MixANT: Observation-dependent Memory Propagation for Stochastic Dense Action Anticipation

We present MixANT, a novel architecture for stochastic long-term dense anticipation of human activities. While recent State Space Models (SSMs) like Mamba have shown promise through input-dependent selectivity on three key parameters, the critical forget-gate (A matrix) controlling temporal memory remains static. We address this limitation by introducing a mixture of experts approach that dynamically selects contextually relevant A matrices based on input features, enhancing representational capacity without sacrificing computational efficiency. Extensive experiments on the 50Salads, Breakfast, and Assembly101 datasets demonstrate that MixANT consistently outperforms state-of-the-art methods across all evaluation settings. Our results highlight the importance of input-dependent forget-gate mechanisms for reliable prediction of human behavior in diverse real-world scenarios. The project page is available at https://talalwasim.github.io/MixANT/.

Informationen zur Zitierung

Wasim, Syed Talal; Suleman, Hamid; Zatsarynna, Olga; Naseer, Muzammal; Gall, Juergen: MixANT: Observation-dependent Memory Propagation for Stochastic Dense Action Anticipation, Proceedings of the IEEE/CVF International Conference on Computer Vision (ICCV), 2025, 14613--14622, October, https://openaccess.thecvf.com/content/ICCV2025/html/Wasim_MixANT_Observation-dependent_Memory_Propagation_for_Stochastic_Dense_Action_Anticipation_ICCV_2025_paper.html, Wasim.etal.2025a,