Fast ROI Triggering with Autoencoders in Optical TPCs
Analysis
Key Takeaways
- •Introduces an unsupervised, reconstruction-based anomaly detection method for fast ROI extraction in optical TPCs.
- •Employs convolutional autoencoders trained on pedestal images to learn detector noise morphology.
- •Achieves high signal retention and significant image area reduction.
- •Demonstrates the importance of training objective design for effective anomaly detection.
- •Provides a detector-agnostic baseline for online data reduction.
“The best configuration retains (93.0 +/- 0.2)% of reconstructed signal intensity while discarding (97.8 +/- 0.1)% of the image area, with an inference time of approximately 25 ms per frame on a consumer GPU.”