摘要Radicle length is a critical indicator of seed vigor,germination capacity,and seedling growth potential.However,existing measurement methods face challenges in automation,efficiency,and generalizability,often requiring manual intervention or re-annotation for different seed types.To address these limitations,this paper proposes an automated method,LenRuler,with a primary focus on rice seeds and validation in multiple crops.The method leverages the Segment Anything Model(SAM)as the foundational segmentation model and employs a coarse-to-fine segmentation strategy combined with Gaussian-based classification to automatically generate bounding boxes and centroids,which are then fed into SAM for precise segmentation of the seed coat and radicle.The radicle length is subsequently computed by converting the geodesic distance between the radicle skeleton's farthest endpoint and its nearest intersection with the seed coat skeleton into the true length.Experiments on the Riceseed1 dataset show that the proposed method achieves a Dice coefficient of 0.955 and a Pixel Accuracy of 0.944,demonstrating excellent segmentation performance.Radicle length measurement experiments on the Riceseed2 test set show that the Mean Absolute Error(MAE)was 0.273 mm and the coefficient of determination(R2)was 0.982,confirming the method's high precision for rice.On the Otherseed dataset,the predicted radicle lengths for maize(Zea mays),pearl millet(Pennisetum glaucum),and rye(Secale cereale)are consistent with the observed radicle length distributions,demonstrating strong cross-species performance.These results establish LenRuler as an accurate and automated solution for radicle length measurement in rice,with validated appli-cability to other crop species.
更多相关知识
- 浏览0
- 被引0
- 下载0

相似文献
- 中文期刊
- 外文期刊
- 学位论文
- 会议论文


换一批



