INS-DETLGFeb 7, 2023

Tetris-inspired detector with neural network for radiation mapping

arXiv:2302.07099v110 citationsh-index: 15
Originality Incremental advance
AI Analysis

This addresses the problem of efficient radiation mapping for environmental monitoring, though it appears incremental as it builds on existing detector and algorithm approaches.

The authors tackled the challenge of high-performance, low-cost radiation mapping by developing a computational framework using Tetris-inspired detector pixels and neural networks, achieving high-resolution directional mapping with as few as four pixels and improving performance beyond conventional grid-shaped detectors.

In recent years, radiation mapping has attracted widespread research attention and increased public concerns on environmental monitoring. In terms of both materials and their configurations, radiation detectors have been developed to locate the directions and positions of the radiation sources. In this process, algorithm is essential in converting detector signals to radiation source information. However, due to the complex mechanisms of radiation-matter interaction and the current limitation of data collection, high-performance, low-cost radiation mapping is still challenging. Here we present a computational framework using Tetris-inspired detector pixels and machine learning for radiation mapping. Using inter-pixel padding to increase the contrast between pixels and neural network to analyze the detector readings, a detector with as few as four pixels can achieve high-resolution directional mapping. By further imposing Maximum a Posteriori (MAP) with a moving detector, further radiation position localization is achieved. Non-square, Tetris-shaped detector can further improve performance beyond the conventional grid-shaped detector. Our framework offers a new avenue for high quality radiation mapping with least number of detector pixels possible, and is anticipated to be capable to deploy for real-world radiation detection with moderate validation.

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