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Continual Error Correction on Low-Resource Devices

Published: November 26, 2025 | arXiv ID: 2511.21652v1

By: Kirill Paramonov , Mete Ozay , Aristeidis Mystakidis and more

BigTech Affiliations: Samsung

Potential Business Impact:

Fixes AI mistakes with just a few examples.

Business Areas:
Image Recognition Data and Analytics, Software

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.

Country of Origin
🇰🇷 South Korea

Page Count
7 pages

Category
Computer Science:
CV and Pattern Recognition