Cui Jiapeng, Tan Feng, Bai Nan, Fu Yaping
College of Engineering, Heilongjiang Bayi Agricultural University, Daqing, China.
College of Electrical and Information, Heilongjiang Bayi Agricultural University, Daqing, China.
Front Plant Sci. 2024 Feb 9;15:1344958. doi: 10.3389/fpls.2024.1344958. eCollection 2024.
Weeds are one of the main factors affecting crop growth, making weed control a pressing global problem. In recent years, interest in intelligent mechanical weed-control equipment has been growing.
We propose a semantic segmentation network, RDS_Unet, based on corn seedling fields built upon an improved U-net network. This network accurately recognizes weeds even under complex environmental conditions, facilitating the use of mechanical weeding equipment for reducing weed density. Our research utilized field-grown maize seedlings and accompanying weeds in expansive fields. We integrated the U-net semantic segmentation network, employing ResNeXt-50 for feature extraction in the encoder stage. In the decoder phase, Layer 1 uses deformable convolution with adaptive offsets, replacing traditional convolution. Furthermore, concurrent spatial and channel squeeze and excitation is incorporated after ordinary convolutional layers in Layers 2, 3, and 4.
Compared with existing classical semantic segmentation models such as U-net, Pspnet, and DeeplabV3, our model demonstrated superior performance on our specially constructed seedling grass semantic segmentation dataset, CGSSD, during the maize seedling stage. The Q6mean intersection over union (MIoU), precision, and recall of this network are 82.36%, 91.36%, and 89.45%, respectively. Compared to those of the original network, the proposed network achieves improvements of 5.91, 3.50, and 5.49 percentage points in the MIoU, precision, and recall, respectively. The detection speed is 12.6 frames per second. In addition, ablation experiments further confirmed the impactful contribution of each improvement component on the overall semantic segmentation performance.
This study provides theoretical and technical support for the automated operation of intelligent mechanical weeding devices.
杂草是影响作物生长的主要因素之一,使得杂草控制成为一个紧迫的全球问题。近年来,人们对智能机械除草设备的兴趣不断增加。
我们基于改进的U-net网络构建了一个用于玉米苗田的语义分割网络RDS_Unet。该网络即使在复杂环境条件下也能准确识别杂草,便于使用机械除草设备降低杂草密度。我们的研究利用了大面积田地里种植的玉米幼苗和伴生杂草。我们集成了U-net语义分割网络,在编码器阶段采用ResNeXt-50进行特征提取。在解码器阶段,第1层使用带有自适应偏移的可变形卷积,取代传统卷积。此外,在第2、3和4层的普通卷积层之后加入了并发的空间和通道挤压与激励。
与U-net、Pspnet和DeeplabV3等现有的经典语义分割模型相比,我们的模型在我们专门构建的玉米幼苗期幼苗-杂草语义分割数据集CGSSD上表现出卓越的性能。该网络的Q6平均交并比(MIoU)、精度和召回率分别为82.36%、91.36%和89.45%。与原始网络相比,所提出的网络在MIoU、精度和召回率方面分别提高了5.91、3.50和5.49个百分点。检测速度为每秒12.6帧。此外,消融实验进一步证实了每个改进组件对整体语义分割性能的重要贡献。
本研究为智能机械除草设备的自动化操作提供了理论和技术支持。