Archive/DST-Mamba: Spatial–Temporal Adapter with Boundary-Aware Mamba for Video Temporal Action Detection
DST-Mamba: Spatial–Temporal Adapter with Boundary-Aware Mamba for Video Temporal Action Detection
Yicheng Qiu, Keiji Yanai
9. Juli 2026
en

Abstract

Temporal Action Detection (TAD) localizes and classifies action instances within long videos and underlies many downstream video understanding applications. Transformer-based detectors scale poorly to long sequences due to quadratic self-attention, while existing SSM-based variants tend to dilute fine-grained boundary cues during global modeling. To address these limitations, we propose DST-Mamba, a Decoupled Spatial–Temporal Mamba Adapter inserted into a frozen video backbone for parameter-efficient end-to-end TAD. DST-Mamba decouples spatial and temporal modeling into two cooperating branches and explicitly fuses them through cross-branch interaction. Within the temporal branch, we introduce a Temporal Boundary-aware SSM (TB-SSM) with direction-specific forward/backward state-transition matrices, providing a stronger inductive bias for asymmetric action boundaries. Across multiple benchmarks, DST-Mamba consistently outperforms competitive Transformer- and SSM-based baselines while being more computationally efficient.

IPC Classification

G06

Keywords

dst-mambaspatialtemporaladapterboundary-awaremambavideoactiondetectiondatacognitivecomputinglocalizesclassifiesinstanceswithinlongvideosunderliesmanydownstreamunderstandingapplicationstransformer-based
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