CVAIMay 1, 2025

P2P-Insole: Human Pose Estimation Using Foot Pressure Distribution and Motion Sensors

arXiv:2505.00755v1h-index: 5MCSoC
Originality Incremental advance
AI Analysis

This provides a low-cost, privacy-aware solution for applications like rehabilitation and health monitoring, though it is incremental as it builds on existing sensor and model techniques.

The paper tackles the problem of estimating 3D human skeletal data by developing P2P-Insole, a low-cost system using insole sensors and IMUs, achieving robust accuracy in posture estimation tasks with error metrics demonstrating its effectiveness.

This work presents P2P-Insole, a low-cost approach for estimating and visualizing 3D human skeletal data using insole-type sensors integrated with IMUs. Each insole, fabricated with e-textile garment techniques, costs under USD 1, making it significantly cheaper than commercial alternatives and ideal for large-scale production. Our approach uses foot pressure distribution, acceleration, and rotation data to overcome limitations, providing a lightweight, minimally intrusive, and privacy-aware solution. The system employs a Transformer model for efficient temporal feature extraction, enriched by first and second derivatives in the input stream. Including multimodal information, such as accelerometers and rotational measurements, improves the accuracy of complex motion pattern recognition. These facts are demonstrated experimentally, while error metrics show the robustness of the approach in various posture estimation tasks. This work could be the foundation for a low-cost, practical application in rehabilitation, injury prevention, and health monitoring while enabling further development through sensor optimization and expanded datasets.

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