Yingling Lu, Yijun Yang, Zhaohu Xing, Qiong Wang, Lei Zhu
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Diff-VPS: Video Polyp Segmentation via a Multi-task Diffusion Network with Adversarial Temporal Reasoning
Diffusion Probabilistic Models have recently attracted significant attention
in the community of computer vision due to their outstanding performance.
However, while a substantial amount of diffusion-based research has focused on
generative tasks, no work introduces diffusion models to advance the results of
polyp segmentation in videos, which is frequently challenged by polyps' high
camouflage and redundant temporal cues.In this paper, we present a novel
diffusion-based network for video polyp segmentation task, dubbed as Diff-VPS.
We incorporate multi-task supervision into diffusion models to promote the
discrimination of diffusion models on pixel-by-pixel segmentation. This
integrates the contextual high-level information achieved by the joint
classification and detection tasks. To explore the temporal dependency,
Temporal Reasoning Module (TRM) is devised via reasoning and reconstructing the
target frame from the previous frames. We further equip TRM with a generative
adversarial self-supervised strategy to produce more realistic frames and thus
capture better dynamic cues. Extensive experiments are conducted on SUN-SEG,
and the results indicate that our proposed Diff-VPS significantly achieves
state-of-the-art performance. Code is available at
https://github.com/lydia-yllu/Diff-VPS.