Intelligent recognition and rapid grading of tea buds are crucial for advancing tea-picking machinery; however, complex plantation backgrounds and inconsistent bud growth have limited traditional algorithms to merely identifying picking points, neglecting bud pose and grade, which restricts harvesting efficiency. To address these challenges, we propose YOLO-PC, a deep neural network designed for simultaneous tea bud pose estimation and classification, which incorporates a dynamic snake convolution (DSConv) module for enhanced shape feature extraction, an ELASPP-CSPC attention mechanism for improved spatial pooling, and EIoU loss to accelerate regression and boost localization accuracy. Experimental results demonstrate that the model achieves detection accuracies of 91. 5% for one-bud-one-leaf and 93. 2% for one-bud-two-leaf scenarios, with an average keypoint detection accuracy (PoseₘAP) of 89. 7% and a Normalized Mean Error (NME) of 0. 047; furthermore, compared to YOLOv7-pose, it increases mean average precision by 7. 26% and pose accuracy by 9. 65% while reducing parameters by 14. 99 M. Ablation studies confirm the superior performance of the proposed model in tea bud detection, indicating its potential to provide robust practical support for adaptive and intelligent tea harvesting systems.
Yao et al. (Thu,) studied this question.