A Self-Evolving Defect Detection Framework for Industrial Photovoltaic Systems
arXiv cs.AI / 3/17/2026
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Key Points
- SEPDD is a Self-Evolving Photovoltaic Defect Detection framework designed for evolving industrial PV inspection scenarios to adapt to distribution shifts and newly emerging defect patterns.
- It integrates automated model optimization with a continual self-evolving learning mechanism to maintain robustness under long-term deployment amid heterogeneous module geometries, low-resolution imaging, subtle defects, long-tailed distributions, and evolving labeling processes.
- Experiments on public PV defect benchmarks and private industrial EL datasets show a leading mAP50 of 91.4% on the public dataset and 49.5% on the private dataset, with SEPDD surpassing the autonomous baseline by 14.8% and human experts by 4.7% on the public data and by 4.9% and 2.5% on the private data.
- The framework demonstrates practical potential for reliable, maintainable PV defect inspection in industry by adapting to distribution shifts and new defect patterns over time.
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