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arxiv: 2312.02608 · v1 · pith:IN2T3CCHnew · submitted 2023-12-05 · 💻 cs.CV · cs.AI· cs.LG· eess.IV

Panoptica -- instance-wise evaluation of 3D semantic and instance segmentation maps

classification 💻 cs.CV cs.AIcs.LGeess.IV
keywords panopticametricssegmentationevaluationinstance-wisedistancemapspackage
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This paper introduces panoptica, a versatile and performance-optimized package designed for computing instance-wise segmentation quality metrics from 2D and 3D segmentation maps. panoptica addresses the limitations of existing metrics and provides a modular framework that complements the original intersection over union-based panoptic quality with other metrics, such as the distance metric Average Symmetric Surface Distance. The package is open-source, implemented in Python, and accompanied by comprehensive documentation and tutorials. panoptica employs a three-step metrics computation process to cover diverse use cases. The efficacy of panoptica is demonstrated on various real-world biomedical datasets, where an instance-wise evaluation is instrumental for an accurate representation of the underlying clinical task. Overall, we envision panoptica as a valuable tool facilitating in-depth evaluation of segmentation methods.

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Cited by 2 Pith papers

Reviewed papers in the Pith corpus that reference this work. Sorted by Pith novelty score.

  1. Redefining Instance Matching: A Unified Framework for Part-Aware Matching in Panoptic Segmentation Evaluation

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    The paper defines four matching strategies for panoptic quality via degree-bounded bipartite assignment and introduces vertex-based TP/FN/FP counting that extends to part-aware evaluation.

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