Weakly Supervised Semantic Segmentation in the 2020 IEEE GRSS Data Fusion Contest
- Caleb Robinson ,
- Kolya Malkin ,
- Lucas Hu ,
- Bistra Dilkina ,
- Nebojsa Jojic
IEEE International Geoscience and Remote Sensing Symposium (IGARSS) |
Published by IEEE
1st place in 2020 IEEE GRSS Data Fusion Contest
Download BibTexWe propose an iterative clustering-based label super-resolution approach and epitome-based approach to weakly supervised semantic segmentation, as well as a deep learning-based postprocessing step for land cover segmentation. An ensemble of the iterative clustering and epitome approaches with the proposed postprocessing step results in a top validation leaderboard average accuracy of 70.43%. A similar ensemble, that also considers class accuracy feedback from the leaderboard, achieves a top Track 1 leaderboard average accuracy of 57.49%.