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Noise-Resilient Masked Face Detection Using Quantized DnCNN and YOLO
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- Title
- Noise-Resilient Masked Face Detection Using Quantized DnCNN and YOLO
- Issued Date
- 2025-12
- Citation
- Electronics (Basel), v.15, no.1
- Type
- Article
- Author Keywords
- edge AI ; object detection ; YOLO ; noise reduction ; DnCNN
- ISSN
- 2079-9292
- Abstract
-
This study presents a noise-resilient masked-face detection framework optimized for the NVIDIA Jetson AGX Orin, which improves detection precision by approximately 30% under severe Gaussian noise (variance 0.10) while reducing denoising latency by over 42% and increasing end-to-end throughput by more than 30%. The proposed system integrates a lightweight DnCNN-based denoising stage with the YOLOv11 detector, employing Quantize-Dequantize (QDQ)-based INT8 post-training quantization and a parallel CPU-GPU execution pipeline to maximize edge efficiency. The experimental results demonstrate that denoising preprocessing substantially restores detection accuracy under low signal quality. Furthermore, comparative evaluations confirm that 8-bit quantization achieves a favorable accuracy-efficiency trade-off with only minor precision degradation relative to 16-bit inference, proving the framework's robustness and practicality for real-time, resource-constrained edge AI applications.
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- Publisher
- MDPI AG
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