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Introduction:vialab [2023/02/10 11:02]
jaehyun [Self-driving Cars]
Introduction:vialab [2024/02/15 06:51] (current)
hyjeong [Automated Valet Parking (AVP)]
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 ====== Introduction to ViaLab (Sept. 2020 ~ ) ====== ====== Introduction to ViaLab (Sept. 2020 ~ ) ======
  
-The 4th industrial revolution,​(Industry 4.0) is the ongoing automation of traditional manufacturing and industrial practices using modern smart technologies,​ such as Internet of things (IoT), cyber-physical systems (CPS), cloud computing, intelligent robotics, and artificial intelligence (AI). It will fundamentally change the way we live, work, and relate to each other with unprecedented scale, scope, and complexity. Fusing the last decade of our R&D experiences on smart systems with the newly emerging AI technology, our research activity in the <color #​ed1c24>​**Vehicle Intelligence and Autonomy Lab (ViaLab)**</​color>​ focuses on the enabling technologies of <color #​ed1c24>​**unmanned autonomous vehicles**</​color>,​ such as self-driving cars, pipeline robots, and autonomous ground ​vehicles (AGVs).+The 4th industrial revolution,​(Industry 4.0) is the ongoing automation of traditional manufacturing and industrial practices using modern smart technologies,​ such as Internet of things (IoT), cyber-physical systems (CPS), cloud computing, intelligent robotics, and artificial intelligence (AI). It will fundamentally change the way we live, work, and relate to each other with unprecedented scale, scope, and complexity. Fusing the last decade of our R&D experiences on smart systems with the newly emerging AI technology, our research activity in the <color #​ed1c24>​**Vehicle Intelligence and Autonomy Lab (ViaLab)**</​color>​ focuses on the enabling technologies of <color #​ed1c24>​**unmanned autonomous vehicles**</​color>,​ such as self-driving cars, pipeline robots, and automated guided ​vehicles (AGVs).
  
  
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 == 3-D Object Detection == == 3-D Object Detection ==
 We can also utilize deep neural networks to detect road objects based on LiDAR pointclouds. Using 128-CH Ouster LiDAR pointcloud as the input, the video (3 X speed) below shows the 3-D bounding boxes of vehicles, buses, motorcycles,​ and pedestrians. A self-driving vehicle can improve the accuracy and reliability of detecting road objects by the fusion of camera, LiDAR, and radar sensors. We can also utilize deep neural networks to detect road objects based on LiDAR pointclouds. Using 128-CH Ouster LiDAR pointcloud as the input, the video (3 X speed) below shows the 3-D bounding boxes of vehicles, buses, motorcycles,​ and pedestrians. A self-driving vehicle can improve the accuracy and reliability of detecting road objects by the fusion of camera, LiDAR, and radar sensors.
-{{ :​Introduction:​lidar_object_detection.mp4?​960x560 | LiDAR Object Detection}}+{{ :​Introduction:​lidar_object_detection.mp4?​960x560 | LiDAR Object Detection}}
  
 == Vehicle Control by Joystick Maneuvers == == Vehicle Control by Joystick Maneuvers ==
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 ==== Automated Valet Parking (AVP) ==== ==== Automated Valet Parking (AVP) ====
-Automatic ​valet parking (AVP) is one of the scenarios that will be commercialized the fastest among various self-driving scenarios. It is also a promising self-driving technology that can be applied to the automated guided vehicles (AGVs) for the automation of smart factories and logistics warehouses.+Automated ​valet parking (AVP) is one of the scenarios that will be commercialized the fastest among various self-driving scenarios. It is also a promising self-driving technology that can be applied to the automated guided vehicles (AGVs) for the automation of smart factories and logistics warehouses.
  
-== Golfcart ​Platform == +== Golf Cart Platform == 
-We built the AVP golfcart ​platform that consists of a sensor module, comprising of a 64-channel LiDAR, an inertial navigation system (INS), and a braking pedal sensor, an information processing module inside the trunk, and a control module for steering and acceleration controls. +We built the AVP golf cart platform that consists of a sensor module, comprising of a 64-channel LiDAR, an inertial navigation system (INS), and a braking pedal sensor, an information processing module inside the trunk, and a control module for steering and acceleration controls. 
-{{ Gallery:​golfcart.png?​960x560 |Golfcart ​Platform}}+{{ Gallery:​golfcart.png?​960x560 |Golf Cart Platform}}
  
  
 == Control Authority Switching == == Control Authority Switching ==
-In the manual driving mode, the driver requests parking through the AVP app, and then the golfcart ​switches to the self-driving mode. At an emergency situation during the self-driving mode, the control authority switching system allows the driver to press the braking pedal in order to immediately react to the emergency in the manual driving mode.+In the manual driving mode, the driver requests parking through the AVP app, and then the golf cart switches to the self-driving mode. At an emergency situation during the self-driving mode, the control authority switching system allows the driver to press the braking pedal in order to immediately react to the emergency in the manual driving mode.
 {{ :​Introduction:​cas.mp4?​960x560 | Control Authority Switching}} {{ :​Introduction:​cas.mp4?​960x560 | Control Authority Switching}}
  
  
 == SLAM for Electric Vehicle == == SLAM for Electric Vehicle ==
-The core technology of self-driving is high-precision vehicle positioning. To this end, the AVP golfcart ​utilizes the 3-D LiDAR pointclouds and the inertial navigation system (INS) measurements. The AVP golfcart ​constructs a map of driving environments through the scan matching between LiDAR pointclouds and 3-D high-precision map, and simultaneously detects its real-time position through the <color #​241ced>​**simultaneous localization and mapping (SLAM)**</​color>​ technology.+The core technology of self-driving is high-precision vehicle positioning. To this end, the AVP golf cart utilizes the 3-D LiDAR pointclouds and the inertial navigation system (INS) measurements. The AVP golf cart constructs a map of driving environments through the scan matching between LiDAR pointclouds and 3-D high-precision map, and simultaneously detects its real-time position through the <color #​241ced>​**simultaneous localization and mapping (SLAM)**</​color>​ technology.
 {{ :​Introduction:​EVL.mp4?​960x560 | SLAM for Electric Vehicle}} {{ :​Introduction:​EVL.mp4?​960x560 | SLAM for Electric Vehicle}}
  
  
-== AVP Demo at PNU Campus == +=== AVP Demo at PNU Campus ​=== 
-When the driver ​arrives at the entrance of parking lot via manual drivingand requests valet parking ​service using smartphone AVP app, the golfcart creates a shortest path from the current position to the destination ​parking slot. The <color #​241ced>​**model predictive control (MPC)**</​color>​ module determines the speed and steering of the golfcart during the self-driving. The video below demonstrates that our AVP golfcart can be parked successfully through self-driving at the PNU Jangjeon campus. +AVP enables vehicles to automatically perform parking tasks without ​driver ​interventionwhich includes finding a parking ​space within ​designated areanavigating to the spot, and completing ​the parking maneuver within a designated ​parking slot.
-{{ :​Introduction:​avp_mini.mp4?​960x560 | AVP Demo}}+
  
 +When the driver arrives at the entrance of parking lot via manual driving, and requests valet parking service using a smartphone AVP app, the golf cart creates a shortest path from the current position to the destination parking slot. The model predictive control (MPC) module determines the speed and steering of the golf cart during the self-driving. The video below demonstrates that our AVP golf cart can park successfully through self-driving at the PNU Jangjeon campus in an <color #​241ced>​**exclusive traffic**</​color>​ scenario.
 +{{ :​Introduction:​avp_et.mp4?​960x560 | AVP Demo}}
  
-==== Autonomous Ground Vehicle Control System (ACS) ==== +== AVP Demo with Mixed Traffic ​== 
 +In a <color #​241ced>​**mixed traffic**</​color>​ scenario, our AVP golf cart accurately perceives both stationary and dynamic objects in its surrounding environment,​ enabling it to generate safe paths and avoid collisions in real-time. This advanced capability allows the AVP golf cart to confidently navigate and park itself in unstructured parking areas with arbitrary traffic, eliminating the need for driver intervention. 
 +{{ :​Introduction:​avp_mt.mp4?​960x560 | AVP with Mixed Traffic}} 
 + 
  
-To coordinate the access of multiple AGVs to the shared resources, such as intersection,​ we are currently developing an <color #​ed1c24>​**open-source,​ platform-independent,​ and vendor-independent AGV control system (ACS)**</​color>​ which will be actually deployed in a factory of [[https://​www.swhitech.com |Sungwoo HiTech]] ​in March 2023. +==== Automated Guided Vehicles Control System (ACS) ====  
 + 
 +To coordinate the access of multiple AGVs to the shared resources, such as intersection,​ we are currently developing an <color #​ed1c24>​**open-source,​ platform-independent,​ and vendor-independent AGV control system (ACS)**</​color>​ which has been actually deployed in a factory of [[https://​www.swhitech.com |Sungwoo HiTech]] ​from December ​2023. 
    
-The hardware ​abstraction layer (HAL) of our ACS mitigates the protocol inconsistency over multi-vendor AGVs, and provide the unified protocol interface to the core modules of our ACS system. The video (2 X speed) below shows that our ACS can successfully coordinate the simultaneous access of [[https://​www.meidensha.com/​products/​logistics/​prod_01/​index.html | Meidensha]] and [[https://​www.aiki-tcs.co.jp/​carrybee?​lang=en | Aichi CarryBee]] AGVs at the intersection: ​+The <color #​ed1c24>​**AGV ​abstraction layer (AAL)**</​color> ​of our ACS mitigates the protocol inconsistency over multi-vendor AGVs, and provide the unified protocol interface to the core modules of our ACS system. The video (2 X speed) below shows that our ACS can successfully coordinate the simultaneous access of [[https://​www.meidensha.com/​products/​logistics/​prod_01/​index.html | Meidensha]] and [[https://​www.aiki-tcs.co.jp/​carrybee?​lang=en | Aichi CarryBee]] AGVs at the intersection: ​
 {{ :​Introduction:​agv_final.mp4?​960x540 | ACS Traffic Coodination}} {{ :​Introduction:​agv_final.mp4?​960x540 | ACS Traffic Coodination}}
  
 +
 +== ACS Deployment at Sungwoo HiTech ==
 +Our ACS has been successfully deployed at a new production line of Sungwoo HiTech'​s Seo-Chang factory in December 2023. The ACS efficiently manages the flow of AGVs at intersections,​ optimizing scheduling and dispatching through integration with Sungwoo HiTech'​s Manufacturing Execution System (MES).
 +{{ :​Introduction:​acs_seochang_factory.mp4?​960x540 |ACS @ Seo-Chang}}
  
 === Non-Destructive In-Line Inspection for Smart Infrastructure === === Non-Destructive In-Line Inspection for Smart Infrastructure ===
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