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基于作物苗带识别的对垄施药智能系统研制

Development of an intelligent inter-row spraying system based on crop seedling band recognition

  • 摘要: 秸秆集行作业是保护性耕作中实现精准施药的核心作业模式,针对传统全覆盖施药方法易造成污染和浪费问题,准确提取苗带中心线对于实现智能化对垄施药至关重要。该研究结合智能分割算法与精准施药技术,提出改进增强型模拟退火的差分进化-鲸鱼优化算法(simulated annealing differential evolution - whale optimization algorithm, SADE-WOA)驱动的自适应多阈值分割算法(multi-threshold segmentation algorithm, OTSU)进行作物苗带的分割:在鲸鱼优化算法(whale optimization algorithm, WOA)位置更新阶段嵌入差分进化(differential evolution, DE)交叉机制,结合向量扰动增强种群多样性以抑制早熟收敛,动态优化多阈值以适配田间图像特征,再经最小二乘法拟合苗带中心线。基于该算法设计单元化精准施药装置,通过摄像头采集现场图像,利用SADE-WOA算法分割图像并计算种植带定位线坐标,控制器驱动步进电机滑台带动喷头实现对垄施药,采用模糊控制器实时调整施药量,减少雾滴飘移。试验结果表明:SADE-WOA算法可精准区分土壤并保留秸秆纹理信息,最大类间方差更优,收敛速度快且稳定,计算耗时仅为灰狼优化算法(gray wolf optimization algorithm, GWO)的1/10、差分进化算法的1/9;苗带中心线拟合偏航角平均误差为0.34°~0.64°,最大相对误差波动幅度小于0.2 %,有效降低误差累积;精准施药系统相较于传统全覆盖施药方式的药液用量节省约54.3%,雾滴覆盖率维持在27.5 %~32.1 %,药液沉降均匀度提高。该研究实现了秸秆集行模式下种植带精准施药,对提升药液利用率、保护农田生态环境具有重要意义。

     

    Abstract: Straw row-consolidation has one of the most representative patterns during conservation tillage in the black soil region of Northeast China. Straw-covered rows and clean seedling bands are alternated to improve soil conservation and seedbed quality. However, conventional full-coverage pesticide application can lead to chemical waste and environmental contamination because spray droplets are intercepted by straw residues rather than deposited on target crop zones. Therefore, it is often required to accurately and real-time extract the crop seedling band centerline for intelligent inter-row spraying and pesticide application in precision agriculture. Challenges also remain on complex straw texture interference, weak grayscale contrast between soil and straw, and the real-time constraints of agricultural machinery. In this study, an adaptive multi-threshold Otsu segmentation was proposed using improved swarm intelligence optimization. An inter-row spraying was also developed using crop seedling band recognition. Field experiments and demonstrations were conducted at seven conservation tillage sites in Jilin Province, Northeast China. Straw row-consolidation planting structure was alternated between 70 cm straw rows and 60 cm seedling band rows. An image acquisition and processing platform was established for accurate recognition under real conditions. An industrial camera (2K resolution with 2.8 mm focal length) was mounted at the front of a plant protection tractor with a height of 3 m. Comparative tests were performed under different camera depression angles. A 20° oblique depression angle was selected as the optimal acquisition. An effective acquisition width of 9 m was reserved 3 s for image processing, enabling synchronized operation when the tractor moved at 10 km/h. The captured images were transmitted into an embedded machine vision processor (NVIDIA Jetson Orin Nano 4GB, Ubuntu 20.04 LTS) for real-time detection of seedling band centerline. The coordinate information was extracted and then delivered into an STM32 microcontroller in the spraying execution module. Furthermore, color images were first converted into greyscale using YUV luminance channel. Computational efficiency was improved in the vision. Otsu thresholding was applied for binarization. A denoising strategy was used to suppress irregular noise caused by fragmented straw residues, according to component area filtering and morphological opening. A hybrid swarm intelligence optimization, named SADE-WOA, was proposed to integrate differential evolution (DE), simulated annealing (SA), and the whale optimization algorithm (WOA). There were low computational complexity and less susceptibility to local optima, compared with the conventional Otsu multi-threshold segmentation. Specifically, the DE crossover mechanism was embedded into the position update stage of WOA, and vector perturbation was incorporated to enhance population diversity and suppress premature convergence. Meanwhile, SA was used to strengthen local refinement and escaping. Multi-threshold segmentation task was reformulated as a global optimization in a high-dimensional threshold combination space. Adaptive threshold selection was realized for the images from the complex fields. Morphological operations were employed to enhance region connectivity after segmentation. Discontinuities and adhesion were also reduced among seedling band regions. A watershed was applied to separate the regions of interest using seedling bands. Canny edge detection was then used to extract left and right boundary points. The boundary coordinates were extracted to generate the midpoint sets. The seedling band centerline was finally fitted using the least squares method. Comparative experiments were conducted to evaluate the performance, convergence stability, and computational efficiency of the SADE-WOA segmentation. Results show that the SADE-WOA was accurately distinguished soil type to preserve straw texture information, particularly for the maximum between-class variance and stable convergence. The average computation time per image was only one-tenth that of the grey wolf optimization (GWO) and one-ninth that of the conventional differential evolution. Centerline detection accuracy was further evaluated using mean absolute error (MEA), root mean square error (RMSE) and mean relative error (MRE). The yaw angle error of seedling band centerline ranged from 0.34° to 0.64°, and the maximum relative error was below 0.2%, indicating the low cumulative deviation and the high angular accuracy in fields. A modular precision spraying device was designed to integrate camera sensing, embedded vision computing, stepper-motor-driven nozzle positioning, and fuzzy PID flow control. A linear sliding module drove the nozzle to detect seedling band position for inter-row spraying. A fuzzy PID controller dynamically adjusted the spray flow rate in real time. Droplet drift was avoided to improve deposition uniformity. Field spraying trials were conducted at the Changchun Agricultural Machinery Research Institute conservation demonstration base on October 21, 2025. Three test plots of 200 m length were selected during experiments. The tractor operated at a constant speed of 10 km/h. A pesticide saving rate of 54.3% was achieved in the improved system, compared with conventional full-coverage spraying. Droplet coverage was maintained between 27.5% and 32.1%. The uniformity of pesticide deposition was also improved after SADE-WOA-driven segmentation and centerline extraction with the modular inter-row spraying. The findings can also provide an effective solution for precision pesticide application under straw row-consolidation conservation tillage, thus contributing to pesticide utilization efficiency with minimal pollution.

     

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