XooNet: a high-throughput UAV-based approach for field screening of bacterial blight-resistant germplasm in wild rice

Fuente: PubMed "plant biotechnology"
Front Plant Sci. 2026 Feb 20;17:1765317. doi: 10.3389/fpls.2026.1765317. eCollection 2026.ABSTRACTBacterial blight (BB) poses a significant threat to rice production, necessitating efficient screening of resistant wild rice germplasm to facilitate breeding. Traditional methods are labor-intensive and subjective, while existing UAV-based approaches suffer from high costs or incomplete solutions. This study introduces XooNet, a novel UAV-based method for automated BB resistance screening in wild rice, which classifies wild rice into several levels based on BB resistance. To facilitate this method, a high-precision and lightweight oriented bounding box (OBB) detection algorithm for BB in wild rice has been developed. Experimental results show that the screening method achieved an accuracy of 97.5%. After applying the LAMP pruning strategy to balance performance and efficiency, the detection model achieved an accuracy of 93.1% with a significantly reduced parameter size of 1.4M and a computational complexity of 3.5 GFLOPs. This approach will facilitate the high-throughput screening of extensive wild rice germplasm for BB resistance, thereby expediting the discovery of valuable wild rice genetic resources.PMID:41799977 | PMC:PMC12963347 | DOI:10.3389/fpls.2026.1765317