Nong Chunshi, Fan Xijian, Wang Junling
College of Economics and Management, Nanjing University of Aeronautics and Astronautics, Nanjing, China.
College of Information Science and Technology, Nanjing Forestry University, Nanjing, China.
Front Plant Sci. 2022 Jul 1;13:927368. doi: 10.3389/fpls.2022.927368. eCollection 2022.
Weed control has received great attention due to its significant influence on crop yield and food production. Accurate mapping of crop and weed is a prerequisite for the development of an automatic weed management system. In this paper, we propose a weed and crop segmentation method, SemiWeedNet, to accurately identify the weed with varying size in complex environment, where semi-supervised learning is employed to reduce the requirement of a large amount of labelled data. SemiWeedNet takes the labelled and unlabelled images into account when generating a unified semi-supervised architecture based on semantic segmentation model. A multiscale enhancement module is created by integrating the encoded feature with the selective kernel attention, to highlight the significant features of the weed and crop while alleviating the influence of complex background. To address the problem caused by the similarity and overlapping between crop and weed, an online hard example mining (OHEM) is introduced to refine the labelled data training. This forces the model to focus more on pixels that are not easily distinguished, and thus effectively improve the image segmentation. To further exploit the meaningful information of unlabelled data, consistency regularisation is introduced by maintaining the context consistency during training, making the representations robust to the varying environment. Comparative experiments are conducted on a publicly available dataset. The results show the SemiWeedNet outperforms the state-of-the-art methods, and its components have promising potential in improving segmentation.
杂草控制因其对作物产量和粮食生产的重大影响而备受关注。准确绘制作物和杂草分布图是开发自动杂草管理系统的前提条件。在本文中,我们提出了一种杂草和作物分割方法——SemiWeedNet,用于在复杂环境中准确识别大小各异的杂草,其中采用半监督学习来减少对大量标注数据的需求。SemiWeedNet在基于语义分割模型生成统一的半监督架构时,会考虑标注图像和未标注图像。通过将编码特征与选择性内核注意力相结合,创建了一个多尺度增强模块,以突出杂草和作物的显著特征,同时减轻复杂背景的影响。为了解决作物和杂草之间的相似性和重叠所导致的问题,引入了在线难例挖掘(OHEM)来优化标注数据训练。这迫使模型更加关注不易区分的像素,从而有效提高图像分割效果。为了进一步利用未标注数据的有意义信息,通过在训练过程中保持上下文一致性引入了一致性正则化,使表征对变化的环境具有鲁棒性。在一个公开可用的数据集上进行了对比实验。结果表明,SemiWeedNet优于现有方法,其组件在改进分割方面具有广阔的潜力。