| Publisher DOI: | 10.48550/arXiv.2510.26501 | Title: | Enhancing ECG classification robustness with lightweight unsupervised anomaly detection filters | Language: | English | Authors: | Ibrahim, Mustafa Fuat Rifet Meijer, Maurice Schlaefer, Alexander Stelldinger, Peer |
Keywords: | Machine Learning | Issue Date: | 30-Oct-2025 | Publisher: | Cornell University | Journal or Series Name: | Arxiv | Abstract: | Continuous electrocardiogram (ECG) monitoring via wearable devices is vital for early cardiovascular disease detection. However, deploying deep learning models on resource-constrained microcontrollers faces reliability challenges, particularly from Out-of-Distribution (OOD) pathologies and noise. Standard classifiers often yield high-confidence errors on such data. Existing OOD detection methods either neglect computational constraints or address noise and unseen classes separately. This paper investigates Unsupervised Anomaly Detection (UAD) as a lightweight, upstream filtering mechanism. We perform a Neural Architecture Search (NAS) on six UAD approaches, including Deep Support Vector Data Description (Deep SVDD), input reconstruction with (Variational-)Autoencoders (AE/VAE), Masked Anomaly Detection (MAD), Normalizing Flows (NFs) and Denoising Diffusion Probabilistic Models (DDPM) under strict hardware constraints ( ≤512k parameters), suitable for microcontrollers. Evaluating on the PTB-XL and BUT QDB datasets, we demonstrate that a NAS-optimized Deep SVDD offers the superior Pareto efficiency between detection performance and model size. In a simulated deployment, this lightweight filter improves the accuracy of a diagnostic classifier by up to 21.0 percentage points, demonstrating that optimized UAD filters can safeguard ECG analysis on wearables. |
URI: | https://hdl.handle.net/20.500.12738/19350 | Review status: | Only preprints: This version has not yet been reviewed | Institute: | Competence Center Smart Systems in Society Fakultät Informatik und Digitale Gesellschaft |
Type: | Preprint | Additional note: | v1: Submitted to the 24th International Conference on Pervasive Computing and Communications (PerCom 2026), v2:7 pages, LaTeX; Accepted at the 5th IEEE Workshop on Pervasive and Resource-constrained Artificial Intelligence (PeRConAI) 2026; Shortened the text and removed Fig. 2 and Table II, results unchanged; updated faculty name of one author. |
| Appears in Collections: | Publications without full text |
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