Diff-VPS:通过多任务扩散网络与对抗性时态推理进行视频息肉分割

Yingling Lu, Yijun Yang, Zhaohu Xing, Qiong Wang, Lei Zhu
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引用次数: 0

摘要

然而,尽管大量基于扩散的研究都集中在生成任务上,却没有任何研究引入扩散模型来推进视频中息肉分割的结果,而息肉的高遮蔽性和冗余时间线索经常给视频息肉分割带来挑战。我们在扩散模型中加入了多任务监督,以促进扩散模型在逐像素分割上的辨别能力。这整合了联合分类和检测任务所实现的上下文高级信息。为了探索时间依赖性,我们设计了时间推理模块(Temporal Reasoning Module,TRM),通过推理和重建前一帧的目标帧。我们进一步为 TRM 配备了生成式对抗自监督策略,以生成更逼真的帧,从而捕捉到更好的动态线索。我们在 SUN-SEG 上进行了广泛的实验,结果表明我们提出的 Diff-VPS 显著达到了最先进的性能。代码见:https://github.com/lydia-yllu/Diff-VPS。
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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.
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