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基于SAE-ResNet34的水稻钾素营养胁迫程度识别OA

Identification of Rice Potassium Nutrient Stress Severity Based on SAE-ResNet34 Model

中文摘要英文摘要

为实现水稻钾素营养胁迫程度的精准、快速识别,以 ResNet34为核心构建一种基于 SAE-ResNet34的水稻钾素识别方法.以晚稻'黄华占'为研究对象,设置 6 个施钾梯度田间试验,施肥总量分别为 0(K1)、3.78g·m-2(K1)、9.45g·m-2(K2)、14.17(K3)g·m-2、18.90g·m-2(K4)和 28.35g·m-2(K5),基于对水稻分蘖期和拔节期各分蘖茎完全展开的顶三叶叶片扫描所得到的图像数据,在数据预处理阶段加入 ESRGAN 增强型超分辨率生成对抗网络;在每个残差块中将 ReLU激活函数换成 Swish 激活函数,设计 Addition 特征融合结构和引入 ELA高效局部注意力机制模块,以期解决图像 resize 后分辨率降低引起部分特征值丢失与网络模型分类准确度较低的问题.结果表明:基于 SAE-ResNet34 快速识别方法,水稻分蘖期和拔节期的 6 种钾素胁迫程度的平均识别准确率分别达到了 82.87%和 84.58%,较原始 ResNet34 网络分别提高了 7.1 个百分点和 6.7 个百分点;混淆矩阵结果表明水稻分蘖期和拔节期最佳识别准确率分别为 83.67%的K3 处理和 89.11%的 K4 处理;与 VGG16、ResNet50、Swin Transformer 等图像分类网络相比,SAE-ResNet34 网络在精确度、召回率和 F1 分数上的表现仅稍次于 VGG16,训练迭代 250 次的耗时最短,模型大小为 97.49MB,仅比 ResNet50大 7.43MB,综合表现最佳.综上,基于 SAE-ResNet34 网络模型的识别方法能快速、准确对水稻分蘖期和拔节期的钾素营养胁迫程度进行识别,可为水稻等作物的营养诊断识别提供科学参考.

To achieve accurate and fast identification of potassium nutrient stress levels in rice,a rice potassium identification method based on SAE-ResNet34 was constructed with ResNet34 as the core.Taking the late rice'Huanghuazhan'as the research object,six potassium application gradient field trails were set up,while the total fertilization amounts were 0(K1),3.78g·m-2(K1),9.45g·m-2(K2),14.17g·m-2(K3),18.90g·m-2(K4)and 28.35g·m-2(K5),respectively.Based on the high-resolution leaf images data obtained from scanning the fully expanded upper three leaves from tillers during rice tillering and jointing stages.Enhanced super-resolution generative adversarial network(ESRGAN)was incorporated at the data pre-processing stage.Within each residual block,the ReLU activation function was replaced by the Swish activation function,a feature fusion structure based on Addition was designed,and the Efficient local attention(ELA)mechanism module was introduced,with a view to solving the problems of partial feature value loss and low classification accuracy of the network model caused by the reduction of resolution after image resize.The results showed that the rapid recognition method based on SAE-ResNet34 achieved the average recognition accuracy of 82.87%and 84.58%for the six stress levels at the tillering and jointing stages,respectively,on the validation set of the self-constructed rice dataset,which were 7.1 percentage points and 6.7 percentage points higher than that of the original ResNet34 network.The results of confusion matrix showed that the best recognition accuracy for the stress levels at the tillering and jointing stages,were 83.67%for the K3 treatment and 89.11%for the K4 treatment,respectively.Compared with image classification networks such as VGG16,ResNet50 and Swin Transformer,the SAE-ResNet34 network was only slightly behind VGG16 in terms of precision,recall and F1 score,and had the shortest time consumed for 250 rounds of training iterations,with model size of 97.49 MB,which was 7.43MB larger than that of ResNet50 and had the best overall performance.In summary,the identification method based on SAE-ResNet34 network model is able to quickly and accurately identify the degree of potassium nutritional stress during the tillering and jointing stages of rice,which can be used as a scientific reference for nutritional diagnosis and identification of rice and other crops.

杨河;杨红云;孙爱珍;廖宣英;刘智洋

江西农业大学软件学院,南昌 330045江西农业大学软件学院,南昌 330045||现代农业装备江西省重点实验室,南昌 330045江西农业大学计算机与信息工程学院,南昌 330045江西农业大学计算机与信息工程学院,南昌 330045江西农业大学软件学院,南昌 330045

水稻钾素胁迫程度识别ResNet34特征融合注意力机制

Rice potassiumStress degree identificationResNet34Feature fusionAttention mechanism

《中国农业气象》 2026 (4)

627-637,11

国家自然科学基金项目(6216203061562039)现代农业装备江西省重点实验室项目(20242BCC32127)

10.3969/j.issn.1000-6362.2026.04.013

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