Unsupervised Part Discovery
Machine learning methods designed for unsupervised part discovery aim to identify a small number of semantically consistent parts, typically around (K=8), shared among classes in a dataset. These methods visualize all discovered parts in an image through per-part saliency maps, facilitating easier interpretation. However, as this task is unsupervised, it often relies on assumptions about the discovered parts, such as their distribution and shape.
Papers
Showing 1–7 of 7 papers
No leaderboard results yet.