基于深度图像和神经网络的拖拉机识别与定位方法
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国家重点研发计划项目(2017YFD0700400-2017YFD0700403)


Tractor Identification and Positioning Method Based on Depth Image and Neural Network
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    摘要:

    针对多机协同导航作业中本机前方的拖拉机识别精度低、相对定位困难,难以保障自主作业安全的问题,提出了一种基于深度图像和神经网络的拖拉机识别与定位方法。该方法通过建立YOLO-ZED神经网络识别模型,识别并提取拖拉机特征;运用双目定位原理计算拖拉机相对本机的空间位置坐标。对拖拉机进行定点识别与定位试验,分别沿着拖拉机纵向、宽度方向和S形曲线方向测量拖拉机的识别与定位结果。试验结果表明:本文方法能够在3~10m景深范围内快速、准确地识别并定位拖拉机的空间位置,平均识别定位速度为19f/s;在相机景深方向和宽度方向定位拖拉机的最大绝对误差分别为0.720m和0.090m,最大相对误差分别为7.48%和8.00%,标准差均小于0.030m,能够满足多机协同导航作业对拖拉机目标识别的精度和速度要求。

    Abstract:

    With the aim to solve the problems of low identification accuracy of the front tractor, relative positioning difficulty, and difficulty in ensuring the safety of autonomous operation in the multimachine coordinated navigation operation, a method of tractor identification and positioning based on depth image and neural network was proposed. The tractor features were recognized and extracted by establishing YOLO-ZED neural network recognition model. The ZED camera was used to collect 1100 tractor images at different angles, distances, and resolutions in cloudy and sunny days, and the LabelImg marking tool was used to manually mark the collected tractor images, marking the cab as the identification target. The tractor positioning model based on the depth image was established and the binocular positioning principle was used to calculate the spatial position coordinates of the tractor relative to the machine. A fixedpoint identification and positioning test was performed on a small power tractor, and the identification and positioning results of the tractor were measured along the longitudinal, width and Scurve directions of the tractor. The test results showed that the algorithm can quickly and accurately identify and locate the spatial position of the tractor, and the average identification and positioning speed was 19f/s. The maximum absolute error of positioning the tractor in the camera depth direction and width direction was 0.720m and 0.090m, respectively, the maximum relative error was 7.48% and 8.00%, and the standard deviation was less than 0.030m. The accuracy and speed requirements of tractor target identification for multimachine coordinated navigation can be met.

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王亮,翟志强,朱忠祥,李臻,杜岳峰,毛恩荣.基于深度图像和神经网络的拖拉机识别与定位方法[J].农业机械学报,2020,51(s2):554-560. WANG Liang, ZHAI Zhiqiang, ZHU Zhongxiang, LI Zhen, DU Yuefeng, MAO Enrong. Tractor Identification and Positioning Method Based on Depth Image and Neural Network[J]. Transactions of the Chinese Society for Agricultural Machinery,2020,51(s2):554-560.

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  • 收稿日期:2020-08-20
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  • 在线发布日期: 2020-12-10
  • 出版日期: 2020-12-10