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基于同步检测算法的葡萄园非结构化道路提取与路边果实识别

Unstructured road extraction and roadside fruit recognition in grape orchards based on a synchronous detection algorithm.

作者信息

Zhou Xinzhao, Zou Xiangjun, Tang Wei, Yan Zhiwei, Meng Hewei, Luo Xiwen

机构信息

College of Mechanical and Electrical Engineering, Shihezi University, Shihezi, China.

Foshan-Zhongke Innovation Research Institute of Intelligent Agriculture, Foshan, China.

出版信息

Front Plant Sci. 2023 Jun 2;14:1103276. doi: 10.3389/fpls.2023.1103276. eCollection 2023.

Abstract

Accurate road extraction and recognition of roadside fruit in complex orchard environments are essential prerequisites for robotic fruit picking and walking behavioral decisions. In this study, a novel algorithm was proposed for unstructured road extraction and roadside fruit synchronous recognition, with wine grapes and nonstructural orchards as research objects. Initially, a preprocessing method tailored to field orchards was proposed to reduce the interference of adverse factors in the operating environment. The preprocessing method contained 4 parts: interception of regions of interest, bilateral filter, logarithmic space transformation and image enhancement based on the MSRCR algorithm. Subsequently, the analysis of the enhanced image enabled the optimization of the gray factor, and a road region extraction method based on dual-space fusion was proposed by color channel enhancement and gray factor optimization. Furthermore, the YOLO model suitable for grape cluster recognition in the wild environment was selected, and its parameters were optimized to enhance the recognition performance of the model for randomly distributed grapes. Finally, a fusion recognition framework was innovatively established, wherein the road extraction result was taken as input, and the optimized parameter YOLO model was utilized to identify roadside fruits, thus realizing synchronous road extraction and roadside fruit detection. Experimental results demonstrated that the proposed method based on the pretreatment could reduce the impact of interfering factors in complex orchard environments and enhance the quality of road extraction. Using the optimized YOLOv7 model, the precision, recall, mAP, and F1-score for roadside fruit cluster detection were 88.9%, 89.7%, 93.4%, and 89.3%, respectively, all of which were higher than those of the YOLOv5 model and were more suitable for roadside grape recognition. Compared to the identification results obtained by the grape detection algorithm alone, the proposed synchronous algorithm increased the number of fruit identifications by 23.84% and the detection speed by 14.33%. This research enhanced the perception ability of robots and provided a solid support for behavioral decision systems.

摘要

在复杂果园环境中准确提取道路并识别路边水果是机器人水果采摘和行走行为决策的重要前提。本研究以酿酒葡萄和非结构化果园为研究对象,提出了一种用于非结构化道路提取和路边水果同步识别的新算法。首先,提出了一种针对田间果园的预处理方法,以减少操作环境中不利因素的干扰。该预处理方法包括4个部分:感兴趣区域截取、双边滤波、对数空间变换和基于MSRCR算法的图像增强。随后,通过对增强图像的分析优化了灰度因子,并通过颜色通道增强和灰度因子优化提出了一种基于双空间融合的道路区域提取方法。此外,选择了适用于野外环境中葡萄串识别的YOLO模型,并对其参数进行了优化,以提高模型对随机分布葡萄的识别性能。最后,创新性地建立了一个融合识别框架,将道路提取结果作为输入,利用优化参数的YOLO模型识别路边水果,从而实现道路提取和路边水果检测的同步。实验结果表明,所提出的基于预处理的方法可以减少复杂果园环境中干扰因素的影响,提高道路提取的质量。使用优化后的YOLOv7模型,路边水果串检测的精度、召回率、平均精度均值和F1分数分别为88.9%、89.7%、93.4%和89.3%,均高于YOLOv5模型,更适合路边葡萄识别。与单独使用葡萄检测算法获得的识别结果相比,所提出的同步算法使水果识别数量增加了23.84%,检测速度提高了14.33%。本研究增强了机器人的感知能力,为行为决策系统提供了坚实的支持。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/7112/10272741/2431d2be2989/fpls-14-1103276-g001.jpg

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