Exploring Automatic Gym Workouts Recognition Locally On Wearable Resource-Constrained Devices
Sizhen Bian, Xiaying Wang, Tommaso Polonelli, Michele Magno

TL;DR
This paper introduces a tiny, accurate residual CNN for real-time gym workout recognition on microcontrollers, demonstrating high accuracy, low latency, and energy efficiency, suitable for resource-constrained wearable devices.
Contribution
It presents a novel residual CNN model optimized for microcontrollers, achieving high accuracy and real-time performance for gym activity recognition on resource-limited devices.
Findings
Achieved up to 90.4% accuracy on eleven workouts
Inference time of 3.2 ms on GAP8 system
Energy consumption of 0.41 mJ per inference on GAP8
Abstract
Automatic gym activity recognition on energy- and resource-constrained wearable devices removes the human-interaction requirement during intense gym sessions - like soft-touch tapping and swiping. This work presents a tiny and highly accurate residual convolutional neural network that runs in milliwatt microcontrollers for automatic workouts classification. We evaluated the inference performance of the deep model with quantization on three resource-constrained devices: two microcontrollers with ARM-Cortex M4 and M7 core from ST Microelectronics, and a GAP8 system on chip, which is an open-sourced, multi-core RISC-V computing platform from GreenWaves Technologies. Experimental results show an accuracy of up to 90.4% for eleven workouts recognition with full precision inference. The paper also presents the trade-off performance of the resource-constrained system. While keeping the…
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