Understanding the Challenges When 3D Semantic Segmentation Faces Class Imbalanced and OOD Data
Yancheng Pan, Fan Xie, Huijing Zhao

TL;DR
This paper investigates the impact of class imbalance and out-of-distribution data on 3D semantic segmentation models, proposing new datasets, metrics, and analysis methods to improve understanding and reliability.
Contribution
It introduces AugKITTI dataset, new metrics wPre and TSD, and provides comprehensive analysis of class imbalance and OOD challenges in 3DSS.
Findings
Classes are imbalanced in data size and properties.
Intraclass diversity and interclass ambiguity hinder learning.
Trust scores are unreliable for confused or OOD classes.
Abstract
3D semantic segmentation (3DSS) is an essential process in the creation of a safe autonomous driving system. However, deep learning models for 3D semantic segmentation often suffer from the class imbalance problem and out-of-distribution (OOD) data. In this study, we explore how the class imbalance problem affects 3DSS performance and whether the model can detect the category prediction correctness, or whether data is ID (in-distribution) or OOD. For these purposes, we conduct two experiments using three representative 3DSS models and five trust scoring methods, and conduct both a confusion and feature analysis of each class. Furthermore, a data augmentation method for the 3D LiDAR dataset is proposed to create a new dataset based on SemanticKITTI and SemanticPOSS, called AugKITTI. We propose the wPre metric and TSD for a more in-depth analysis of the results, and follow are proposals…
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Taxonomy
TopicsAdvanced Neural Network Applications · Adversarial Robustness in Machine Learning · Explainable Artificial Intelligence (XAI)
