TL;DR
This paper introduces TCNet, a model that uses handcrafted time-series features as explicit, adaptable anchors within deep learning for human activity recognition, improving interpretability and performance across benchmarks.
Contribution
The paper proposes a novel neural architecture that treats handcrafted features as explicit anchors, enhancing interpretability and adaptability in HAR models.
Findings
TCNet achieves state-of-the-art results on five HAR benchmarks.
Explicit feature anchors improve model interpretability and performance.
Ablation studies confirm the importance of anchor guidance over simple fusion.
Abstract
Wearable Human Activity Recognition (HAR) still lacks a representation that is both explicit and adaptable. Handcrafted time-series features (TSFs) capture meaningful motion statistics and remain competitive on standard benchmarks, but they are usually used as fixed preprocessing outputs. Deep models learn adaptable representations directly from raw signals, but those representations are typically latent and difficult to inspect. We address this gap by treating handcrafted TSFs as feature anchors: explicit intermediate representations that remain inside the model and are adjusted by neural context instead of being discarded. We propose the Temporal Conditioning Network for Feature Anchors (TCNet), which extracts handcrafted anchors, encodes complementary time-domain and frequency-domain context from raw IMU windows, and predicts context-conditioned scale, bias, and gating parameters to…
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