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基于DM642的高地隙小车的田间路径识别导航系统
引用本文:张铁民,庄晓霖.基于DM642的高地隙小车的田间路径识别导航系统[J].农业工程学报,2015,31(4):160-167.
作者姓名:张铁民  庄晓霖
作者单位:华南农业大学工程学院,广州 510642,华南农业大学工程学院,广州 510642
基金项目:国家科技支撑计划项目设施农业种苗培育机器人研究(2013AA1024406-03)
摘    要:为了实现智能小车在各种不同的路径下稳定高效的进行图像导航,该文以自主设计了满足于设施农业用的四轮独立驱动的高地隙小车作为平台,采用TI公司的TMS320DM642高性能数字多媒体处理器为核心处理器,建立了识别路径的视觉检测系统,实现了对多种路径标识的实时采集和图像显示,提出了用于实际路径检测的图像处理的改进算法,包括利用2G-R-B颜色特征识别绿色植物、中心线法提取路径、双折线拟合的Hough变换提取路径、多折线拟合的Hough变换提取路径等,以实现小车的自主导航。试验结果表明所开发的路径识别与跟踪控制系统能对不同颜色的标识线、绿色植物与裸露地面的分界线等一系列路径进行识别和导航控制,系统适应性好、抗干扰能力强,稳定性高、实时性好,满足无人控制的农田作业需求,节省劳动力,提高生产效率。该研究可为应用于田间作业的高地隙小车的路径识别与跟踪控制系统设计提供参考。

关 键 词:算法  检测  提取  Hough变换  路径识别  跟踪控制
收稿时间:2014/10/20 0:00:00
修稿时间:1/7/2015 12:00:00 AM

Identification and navigation system of farmland path for high-clearance vehicle based on DM642
Zhang Tiemin and Zhuang Xiaolin.Identification and navigation system of farmland path for high-clearance vehicle based on DM642[J].Transactions of the Chinese Society of Agricultural Engineering,2015,31(4):160-167.
Authors:Zhang Tiemin and Zhuang Xiaolin
Institution:College of Engineering, South China Agricultural University, Guangzhou 510642, China and College of Engineering, South China Agricultural University, Guangzhou 510642, China
Abstract:Abstract: This article presents a solution to achieve autonomous vehicle navigation and path recognition. The visual inspection system is established by utilizing agricultural four wheels drive vehicle equipped with a high performance digital media processor. This visual inspecting system is capable of collecting and displaying real time image, using an improved algorithm for path detection, which combines a serial of technologies, including 2G-R-B colour identification for identify the greens, central line algorithm for route calculation, and using double polyline algorithm including multi polyline to simulate Hough transform. In this article, the pro and con of each algorithm were compared and also its applicable environment by a series of path recognition and navigation tests. Although TMS320 DM642 has a strong operational ability, Hough transform needs a lot of operation. In order to reduce the delay in the process of image processing, a series of program optimizations had been launched in vehicle including Hough transform to extract path, Hough transform of double polylines fitting to extract path and Hough transform of multi polylines fitting to extract path. For example, the interesting areas were chosen to process, the step length of Hough transform appropriately increased, and interlaced scanning made the program of Hough transform in an easier, faster and more efficient way. The data receiving of the system was in the form of the serial port interrupt. In this agreement, according to the different environments, vehicle control chip could send proper instruction to control image processing chip to pick an optimal image algorithm. Meanwhile, according to the existing rules, the deviation of high-clearance vehicle's direction could be told to vehicle control chip by image processing chip in order to adjust the vehicle's direction appropriately according to the vehicle movement. Generally speaking, image processing chip would send data to vehicle control chip one time every 400 ms to control the vehicle in near real time. The accuracy could satisfy the need of the navigation. Experiment of walking straight showed that the standard deviation of lateral deviation was 7.199, the standard deviation of angular deviation was 6.294, and angular deviation could reach 22.5°. Experiment with velocity influence on navigation precision showed that the average tracking deviation was 0.61 cm and the maximum tracking deviation was 16 cm in small turn at low speed. The average tracking deviation was 5.21 cm and the maximum tracking deviation was 29 cm in small turn at high speed. The average tracking deviation was 0.78 cm and the maximum tracking deviation was 23 cm in large turn at low speed. The average tracking deviation was 6.36 cm and the maximum tracking deviation was 35 cm in large turn at high speed. Therefore, this navigation control system is stable and reliable when the vehicle passes a straight line. Navigation precision decreases under the condition of high speed. The effect of the tracing also decreases when the turning radius is too large. However, this system can meet the demands of agricultural vehicles in navigation. The results of a series of route recognition and navigation tests demonstrates the efficiency of this visual inspection system. The combination of different technologies such as central line algorithm, Hough transform, double polyline algorithm and multi polyline to simulate Hough transform can help the vehicle to achieve self-navigation in all kinds of indoor and outdoor environments. Also in a spiral of path recognition and navigation tests, the vehicle performs great adaptability and strong anti-interference ability, and also reacts quick and is highly stable. The application of such tracing system has full potential in the future.
Keywords:algorithms  measurements  extraction  hough transformation  path identification  tracking control
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