spfm
Training Flow Matching Models with Reliable Labels via Self-Purification
Kim, Hyeongju, Yu, Yechan, Yi, June Young, Lee, Juheon
Training datasets are inherently imperfect, often containing mislabeled samples due to human annotation errors, limitations of tagging models, and other sources of noise. Such label contamination can significantly degrade the performance of a trained model. In this work, we introduce Self-Purifying Flow Matching (SPFM), a principled approach to filtering unreliable data within the flow-matching framework. SPFM identifies suspicious data using the model itself during the training process, bypassing the need for pretrained models or additional modules. Our experiments demonstrate that models trained with SPFM generate samples that accurately adhere to the specified conditioning, even when trained on noisy labels. Furthermore, we validate the robustness of SPFM on the TITW dataset, which consists of in-the-wild speech data, achieving performance that surpasses existing baselines.
Technical Report on Subspace Pyramid Fusion Network for Semantic Segmentation
Elhassan, Mohammed A. M., Yang, Chenhui, Huang, Chenxi, Munea, Tewodros Legesse
The following is a technical report to test the validity of the proposed Subspace Pyramid Fusion Module (SPFM) to capture multi-scale feature representations, which is more useful for semantic segmentation. In this investigation, we have proposed the Efficient Shuffle Attention Module(ESAM) to reconstruct the skip-connections paths by fusing multi-level global context features. Experimental results on two well-known semantic segmentation datasets, including Camvid and Cityscapes, show the effectiveness of our proposed method.
- Asia > China > Fujian Province > Xiamen (0.04)
- Asia > China > Zhejiang Province (0.04)