Research Analyzer
← Back

A Real-time Filter for Human Pose Estimation based on Denoising Diffusion Models for Edge Devices

Chiara Bozzini, Michele Boldo, Enrico Martini, Nicola Bombieri

PDF
Key figure (auto-extracted from paper)

Abstract

Human Pose Estimation (HPE) is increasingly utilized across various sectors, from healthcare to Industry 5.0. To address the inherent inaccuracies in CNN-based HPE systems, filtering models are commonly employed to refine and improve inference results. However, state-of-the-art filtering models often require substantial computational resources, lim- iting their applicability in resource-constrained environments. To overcome this limitation, we propose a real-time filtering approach based on denoising diffusion models (DM) specifically optimized for edge devices. Through a micro-benchmarking process, we analyze the DM adaptability to different types and levels of noise and determine the optimal setup for specific application scenarios. We present a real-time filter that takes advantage of the DM setup with two configurations to address different application scenarios. Using a widespread edge device, we evaluate the model’s effectiveness in handling both synthetic and real noise generated by state-of-the-art HPE systems. The results demonstrate a significant improvement in real-time filtering performance with minimal computational overhead. The code is available on github.com/PARCO-LAB/LUT-DM- filters.

Index terms

Modeling and Simulating Humans Human and Humanoid Motion Analysis and Synthesis Human Detection and Tracking