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KIMM develops environment recognition technologies for off-road self-driving with improved real-time processing performance
  • Created2024.04.17

KIMM develops environment recognition technologies for off-road self-driving with improved real-time processing performance

KIMM succeeds in developing off-road environment recognition technologies, improving processing speed by 1.5 times compared to conventional technologies -

New technologies are expected to be applied to construction machinery, agricultural machines, and military unmanned ground vehicles -


□ Off-road environment recognition technologies for detecting extraneous substances such as dust, mud, snow, or rain during off-road autonomous driving of construction machinery, agricultural machines, and unmanned ground vehicles (UGVs), and removing the sensor signals of these substances on a real-time basis, have been developed for the first time in the country. It is expected that these newly developed technologies will be applied in the future to industrial machinery such as excavators, dump trucks, and search vehicles and also to military self-driving cars, and will provide workers with a safe working environment. 


□  The research team led by Principal Researcher Han-Min Lee of the Department of Industrial Machinery DX under the Virtual Engineering Platform Research Division of the Korea Institute of Machinery and Materials (President Seog-Hyeon Ryu, hereinafter referred to as KIMM), an institute under the jurisdiction of the Ministry of Science and ICT, has developed off-road environment recognition technologies for driving in off-road environments such as mountainous, waterside or snowy regions, including sensor protection and cleaning technology, sensor signal correction technology, and drivable area recognition technology, and has transferred these technologies to relevant corporations. 



□ Among the off-road environment recognition technologies that have been newly developed by KIMM, the “sensor protection and cleaning module” technologies can be used for spraying detergents on muddy water or mud that may splash onto the sensor during off-road self-driving and wiping them away in real time by using a wiper, thereby almost completely removing the contaminants. In addition, the “sensor signal correction” technology for removing small-sized extraneous substances such as dust, snow, and rain that can be generated during driving can help to maintain off-road self-driving conditions more stably even under unstructured environmental conditions like bad weather. 


□ Additionally, the “drivable area estimation technology” developed by KIMM can be used to detect general obstacles as well as steep slopes, potholes, and bumpy roads and automatically identify alternative routes to avoid those obstacles, which can help to prevent the machinery or vehicle from colliding with other objects. Moreover, KIMM has also developed the “driving control technology” for controlling the driving of a vehicle on a real-time basis by selecting, among the various technologies described above, only the functions that are needed.




□ Previously, there has been no sensor protection technology suitable for off-road environments where dirt and mud adhere to vehicles, nor a technology capable of removing the sensor signals of extraneous substances like dust, snow or rain on a real time basis when these substances are included in LiDAR* or camera sensor signals. Moreover, there also has been a lack of real-time drivable area estimation technologies capable of recognizing not only bumpy obstacles such as trees and rocks but also hollow obstacles like cliffs and pits. 

* LiDAR is a sensor used to measure distance and the shape of objects by using laser. Distance can be calculated by discharging laser and measuring the time it takes for the laser to reflect, and the intensity of the reflected signal can also be obtained. 



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□ On the other hand, the newly developed off-road environment recognition technologies have improved processing speed by more than 1.5 times while maintaining key performance indicators such as sensor contamination recovery rate, sensor noise removal accuracy, and off-road drivable driving area estimation accuracy at a level equal to or higher than that of existing technologies, paving the way for these technologies to be practically used for controlling off-road self-driving. 


□ Principal Researcher Han-Min Lee of KIMM was quoted as saying, “These are technologies for resolving the issue of environment recognition which can be a dangerous obstacle during off-road autonomous driving.” Lee added, “We will make all-out efforts so that the technologies that we have newly developed can be applied not only to the self-driving of industrial machinery such as excavators, dump trucks, and tractors, but also to the autonomous driving of unmanned military vehicles like tanks and search vehicles.” 

□ Meanwhile, this research was conducted with the support of the project for the “development of basic technologies for the automation of industrial-purpose mobile work machines,” one of the basic projects of KIMM.