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Adverse weather data augmentation of LiDAR for AI model

Data augmentation, Semantic segmentation, Adverse weather data

Dataset, Perception

2022

- 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

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Location

Room #505-506, Chung Mong-Koo Automotive Research Center,

222, Wangsimni-ro, Seongdong-gu, Seoul 04763, Republic of Korea

Contact

 02-2220-0449 

E   kichunjo@hanyang.ac.kr

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