Solution > Application of Lidar in Robot Obstacle Avoidance
激光雷达在机器人避障中应用
Application of Lidar in Robot Obstacle Avoidance
High precision obstacle recognition, millisecond level response, and upgraded security protection
Medium distance light pulse series
Scheme consultation
Industry/Project Background Introduction
Robot technology has been widely applied in daily life scenarios, significantly improving service efficiency and convenience in daily life. However, insufficient environmental perception ability may lead to collisions between robots and obstacles or pedestrians during movement, not only affecting the user experience but also potentially causing safety accidents. To ensure the safe and reliable operation of robots, advanced intelligent obstacle avoidance systems must be equipped. The system needs to have real-time environment scanning, high-precision obstacle recognition, and fast response capabilities. It can accurately perceive changes in the surrounding environment through multi-sensor fusion technology and make obstacle avoidance decisions in milliseconds. This intelligent safety protection mechanism can effectively prevent collision risks, ensure human-machine interaction safety, and provide reliable technical support for robot applications.
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Application scenarios
  • Equipped with a multi-sensor fusion system, achieving 360 ° no dead angle environment scanning and real-time monitoring
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Technical Proposal
  • Adopting advanced algorithms, it can accurately identify static obstacles and dynamic pedestrians, with a recognition accuracy rate of ≥ 99%
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Customer Value
  • Response delay from detecting obstacles to triggering obstacle avoidance actions is less than 50 milliseconds
  • Intelligent adjustment of avoidance path and speed based on obstacle type and distance
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Technical highlights
  • Not affected by lighting conditions, it can work stably both day and night
  • Reduce collision risk by over 90% and significantly improve human-machine coexistence safety
Case diagram

Case 1