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Continual Error Correction on Low-Resource Devices

ACM SIGMM Conference on Multimedia Systems (MMSys), 2025
26 November 2025
Kirill Paramonov
Mete Ozay
Aristeidis Mystakidis
Nikolaos Tsalikidis
Dimitrios Sotos
Anastasios Drosou
Dimitrios Tzovaras
Hyunjun Kim
Kiseok Chang
Sangdok Mo
Namwoong Kim
Woojong Yoo
J. Moon
Umberto Michieli
    CLLVLM
ArXiv (abs)PDFHTMLGithub (49214★)
Main:6 Pages
5 Figures
Bibliography:1 Pages
2 Tables
Abstract

The proliferation of AI models in everyday devices has highlighted a critical challenge: prediction errors that degrade user experience. While existing solutions focus on error detection, they rarely provide efficient correction mechanisms, especially for resource-constrained devices. We present a novel system enabling users to correct AI misclassifications through few-shot learning, requiring minimal computational resources and storage. Our approach combines server-side foundation model training with on-device prototype-based classification, enabling efficient error correction through prototype updates rather than model retraining. The system consists of two key components: (1) a server-side pipeline that leverages knowledge distillation to transfer robust feature representations from foundation models to device-compatible architectures, and (2) a device-side mechanism that enables ultra-efficient error correction through prototype adaptation. We demonstrate our system's effectiveness on both image classification and object detection tasks, achieving over 50% error correction in one-shot scenarios on Food-101 and Flowers-102 datasets while maintaining minimal forgetting (less than 0.02%) and negligible computational overhead. Our implementation, validated through an Android demonstration app, proves the system's practicality in real-world scenarios.

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