Feng J H, Zhang Z L, Li D Q, Li G A, Huang Z B, He X H, et al. Detection method for the guidance directrix of daylily in the field environment. Int J Agric & Biol Eng, 2026; 19(2): 262–271. DOI: 10.25165/j.ijabe.20261902.9706
Citation: Feng J H, Zhang Z L, Li D Q, Li G A, Huang Z B, He X H, et al. Detection method for the guidance directrix of daylily in the field environment. Int J Agric & Biol Eng, 2026; 19(2): 262–271. DOI: 10.25165/j.ijabe.20261902.9706

Detection method for the guidance directrix of daylily in the field environment

  • The daylily (Hemerocallis citrina Baroni) is an herbaceous perennial whose flowers are rich in nutritional and functional components. It is typically cultivated in rows but harvested manually, a labor-intensive process that this study aims to automate by developing a robotic harvesting system. A critical component of such a system is autonomous navigation, which poses significant challenges in unstructured field environments due to changing natural light, randomly distributed weeds, and varying inter-row density. To address these challenges, this study adopted vision-based navigation technology and proposed a guidance directrix detection algorithm. The proposed approach begins with converting the color model from RGB to HSV to decouple the brightness, thereby mitigating the impact of natural light variations. Morphological dilation is applied to suppress noise from weeds in the inter-row regions. Furthermore, an innovative coarse segmentation strategy based on hue and saturation is introduced to handle the problem of different sparsity in the inter-row. Finally, the inter-row axis is accurately extracted by employing concepts from physics, namely, the center of mass and moment of inertia. Experimental results demonstrate an accuracy of 98.25%, a recall of 100%, an average navigation processing time of 8.7521 ms, and a compact model size of only 18 KB. These findings empirically confirm that the proposed approach achieves high precision and real-time performance under unstructured, uncertain, and dynamically changing field conditions. Additionally, the algorithm operates with high computational efficiency and requires neither expensive hardware nor large-scale training datasets.
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