TCNet modulates handcrafted feature anchors with neural context from raw signals to achieve higher mF1 scores on five HAR benchmarks than prior methods like rTsfNet.
Past, present, and future of sensor-based human activity recognition using wearables: A surveying tutorial on a still challenging task.Proc
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Feature Anchors for Time-Series Sensor-Based Human Activity Recognition
TCNet modulates handcrafted feature anchors with neural context from raw signals to achieve higher mF1 scores on five HAR benchmarks than prior methods like rTsfNet.
- AnyMo: Geometry-Aware Setup-Agnostic Modeling of Human Motion in the Wild