Towards Unifying Saliency Transformer for Video Saliency Prediction and Detection

Junwen Xiong, Chuanyue Li, Tianyu Liu, Peng Zhang, Yue Huo, Wei Huang, Yufei Zha

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1 引用 (Scopus)

摘要

Video saliency prediction and detection are thriving research domains that enable computers to simulate the distribution of visual attention akin to how humans perceive dynamic scenes. While many approaches have crafted task-specific training paradigms for either video saliency prediction or video salient object detection tasks, few attention has been devoted to devising a generalized saliency modeling framework that seamlessly bridges both these distinct tasks. In this study, we introduce the Unified Saliency Transformer (UniST) framework, which comprehensively utilizes the essential attributes of video saliency prediction and video salient object detection. In addition to extracting representations of frame sequences, a saliencyaware transformer is designed to learn the spatio-temporal representations at progressively increased resolutions, while incorporating effective cross-scale saliency information to produce a robust representation. Furthermore, task-specific decoders are proposed to perform the final prediction for each task. To the best of our knowledge, this is the first work to explore the design of a unified framework for both saliency modeling tasks. Convincible experiments demonstrate that the proposed UniST achieves superior performance across eight challenging benchmarks for two tasks, outperforming other state-of-the-art methods in most metrics. The project page is https://junwenxiong.github.io/UniST.

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