FVOS for MOSE Track of 4th PVUW Challenge: 3rd Place Solution

Video Object Segmentation (VOS) is one of the most fundamental and challenging tasks in computer vision and has a wide range of applications. Most existing methods rely on spatiotemporal memory networks to extract frame-level features and have achieved promising results on commonly used datasets. However, these methods often struggle in more complex real-world scenarios. This paper addresses this issue, aiming to achieve accurate segmentation of video objects in challenging scenes. We propose fine-tuning VOS (FVOS), optimizing existing methods for specific datasets through tailored training. Additionally, we introduce a morphological post-processing strategy to address the issue of excessively large gaps between adjacent objects in single-model predictions. Finally, we apply a voting-based fusion method on multi-scale segmentation results to generate the final output. Our approach achieves J&F scores of 76.81% and 83.92% during the validation and testing stages, respectively, securing third place overall in the MOSE Track of the 4th PVUW challenge 2025.
View on arXiv@article{wang2025_2504.09507, title={ FVOS for MOSE Track of 4th PVUW Challenge: 3rd Place Solution }, author={ Mengjiao Wang and Junpei Zhang and Xu Liu and Yuting Yang and Mengru Ma }, journal={arXiv preprint arXiv:2504.09507}, year={ 2025 } }