Fine-grained Metrics for Point Cloud Semantic Segmentation
July 31, 2024 Β· Declared Dead Β· π Chinese Conference on Pattern Recognition and Computer Vision
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Authors
Zhuheng Lu, Ting Wu, Yuewei Dai, Weiqing Li, Zhiyong Su
arXiv ID
2407.21289
Category
cs.CV: Computer Vision
Cross-listed
cs.GR
Citations
1
Venue
Chinese Conference on Pattern Recognition and Computer Vision
Last Checked
4 months ago
Abstract
Two forms of imbalances are commonly observed in point cloud semantic segmentation datasets: (1) category imbalances, where certain objects are more prevalent than others; and (2) size imbalances, where certain objects occupy more points than others. Because of this, the majority of categories and large objects are favored in the existing evaluation metrics. This paper suggests fine-grained mIoU and mAcc for a more thorough assessment of point cloud segmentation algorithms in order to address these issues. Richer statistical information is provided for models and datasets by these fine-grained metrics, which also lessen the bias of current semantic segmentation metrics towards large objects. The proposed metrics are used to train and assess various semantic segmentation algorithms on three distinct indoor and outdoor semantic segmentation datasets.
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