this paper, black gram disease classifications are done through a deep ensemble model with optimal training and the procedure of this technique is as follows: Initially, the input dataset is processed to increase its size via data augmentation. Here, the processes like shifting, rotation, and shearing take place. Then, the model starts with the noise removal of images using median filtering. Subsequent to the preprocessing, segmentation takes place via the proposed deep joint segmentation model to determine the ROI and non-ROI regions. The next process is the extraction of the feature set that includes the features like improved multi-texton-based features, shape-based features, color-based features, and local Gabor X-OR pattern features. The model combines the classifiers like Deep Belief Networks, Recurrent Neural Networks, and Convolutional Neural Networks. For tuning the optimal weights of the model, a new algorithm termed swarm intelligence-based Self-Improved Dwarf Mongoose Optimization algorithm (SIDMO) is introduced. Over the past two decades, nature-based metaheuristic algorithms have gained more popularity because of their ability to solve various global optimization problems with optimal solutions. This training model ensures the enhancement of classification accuracy. The accuracy of the SIDMO, which is around 94.82%, is substantially higher than that of the existing models, which are FPA[Formula: see text]88.86%, SSOA[Formula: see text]88.99%, GOA[Formula: see text]85.84%, SMA[Formula: see text]85.11%, SRSR[Formula: see text]85.32%, and DMOA[Formula: see text]88.99%, respectively.
基于最优训练的深度集成模型的黑革兰氏病分类
黑革属豆科植物,学名为Vigna Mungo。它具有高营养含量,提高土壤的肥力,并在土壤中提供大气固氮。黑革作物的品质受到黄花叶病、炭疽病、白粉病、皱叶病等病害的影响,给农民造成经济损失,降低了产量。农业部门需要对植物营养缺乏进行分类,以提高作物质量和产量。为了应对各种困难的挑战,计算机视觉和深度学习技术在农业和生物领域发挥着至关重要的作用。典型的诊断程序包括病理学家访问现场并检查每个植物。然而,由于准确性较低和人员访问有限,人工作物病害评估受到限制。为了解决这些问题,有必要开发能够快速识别和分类各种植物病害的自动化方法。本文通过最优训练的深度集成模型对黑革兰氏病进行分类,该技术的流程如下:首先对输入数据集进行处理,通过数据扩充来增大其大小。在这里,发生了移动、旋转和剪切等过程。然后,该模型首先使用中值滤波对图像进行去噪。预处理后,通过提出的深度联合分割模型进行分割,确定感兴趣区域和非感兴趣区域。下一个过程是特征集的提取,其中包括改进的基于多文本的特征、基于形状的特征、基于颜色的特征和局部Gabor X-OR模式特征。该模型结合了深度信念网络、循环神经网络和卷积神经网络等分类器。为了优化模型的最优权重,提出了一种基于群智能的自改进矮猫鼬优化算法(SIDMO)。在过去的二十年里,基于自然的元启发式算法因其能够用最优解解决各种全局优化问题而获得了越来越多的欢迎。该训练模型保证了分类准确率的提高。SIDMO的准确率约为94.82%,大大高于现有的FPA[公式:见文]88.86%,SSOA[公式:见文]88.99%,GOA[公式:见文]85.84%,SMA[公式:见文]85.11%,SRSR[公式:见文]85.32%,DMOA[公式:见文]88.99%。
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来源期刊
International Journal of Image and Graphics
International Journal of Image and Graphics COMPUTER SCIENCE, SOFTWARE ENGINEERING-
CiteScore
2.40
自引率
18.80%
发文量
67
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