
Research
Perception · Localization · Planning · Dataset · SensorFusion
Woodscape panoptic segmentation

- Development of deep learning-based panoptic segmentation data from fish-eye camera
- Development and validation of the model using fish-eye camera dataset (WoodScape)
- Panoptic segmentation Focus on identifying classes for all pixels and distinguishing individual instances when they are foreground objects.
- Real time inference implementation using RTMaps
Perception, Dataset
Big data

- Definition of data standards
- Define standards for AD dataset and metadata through analysis of large-scale domestic and international autonomous driving datasets
- Construction of semantic data extraction system
- Development of deep learning based semantic data automatic extraction system for AD dataset
Dataset, Perception
Lane-level Route Validation

- Lane-level route change detection based on lane map matching
- ML-based Lane-level Route Validation
- Precise map-based lane-level route validation using Machine Learning
- Route validation based on ML using surrounding perception information*
*Surrounding vehicle, road boundaries, lane detection, ego vehicle motion, etc.
Planning, Localization
Point Cloud Panoptic Segmentation

- Development of deep learning-based camera-LiDAR fusion model for point cloud panoptic segmentation (PCPS).
- Improvement of the performance of PCPS by continuously fusing intermediate features of camera and LiDAR
- Development and validation of the model using synthetic dataset (CARLA)
- Qualitative evaluation on the AEye 4Sight-M LiDAR point cloud
Perception, SensorFusion
Adverse weather data augmentation of LiDAR for AI model

- Creating a data augmentation module for adverse weather conditions.
- Analyzing drawbacks of current adverse weather augmentation methods
- Data Augmentation through statistical analysis of actual precipitation and wet ground noise
- Validation of augmentation module through actual adverse weather data
- Development of network for noise point and object classification
- Development of deep learning-based semantic segmentation network which robust to adverse weather
- Developing a multi-head precipitation classifier using point features
Dataset, Perception
WoodScape Perception



