Abstract

Unmanned Ground Vehicles (UGVs) that can drive autonomously in cross-country environment have received a good deal of attention in recent years. They must have the ability to determine whether the current terrain is traversable or not by using onboard sensors. This paper explores new methods related to environment perception based on computer image processing, pattern recognition, multisensors data fusion, and multidisciplinary theory. Kalman filter is used for low-level fusion of physical level, thus using the D-S evidence theory for high-level data fusion. Probability Test and Gaussian Mixture Model are proposed to obtain the traversable region in the forward-facing camera view for UGV. One feature set including color and texture information is extracted from areas of interest and combined with a classifier approach to resolve two types of terrain (traversable or not). Also, three-dimension data are employed; the feature set contains components such as distance contrast of three-dimension data, edge chain-code curvature of camera image, and covariance matrix based on the principal component method. This paper puts forward one new method that is suitable for distributing basic probability assignment (BPA), based on which D-S theory of evidence is employed to integrate sensors information and recognize the obstacle. The subordination obtained by using the fuzzy interpolation is applied to calculate the basic probability assignment. It is supposed that the subordination is equal to correlation coefficient in the formula. More accurate results of object identification are achieved by using the D-S theory of evidence. Control on motion behavior or autonomous navigation for UGV is based on the method, which is necessary for UGV high speed driving in cross-country environment. The experiment results have demonstrated the viability of the new method.

Highlights

  • Due to the special value of military, the developed countries have researched autonomous driving car since the 1970s

  • This paper provides a comprehensive survey of the Unmanned Ground Vehicle of DLUT

  • The Unmanned Ground Vehicles (UGVs) developed by the DLUT in collaboration with its primary supporters relies on a software pipeline for processing sensor data and determining proper steering, throttle, and brake commands

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Summary

Introduction

Due to the special value of military, the developed countries have researched autonomous driving car since the 1970s. In July 2010, led by Professor Alberto Broggi from the University of Parma, the autonomous driving team started from Italy, lasted for 98 days, and fulfilled the journey of 13000 kilometers They withstood mountain, desert, blizzard, and other tests, arrived in EU Pavilion at Shanghai World Expo safely. Hu and Wu suggested to integrate the restrictions of height, continuity and slope information They used region growing method to detect the obstacles from the disparity image correctly and robustly, which contributed to avoid the interference of the noise [8]. The complex environment comprehensive test mainly represents the ability of autonomous driving vehicle in athletic process, which includes identification of traffic signs, integrating control of motor vehicles, and the ability of using the signal light device correctly, even more, telling road traffic situation comprehensively, and deciding whether to go ahead or not [10].

Hardware Description
Sensor Data Precession
Data Fusion
Results
Conclusions
Full Text
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