College of Biosystems Engineering and Food Science, Zhejiang University, Hangzhou 310058, China.
Key Laboratory of Spectroscopy Sensing, Ministry of Agriculture and Rural Affairs, Hangzhou 310058, China.
Sensors (Basel). 2020 Jul 22;20(15):4082. doi: 10.3390/s20154082.
Using intelligent agricultural machines in paddy fields has received great attention. An obstacle avoidance system is required with the development of agricultural machines. In order to make the machines more intelligent, detecting and tracking obstacles, especially the moving obstacles in paddy fields, is the basis of obstacle avoidance. To achieve this goal, a red, green and blue (RGB) camera and a computer were used to build a machine vision system, mounted on a transplanter. A method that combined the improved You Only Look Once version 3 (Yolov3) and deep Simple Online and Realtime Tracking (deep SORT) was used to detect and track typical moving obstacles, and figure out the center point positions of the obstacles in paddy fields. The improved Yolov3 has 23 residual blocks and upsamples only once, and has new loss calculation functions. Results showed that the improved Yolov3 obtained mean intersection over union (mIoU) score of 0.779 and was 27.3% faster in processing speed than standard Yolov3 on a self-created test dataset of moving obstacles (human and water buffalo) in paddy fields. An acceptable performance for detecting and tracking could be obtained in a real paddy field test with an average processing speed of 5-7 frames per second (FPS), which satisfies actual work demands. In future research, the proposed system could support the intelligent agriculture machines more flexible in autonomous navigation.
在稻田中使用智能农业机械受到了广泛关注。随着农业机械的发展,需要配备障碍物避让系统。为了使机器更加智能化,检测和跟踪障碍物,特别是稻田中的移动障碍物,是障碍物避让的基础。为了实现这一目标,使用 RGB 相机和计算机构建了一个机器视觉系统,并安装在插秧机上。该系统采用了一种结合了改进的 You Only Look Once 版本 3(Yolov3)和深度简单在线和实时跟踪(deep SORT)的方法,用于检测和跟踪典型的移动障碍物,并确定稻田中障碍物的中心点位置。改进的 Yolov3 有 23 个残差块,只进行一次上采样,并具有新的损失计算功能。结果表明,在一个自行创建的稻田中移动障碍物(人和水牛)测试数据集上,改进的 Yolov3 获得了 0.779 的平均交并比(mIoU)得分,处理速度比标准 Yolov3 快 27.3%。在真实的稻田测试中,可以获得可接受的检测和跟踪性能,平均处理速度为每秒 5-7 帧(FPS),满足实际工作需求。在未来的研究中,所提出的系统可以使智能农业机器在自主导航方面更加灵活。