Li Minglang, Tao Zhiyong, Yan Wentao, Lin Sen, Feng Kaihao, Zhang Zeyi, Jing Yurong
School of Electronic and Information Engineering, Liaoning Technical University, Huludao, 125105, China.
Research Institute of Pomology, Chinese Academy of Agricultural Sciences, Xingcheng, 125100, China.
Plant Methods. 2025 Jan 9;21(1):4. doi: 10.1186/s13007-025-01324-5.
Apricot trees, serving as critical agricultural resources, hold a significant role within the agricultural domain. Conventional methods for detecting pests and diseases in these trees are notably labor-intensive. Many conditions affecting apricot trees manifest distinct visual symptoms that are ideally suited for precise identification and classification via deep learning techniques. Despite this, the academic realm currently lacks extensive, realistic datasets and deep learning strategies specifically crafted for apricot trees. This study introduces ATZD01, a publicly accessible dataset encompassing 11 categories of apricot tree pests and diseases, meticulously compiled under genuine field conditions. Furthermore, we introduce an innovative detection algorithm founded on convolutional neural networks, specifically devised for the management of apricot tree pests and diseases. To enhance the accuracy of detection, we have developed a novel object detection framework, APNet, alongside a dedicated module, the Adaptive Thresholding Algorithm (ATA), tailored for the detection of apricot tree afflictions. Experimental evaluations reveal that our proposed algorithm attains an accuracy rate of 87.1% on ATZD01, surpassing the performance of all other leading algorithms tested, thereby affirming the effectiveness of our dataset and model. The code and dataset will be made available at https://github.com/meanlang/ATZD01 .
杏树作为重要的农业资源,在农业领域发挥着重要作用。传统的杏树病虫害检测方法非常耗费人力。许多影响杏树的病症会表现出明显的视觉症状,非常适合通过深度学习技术进行精确识别和分类。尽管如此,目前学术界缺乏专门为杏树精心打造的广泛、真实的数据集和深度学习策略。本研究推出了ATZD01,这是一个可公开获取的数据集,包含11类杏树病虫害,是在真实田间条件下精心汇编而成的。此外,我们还推出了一种基于卷积神经网络的创新检测算法,专门设计用于管理杏树病虫害。为了提高检测准确性,我们开发了一种新颖的目标检测框架APNet,以及一个专门的模块——自适应阈值算法(ATA),用于检测杏树病害。实验评估表明,我们提出的算法在ATZD01上的准确率达到了87.1%,超过了所有其他测试的领先算法的性能,从而证实了我们的数据集和模型的有效性。代码和数据集将在https://github.com/meanlang/ATZD01上提供。