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Published:2025/8/22 16:20:32

CiCiフレームワーク、爆誕!非接触RPMを爆速進化🚀✨

超要約: カメラで心拍とか測る技術、もっと賢くするCiCiフレームワークってスゴくない?💖

✨ ギャル的キラキラポイント ✨

● ウェアラブルなしで健康チェック😳✨ スマホで心拍数が測れちゃう時代が来るかも!

● 時間のズレに着目💡 BVP信号(脈波)の弱点克服で、さらに精度UPを目指すんだって!

続きは「らくらく論文」アプリで

Not Only Consistency: Enhance Test-Time Adaptation with Spatio-temporal Inconsistency for Remote Physiological Measurement

Xiao Yang / Jiyao Wang / Yuxuan Fan / Can Liu / Houcheng Su / Weichen Guo / Zitong Yu / Dengbo He / Kaishun Wu

Remote physiological measurement (RPM) has emerged as a promising non-invasive method for monitoring physiological signals using the non-contact device. Although various domain adaptation and generalization methods were proposed to promote the adaptability of deep-based RPM models in unseen deployment environments, considerations in aspects such as privacy concerns and real-time adaptation restrict their application in real-world deployment. Thus, we aim to propose a novel fully Test-Time Adaptation (TTA) strategy tailored for RPM tasks in this work. Specifically, based on prior knowledge in physiology and our observations, we noticed not only there is spatio-temporal consistency in the frequency domain of BVP signals, but also that inconsistency in the time domain was significant. Given this, by leveraging both consistency and inconsistency priors, we introduce an innovative expert knowledge-based self-supervised \textbf{C}onsistency-\textbf{i}n\textbf{C}onsistency-\textbf{i}ntegration (\textbf{CiCi}) framework to enhances model adaptation during inference. Besides, our approach further incorporates a gradient dynamic control mechanism to mitigate potential conflicts between priors, ensuring stable adaptation across instances. Through extensive experiments on five diverse datasets under the TTA protocol, our method consistently outperforms existing techniques, presenting state-of-the-art performance in real-time self-supervised adaptation without accessing source data. The code will be released later.

cs / cs.CV