Ang Gao, Zhiwei Tian, Wei Ma, Yuepeng Song, Longlong Ren, Yuliang Feng, Jianping Qian, Lijia Xu
College of Mechanical and Electronic Engineering, Shandong Agricultural University, Tai'an, Shandong, China.
Institute of Urban Agriculture, Chinese Academy of Agricultural Sciences, Chengdu, China.
Front Plant Sci. 2024 Apr 10;15:1375118. doi: 10.3389/fpls.2024.1375118. eCollection 2024.
In order to address the challenges of inefficiency and insufficient accuracy in the manual identification of young citrus fruits during thinning processes, this study proposes a detection methodology using the you only look once for complex backgrounds of young citrus fruits (YCCB-YOLO) approach. The method first constructs a dataset containing images of young citrus fruits in a real orchard environment. To improve the detection accuracy while maintaining the computational efficiency, the study reconstructs the detection head and backbone network using pointwise convolution (PWonv) lightweight network, which reduces the complexity of the model without affecting the performance. In addition, the ability of the model to accurately detect young citrus fruits in complex backgrounds is enhanced by integrating the fusion attention mechanism. Meanwhile, the simplified spatial pyramid pooling fast-large kernel separated attention (SimSPPF-LSKA) feature pyramid was introduced to further enhance the multi-feature extraction capability of the model. Finally, the Adam optimization function was used to strengthen the nonlinear representation and feature extraction ability of the model. The experimental results show that the model achieves 91.79% precision (P), 92.75% recall (R), and 97.32% mean average precision (mAP)on the test set, which were improved by 1.33%, 2.24%, and 1.73%, respectively, compared with the original model, and the size of the model is only 5.4 MB. This study could meet the performance requirements for citrus fruit identification, which provides technical support for fruit thinning.
为了解决在疏果过程中人工识别幼龄柑橘果实效率低下和准确性不足的问题,本研究提出了一种针对幼龄柑橘果实复杂背景的单阶段目标检测方法(YCCB-YOLO)。该方法首先构建了一个包含真实果园环境中幼龄柑橘果实图像的数据集。为了在保持计算效率的同时提高检测精度,本研究使用逐点卷积(PWonv)轻量级网络对检测头和主干网络进行了重构,在不影响性能的情况下降低了模型的复杂度。此外,通过集成融合注意力机制,增强了模型在复杂背景下准确检测幼龄柑橘果实的能力。同时,引入了简化空间金字塔池化快速大核分离注意力(SimSPPF-LSKA)特征金字塔,进一步提升了模型的多特征提取能力。最后,使用Adam优化函数增强了模型的非线性表示和特征提取能力。实验结果表明,该模型在测试集上的精度(P)达到91.79%,召回率(R)达到92.75%,平均精度均值(mAP)达到97.32%,与原模型相比分别提高了1.33%、2.24%和1.73%,且模型大小仅为5.4MB。本研究能够满足柑橘果实识别的性能要求,为疏果提供了技术支持。