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基于YOLOv4+HSV的成熟期番茄识别方法
引用本文:李天华,孙萌,丁小明,李玉华,张观山,施国英,李文显. 基于YOLOv4+HSV的成熟期番茄识别方法[J]. 农业工程学报, 2021, 37(21): 183-190
作者姓名:李天华  孙萌  丁小明  李玉华  张观山  施国英  李文显
作者单位:山东农业大学机械与电子工程学院,泰安 271018;山东省农业装备智能化工程实验室,泰安 271018;农业农村部黄淮海设施农业工程科学观测实验站,泰安 271018;山东农业大学机械与电子工程学院,泰安 271018;农业农村部规划设计研究院设施农业研究所,北京,100125;山东农业大学机械与电子工程学院,泰安 271018;山东省农业装备智能化工程实验室,泰安 271018
基金项目:山东省重大科技创新工程项目(2019JZZY020620);山东省现代农业产业技术体系蔬菜产业创新团队项目(SDAIT-05-11)
摘    要:为解决成熟番茄采摘识别中由于藤蔓、叶片、果实遮挡或光照影响而引起的误识别问题,该研究提出了一种基于YOLO v4与HSV(Hue,Saturation,Value)相结合的识别方法,以实现自然环境下成熟期番茄的准确识别.在YOLO v4网络的检测框内通过HSV方法对番茄的红色区域进行分割,并将分割面积在检测框中达到一定...

关 键 词:图像分割  识别  番茄  采摘  YOLO  HSV
收稿时间:2021-08-06
修稿时间:2021-09-16

Tomato recognition method at the ripening stage based on YOLO v4 and HSV
Li Tianhu,Sun Meng,Ding Xiaoming,Li Yuhu,Zhang Guanshan,Shi Guoying,Li Wenxian. Tomato recognition method at the ripening stage based on YOLO v4 and HSV[J]. Transactions of the Chinese Society of Agricultural Engineering, 2021, 37(21): 183-190
Authors:Li Tianhu  Sun Meng  Ding Xiaoming  Li Yuhu  Zhang Guanshan  Shi Guoying  Li Wenxian
Affiliation:1. College of Mechanical and Electronic Engineering, Shandong Agricultural University, Tai''an 271018, China; 2. Shandong Provincial Engineering Laboratory of Agricultural Equipment Intelligence, Tai''an 271018, China; 4. Scientific Observing and Experimental Station of Environment Controlled Agricultural Engineering in Huang-Huai-Hai Region,Ministry of Agriculture and Rural Affairs, Tai''an 271018, China;3. Institute of Protected Agriculture, Academy of Agricultural Planning and Engineering, Ministry of Agriculture and Rural Affairs, Beijing 100125, China;
Abstract:Abstract: An accurate recognition of fruit and vegetable depends mainly on the occlusion of vine, leaf, and light during robotic harvesting at present. In this study, a feasible recognition algorithm was proposed to efficiently identify the ripe tomatoes in the natural environment using YOLO V4 and HSV. The data set of mature tomatoes was also collected to capture some obscure images with the vines and leaves or color-changing by light under the complex growth environment. Once the original YOLO V4 network was utilized to identify the tomatoes after learning these samples, some tomatoes in the green ripening and color transition stage were taken like in the mature stage. Therefore, an HSV processing was added into the detection box of the original YOLO V4 network, in order to segment the red region of tomatoes. The specific tomatoes were taken as the target output to improve the accuracy of recognition if the red areas of segmentation reached a critical proportion in the detection box. The size of the proportion presented an important impact on the accuracy of recognition. The recognition performance was also compared on the test set under different proportions. As such, the proportion of 16% was taken as the tomato recognition at the mature stage. At this time, the highest recognition accuracy of the combined YOLO V4 and HSV was 94.77%, 4.30% higher than that of the original. The detection speed of a single image in the workstation was 25.86 ms. It indicated that the addition of HSV processing was widely expected to improve the accuracy of the original network. Furthermore, the improved network was also used to effectively remove immature tomatoes that cannot be recognized by the improved Cascade RCNN. In addition, the running time was tested ranging from the calling RealSense D435i to the first target tomato on the workstation and the miniature industrial computer. It was found that the average time of recognition was 0.51 s on the workstation, and 1.48 s on the miniature industrial computer, using the combined YOLO V4 and HSV from turning on the camera to the first target detection. Consequently, the improved algorithm was fully met the real-time requirements of mechanical picking. This finding can also provide a strong theoretical basis for the accurate, efficient, and real-time recognition of fruit and vegetable picking using robots in a complex environment.
Keywords:image segmentation   recognition   tomato   picking   YOLO   HSV
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