TinyGLASS: Real-Time Self-Supervised In-Sensor Anomaly Detection
arXiv cs.CV / 3/18/2026
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Key Points
- TinyGLASS offers real-time, self-supervised anomaly detection directly on the Sony IMX500 edge sensor by replacing the WideResNet-50 backbone with a compact ResNet-18 and adding deployment-oriented optimizations for in-sensor processing.
- The approach achieves 8.7x parameter compression while maintaining competitive performance, reaching 94.2% image-level AUROC on MVTec-AD and operating at 20 FPS within an 8 MB memory budget.
- Deployment-oriented techniques such as static graph tracing and INT8 quantization using Sony's Model Compression Toolkit enable efficient edge inference.
- The work introduces the MMS Dataset for cross-device evaluation and demonstrates robustness to moderate training data contamination at the edge.
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