Byeongjin Kim’s research while affiliated with Korea Institute of Machinery and Materials and other places

What is this page?


This page lists works of an author who doesn't have a ResearchGate profile or hasn't added the works to their profile yet. It is automatically generated from public (personal) data to further our legitimate goal of comprehensive and accurate scientific recordkeeping. If you are this author and want this page removed, please let us know.

Publications (3)


Example of a strongly connected graph in a small area with an obstacle.
A simple ACO example. After several iterations, the shortest path is exploited through a pheromone reward/evaporation scheme.
The proposed scanning radius scheme for the ants using a hypothetical sensor radius (highlighted in yellow). As shown in the figure, only three nodes have been selected to achieve 55% area coverage because of adjacent nodes that are covered by the sensor’s scanning radius.
The GA algorithm process visualized in a flowchart.
The chromosome structure for the proposed research.

+13

Surveillance Unmanned Ground Vehicle Path Planning with Path Smoothing and Vehicle Breakdown Recovery
  • Article
  • Full-text available

August 2024

·

36 Reads

·

1 Citation

Tyler Parsons

·

Farhad Baghyari

·

·

[...]

·

Hanmin Lee

As unmanned ground vehicles (UGV) continue to be adapted to new applications, an emerging area lacks proper guidance for global route optimization methodology. This area is surveillance. In autonomous surveillance applications, a UGV is equipped with a sensor that receives data within a specific range from the vehicle while it traverses the environment. In this paper, the ant colony optimization (ACO) algorithm was adapted to the UGV surveillance problem to solve for optimal paths within sub-areas. To do so, the problem was modeled as the covering salesman problem (CSP). This is one of the first applications using ACO to solve the CSP. Then, a genetic algorithm (GA) was used to schedule a fleet of UGVs to scan several sub-areas such that the total distance is minimized. Initially, these paths are infeasible because of the sharp turning angles. Thus, they are improved using two methods of path refinement (namely, the corner-cutting and Reeds–Shepp methods) such that the kinematic constraints of the vehicles are met. Several test case scenarios were developed for Goheung, South Korea, to validate the proposed methodology. The promising results presented in this article highlight the effectiveness of the proposed methodology for UGV surveillance applications.

Download

Development of Local Path Planning Using Selective Model Predictive Control, Potential Fields, and Particle Swarm Optimization

March 2024

·

29 Reads

·

2 Citations

This paper focuses on the real-time obstacle avoidance and safe navigation of autonomous ground vehicles (AGVs). It introduces the Selective MPC-PF-PSO algorithm, which includes model predictive control (MPC), Artificial Potential Fields (APFs), and particle swarm optimization (PSO). This approach involves defining multiple sets of coefficients for adaptability to the surrounding environment. The simulation results demonstrate that the algorithm is appropriate for generating obstacle avoidance paths. The algorithm was implemented on the ROS platform using NVIDIA’s Jetson Xavier, and driving experiments were conducted with a steer-type AGV. Through measurements of computation time and real obstacle avoidance experiments, it was shown to be practical in the real world.


Dust De-Filtering in LiDAR Applications with Conventional and CNN Filtering Methods

January 2024

·

204 Reads

·

4 Citations

IEEE Access

Light detection and ranging (LiDAR) sensors can create high-quality scans of an environment. However, LiDAR point clouds are affected by harsh weather conditions since airborne particles are easily detected. In literature, conventional filtering and artificial intelligence (AI) filtering methods have been used to detect, and remove, airborne particles. In this paper, a convolutional neural network (CNN) model was used to classify airborne dust particles through a voxel-based approach. The CNN model was compared to several conventional filtering methods, where the results show that the CNN filter can achieve up to 5.39 % F1 score improvement when compared to the best conventional filter. All the filtering methods were tested in dynamic environments where the sensor was attached to a mobile platform, the environment had several moving obstacles, and there were multiple dust cloud sources.

Citations (1)


... The first focuses on point cloud segmentation and object detection and recognition using LiDAR. The second area aims to establish the robustness of LiDAR point clouds against weather and external environmental factors [4,5]. ...

Reference:

Real-Time Noise-Resilient Off-Road Drivable Region Detection in LiDAR Point Clouds Using Position-Invariant Inequality Condition
Dust De-Filtering in LiDAR Applications with Conventional and CNN Filtering Methods

IEEE Access