missegmentations
Missegmentations are errors in dividing a continuous signal, image, or dataset into discrete segments, where the derived boundaries fail to reflect the true structure. They occur when segment borders do not align with actual units or events, causing parts of data to be split incorrectly or merged inappropriately.
Missegmentations appear across disciplines. In natural language processing and speech processing, they manifest as boundaries that
Common types include oversegmentation, where a single unit is divided into multiple segments, and undersegmentation, where
Mitigation and evaluation involve improving segmentation models and incorporating domain knowledge. Strategies include using multi-scale or