Tang Ruipeng, Tang Jianxun, Talip Mohamad Sofian Abu, Aridas Narendra Kumar, Guan Binghong
School of Electrical, Electronic and Mechanical Engineering, University of Bristol, BS8 1UB, Bristol, UK.
Faculty of Electronics and Electrical Engineering, Zhaoqing University, No. 55, Zhaoqing City, Guangdong Province, China.
Sci Rep. 2025 Jul 1;15(1):20403. doi: 10.1038/s41598-025-04370-0.
Durian is a valuable tropical fruit whose pollination heavily relies on bats and nocturnal insects. However, environmental degradation and pesticide usage have reduced insect populations, leading to inefficient natural pollination. This study proposes an AI-powered drone-based pollination method for complex durian orchards, integrating improved object detection and optimized path planning. Specifically, we enhance the YOLO-v8 algorithm using the GhostNet lightweight network to reduce computational complexity while boosting detection precision. For path planning, we develop an Enhanced TSP (EN-TSP) algorithm based on a branch and bound strategy with least-cost optimization. Experimental results demonstrate that the proposed method improves detection accuracy by 5.85% and path efficiency by 26.89% compared to baseline algorithms. The novel use of GhostNet with YOLO-v8 enables superior detection of durian flowers under low-light and occluded conditions, while EN-TSP ensures globally optimal drone routes, reducing travel distance and improving operational reliability. This integrated solution advances smart agriculture by enabling scalable, efficient, and precise pollination, reducing labor costs and increasing durian yield and quality.
榴莲是一种珍贵的热带水果,其授粉严重依赖蝙蝠和夜间活动的昆虫。然而,环境退化和农药使用减少了昆虫数量,导致自然授粉效率低下。本研究针对复杂的榴莲果园提出了一种基于人工智能无人机的授粉方法,该方法集成了改进的目标检测和优化的路径规划。具体而言,我们使用GhostNet轻量级网络增强YOLO-v8算法,以降低计算复杂度,同时提高检测精度。对于路径规划,我们基于分支定界策略和最低成本优化开发了一种增强型旅行商问题(EN-TSP)算法。实验结果表明,与基线算法相比,所提出的方法将检测准确率提高了5.85%,路径效率提高了26.89%。GhostNet与YOLO-v8的新颖结合能够在低光照和遮挡条件下对榴莲花朵进行卓越检测,而EN-TSP确保无人机的全局最优路径,减少飞行距离并提高操作可靠性。这种集成解决方案通过实现可扩展、高效和精确的授粉,降低劳动力成本,提高榴莲产量和质量,推动了智慧农业的发展。