Wang Mengjie, Li Yang, Meng Hewei, Chen Zhiwei, Gui Zhiyong, Li Yaping, Dong Chunwang
College of Mechanical and Electrical Engineering, Shihezi University, Shihezi, China.
Key Laboratory of Tea Quality and Safety Control, Ministry of Agriculture and Rural Affairs, Tea Research Institute, Chinese Academy of Agricultural Sciences, Hangzhou, China.
Front Plant Sci. 2024 Jun 3;15:1393138. doi: 10.3389/fpls.2024.1393138. eCollection 2024.
Tea bud detection is the first step in the precise picking of famous teas. Accurate and fast tea bud detection is crucial for achieving intelligent tea bud picking. However, existing detection methods still exhibit limitations in both detection accuracy and speed due to the intricate background of tea buds and their small size. This study uses YOLOv5 as the initial network and utilizes attention mechanism to obtain more detailed information about tea buds, reducing false detections and missed detections caused by different sizes of tea buds; The addition of Spatial Pyramid Pooling Fast (SPPF) in front of the head to better utilize the attention module's ability to fuse information; Introducing the lightweight convolutional method Group Shuffle Convolution (GSConv) to ensure model efficiency without compromising accuracy; The Mean-Positional-Distance Intersection over Union (MPDIoU) can effectively accelerate model convergence and reduce the training time of the model. The experimental results demonstrate that our proposed method achieves precision (P), recall rate (R) and mean average precision (mAP) of 93.38%, 89.68%, and 95.73%, respectively. Compared with the baseline network, our proposed model's P, R, and mAP have been improved by 3.26%, 11.43%, and 7.68%, respectively. Meanwhile, comparative analyses with other deep learning methods using the same dataset underscore the efficacy of our approach in terms of P, R, mAP, and model size. This method can accurately detect the tea bud area and provide theoretical research and technical support for subsequent tea picking.
茶芽检测是名优茶精准采摘的第一步。准确快速的茶芽检测对于实现智能茶芽采摘至关重要。然而,由于茶芽背景复杂且尺寸较小,现有的检测方法在检测精度和速度方面仍存在局限性。本研究以YOLOv5作为初始网络,并利用注意力机制获取关于茶芽更详细的信息,减少不同尺寸茶芽导致的误检和漏检;在头部前添加空间金字塔池化快速模块(SPPF),以更好地利用注意力模块融合信息的能力;引入轻量级卷积方法分组混洗卷积(GSConv),在不影响准确性的情况下确保模型效率;平均位置距离交并比(MPDIoU)能够有效加速模型收敛并减少模型训练时间。实验结果表明,我们提出的方法的精确率(P)、召回率(R)和平均精度均值(mAP)分别达到了93.38%、89.68%和95.73%。与基线网络相比,我们提出的模型的P、R和mAP分别提高了3.26%、11.43%和7.68%。同时,使用相同数据集与其他深度学习方法进行的对比分析突出了我们方法在P、R、mAP和模型大小方面的有效性。该方法能够准确检测茶芽区域,为后续茶叶采摘提供理论研究和技术支持。