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Temporal Structure Matters for Efficient Test-Time Adaptation in Wearable Human Activity Recognition

About

Wearable human activity recognition (WHAR) models often suffer from performance degradation under real-world cross-user distribution shifts. Test-time adaptation (TTA) mitigates this degradation by adapting models online using unlabeled test streams, yet existing methods largely inherit assumptions from vision tasks and underexploit the inherent inter-window temporal structure in WHAR streams. In this paper, we revisit such temporal structure as a feature-conditioned inference signal rather than merely an output-space smoothing prior. We derive the insight that temporal continuity and observation-induced feature deviations provide complementary cues for determining when to preserve or release temporal inertia and where to route prediction refinement during likely transitions. Building upon this insight, we propose SIGHT, a lightweight and backpropagation-free TTA framework for WHAR, enabling real-time edge deployment. SIGHT estimates predictive surprise by comparing the current feature with a prototype-based expected state, and then uses the resulting feature deviation to guide geometry-aware transition routing based on prototype alignment and stream-level marginal habit tracking. Evaluations on real-world datasets confirm that SIGHT outperforms existing TTA baselines while reducing computational and memory costs.

Zishu Zhou, Zaipeng Xie, Xuanyao Jie• 2026

Related benchmarks

TaskDatasetResultRank
Human Activity RecognitionUSC-HAD source-target pairs
Transfer Accuracy (S01 -> S03)62.81
12
Wearable Human Activity RecognitionUCI-HAR S05 → S18 cross-subject test-time adaptation
MF1-score59.89
12
Wearable Human Activity RecognitionUCI-HAR S05 → S29 (cross-subject test-time adaptation)
MF1 Score73.04
12
Wearable Human Activity RecognitionUCI-HAR S07 → S19 cross-subject test-time adaptation
MF1 Score53.22
12
Wearable Human Activity RecognitionUCI-HAR S07 → S27 cross-subject test-time adaptation
MF1 Score80.05
12
Wearable Human Activity RecognitionUCI-HAR S08 → S23 cross-subject test-time adaptation
MF1 Score77.89
12
Wearable Human Activity RecognitionUCI-HAR S09 → S19 cross-subject test-time adaptation
MF1 Score46.2
12
Wearable Human Activity RecognitionUCI-HAR S09 → S30 cross-subject test-time adaptation
MF1 Score40.03
12
Wearable Human Activity RecognitionUCI-HAR S08 → S21 cross-subject test-time adaptation
MF1 Score76.84
12
Human Activity RecognitionHARTH cross-subject transfer
Performance S006 -> S03258.27
10
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