FreeMask: Synthetic Images with Dense Annotations Make Stronger Segmentation Models
–Neural Information Processing Systems
Semantic segmentation has witnessed tremendous progress due to the proposal of various advanced network architectures. However, they are extremely hungry for delicate annotations to train, and the acquisition is laborious and unaffordable. Therefore, we present FreeMask in this work, which resorts to synthetic images from generative models to ease the burden of both data collection and annotation procedures. Concretely, we first synthesize abundant training images conditioned on the semantic masks provided by realistic datasets.
Neural Information Processing Systems
Feb-6-2025, 09:27:48 GMT