Refine Your Search

Search Results

Viewing 1 to 4 of 4
Technical Paper

Travelling Resistance Estimation and Sandy Road Identification for SUVs

2018-04-03
2018-01-0578
The mechanical properties of sandy road are quite different from those of hard surface road. For vehicle control systems such as EMS (engine management system), TCU (transmission control unit) and ABS (antilock brake system), the strategies and parameters set for solid surface road are not optimal for driving on sandy road. It is an effective way to improve the mobility of all-terrain vehicles by identifying sandy road online and shifting the control strategies and parameters of control systems to sandy sets. In this paper, a sandy road identification algorithm for SUVs is proposed. Firstly, the vehicle signals, such as engine torque and speed, gear position, wheel and vehicle speed, are acquired from EMS, TCU and ESP (electronic stability program) through CAN (controller area network) bus respectively. Based on the information and longitudinal force equilibrium equation, the travelling resistance of vehicle is estimated.
Technical Paper

Unstructured Road Region Detection and Road Classification Algorithm Based on Machine Vision

2023-04-11
2023-01-0061
Accurate sensing of road conditions is one of the necessary technologies for safe driving of intelligent vehicles. Compared with the structured road, the unstructured road has complex road conditions, and the response characteristics of vehicles under different road conditions are also different. Therefore, accurately identifying the road categories in front of the vehicle in advance can effectively help the intelligent vehicle timely adjust relevant control strategies for different road conditions and improve the driving comfort and safety of the vehicle. However, traditional road identification methods based on vehicle kinematics or dynamics are difficult to accurately identify the road conditions ahead of the vehicle in advance. Therefore, this paper proposes an unstructured road region detection and road classification algorithm based on machine vision to obtain the road conditions ahead.
Technical Paper

Global Off-Road Path Planning of Unmanned Ground Vehicles Based on the Raw Remote Sensing Map

2023-04-11
2023-01-0699
Unmanned Ground Vehicle (UGV) has a wide range of applications in the military, agriculture, firefighting and other fields. Path planning, as a key aspect of autonomous driving technology, plays an essential role for UGV to accomplish the established driving tasks. At present, there are many global path planning algorithms in grid maps on unstructured roads, while general grid maps do not consider the specific elevation or ground type difference of each grid, and unstructured roads are generally considered as flat and open roads. On the contrary, the unmanned off-road is always a bumpy road with undulating terrain, and meanwhile, the landform is complex and the types of features are diverse. In order to ensure the safety and improve the efficiency of autonomous driving of UGV in off-road environment, this paper proposes a global off-road path planning method for UGV based on the raw image of remote sensing map. Firstly, the raw image is gridded.
Technical Paper

Construction of Terrain Multidimensional Traversibility Feature Map for Off-Road Scenarios Based on Binocular Vision

2024-04-09
2024-01-2046
Terrain Traversability Feature (TTF) map, which could be constructed by the images and point cloud data base on binocular vision, often using multi-frame fusion technology to expand the coverage area. However, the common challenges of off-road scenarios such as missing GPS data or single terrain features seriously hindered the alignment of adjacent frame data. Additionally, traditional TTF map depict the vehicle's surroundings only based on a few features such as terrain elevation or category. And it is insufficient for complex off-road scenarios navigation tasks. This paper presents a method for constructing a Terrain Multidimensional Traversability Feature (TMTF) map for off-road scenarios based on binocular vision. First, we utilize the point cloud data from a binocular camera to construct a grid map model. Therefore, the geometric features of the terrain could be calculated with the grid as the basic unit, and a single-frame TMTF map of off-road scenarios is established.
X