SPHCLGMED-PHSep 25, 2023

Skilog: A Smart Sensor System for Performance Analysis and Biofeedback in Ski Jumping

arXiv:2309.14455v13 citationsh-index: 45
Originality Synthesis-oriented
AI Analysis

This addresses the need for accelerated motor learning in ski jumping athletes, though it is incremental as it applies existing ML methods to a specific domain.

The paper tackles the problem of limited training effectiveness in ski jumping due to low jump repetition by developing a smart sensor system for real-time performance analysis and biofeedback, achieving 92.7% predictive accuracy for center of mass predictions and enabling real-time feedback with 0.0109ms per inference.

In ski jumping, low repetition rates of jumps limit the effectiveness of training. Thus, increasing learning rate within every single jump is key to success. A critical element of athlete training is motor learning, which has been shown to be accelerated by feedback methods. In particular, a fine-grained control of the center of gravity in the in-run is essential. This is because the actual takeoff occurs within a blink of an eye ($\sim$300ms), thus any unbalanced body posture during the in-run will affect flight. This paper presents a smart, compact, and energy-efficient wireless sensor system for real-time performance analysis and biofeedback during ski jumping. The system operates by gauging foot pressures at three distinct points on the insoles of the ski boot at 100Hz. Foot pressure data can either be directly sent to coaches to improve their feedback, or fed into a ML model to give athletes instantaneous in-action feedback using a vibration motor in the ski boot. In the biofeedback scenario, foot pressures act as input variables for an optimized XGBoost model. We achieve a high predictive accuracy of 92.7% for center of mass predictions (dorsal shift, neutral stand, ventral shift). Subsequently, we parallelized and fine-tuned our XGBoost model for a RISC-V based low power parallel processor (GAP9), based on the PULP architecture. We demonstrate real-time detection and feedback (0.0109ms/inference) using our on-chip deployment. The proposed smart system is unobtrusive with a slim form factor (13mm baseboard, 3.2mm antenna) and a lightweight build (26g). Power consumption analysis reveals that the system's energy-efficient design enables sustained operation over multiple days (up to 300 hours) without requiring recharge.

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