用于识别野生环境中作物生物压力的鲁棒性深度卷积解决方案

Chiranjit Pal;Imon Mukherjee;Sanjay Chatterji;Sanjoy Pratihar;Pabitra Mitra;Partha Pratim Chakrabarti
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摘要

在农业自动化领域,精确识别作物胁迫对提高作物产量具有重大意义。现有方法主要集中在受控环境中,可能无法准确反映田间条件。由于图像质量和日照强度不同,基于田间的叶片图像分析面临挑战。此外,作物胁迫图像的复杂性,包括病变分布的随机性、症状的多样性和背景的复杂性,也使分析变得更加复杂。为了克服这些局限性,我们开发了一种轻量级混合卷积神经网络。该系统集成了功能强大的三深度块模型和并行运行的自动编码器,可有效突出作物胁迫区域。为了支持这种方法,我们引入了带有标签图像的印度水稻病害数据集(IRDD)。所提出的系统在 IRDD 上的平均真阳性率(TPR)为 0.8766,平均预测阳性值为 0.8720,均高于其他最先进的作物病害检测模型。该系统在基准数据集上进行了验证,结果非常显著:TPR分别为0.9870(水稻)、0.9985(番茄)和0.8559(玉米)。此外,所提出的模型在基准数据集 PlantDoc 上的表现优于近期最先进的作品,显示了其在植物病害识别任务中的通用性。最后,还进行了一项消融研究,以探索两个并行分支的重要性。总之,这项研究在先进科学与实际应用之间架起了一座桥梁,展示了跨学科自动化如何彻底改变作物病害识别、提高农业效率并重塑更广泛的工业实践。
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Robust Deep Convolutional Solutions for Identifying Biotic Crop Stress in Wild Environments
In the realm of agricultural automation, the precise identification of crop stress holds immense significance for enhancing crop productivity. Existing methods primarily focus on controlled environments, which may not accurately reflect field conditions. Field-based leaf image analysis poses challenges due to varying image quality and sunlight intensity. Moreover, the complexity of crop stress images, with their random lesion distribution, diverse symptoms, and complex backgrounds, further complicates the analysis. To overcome these limitations, a lightweight hybrid convolutional neural network has been developed. This system integrates the powerful three-deep blocks model with an autoencoder running in parallel to highlight regions of crop stress effectively. To support this approach, we have introduced the Indian Rice Disease Dataset (IRDD) with labeled images. The proposed system reports an average true positive rate (TPR) of 0.8766 and an average positive predicted value of 0.8720 on IRDD, which are higher than other state-of-the-art crop disease detection models. The system is validated on benchmark datasets, yielding significant results: TPR of 0.9870 (rice), 0.9985 (tomato), and 0.8559 (corn). Furthermore, the proposed model outperforms recent state-of-the-art works on the benchmark PlantDoc dataset, showing its effectiveness in generalizing plant disease identification tasks. Finally, an ablation study has been carried out to explore the importance of the two parallel branches. Overall, this study acts as a bridge between advanced science and practical application, showcasing how interdisciplinary automation could revolutionize crop disease identification, improve agricultural efficiency, and reshape broader industrial practices.
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2024 Index IEEE Transactions on AgriFood Electronics Vol. 2 Table of Contents Front Cover IEEE Circuits and Systems Society Information IEEE Circuits and Systems Society Information
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