基于卷积神经网络的闪烁检测器晶体区域分割

Seowung Leem, Byeong-Yeol Yu, H. Cha, Kyeyoung Cho, R. Miyaoka, Cheolung Kang, Jongmyoung Lee, Seungbin Bae, Hakjae Lee, Kisung Lee
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引用次数: 0

摘要

晶体面积分割是与闪烁晶体耦合的探测器模块译码的关键步骤之一。然而,模糊效应使解码过程具有挑战性。为了精确解码,我们提出了一种基于卷积神经网络(CNN)的晶体面积分割方法。该方法分为训练阶段和评估阶段。在训练阶段,从5个块的洪水地图中提取数据集。这些块经过预处理带通滤波器(BPF)和阈值。然后使用处理后的块对CNN进行训练和测试。在评价阶段,对两台正电子发射断层扫描(PET)扫描仪的洪水图进行了测试。该方法对每个样品的峰值检测准确率分别为99.5%和99.4%,而现有方法的峰值检测准确率分别为91.1%和95.4%。该算法几乎可以很好地检测到中心峰,提高了边界峰的可检测性。此外,整个解码过程在很短的时间内完成。然而,本文提出的算法仅考虑洪水图中峰值的空间信息。在进一步的研究中,我们将利用空间信息和能量信息来开发更精确和实用的解码算法。
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Crystal Area Segmentation for a Scintillation Detector based on Convolutional Neural Network
Crystal area segmentation is one of the critical procedures for decoding the detector module coupled with scintillation crystal. However, the blurring effect makes the decoding procedure challenging. For precise decoding, we propose a crystal area segmentation method based on convolutional neural network (CNN). The method is divided into training stage and evaluation stage. In the training stage, data set was extracted from five flood maps in blocks. These blocks went over preprocessing with bandpass filter (BPF) and thresholding. Then the processed blocks were used to train and test the CNN. In evaluation stage, flood map from 2 positron emission tomography (PET) scanners were tested. The method showed 99.5% and 99.4% of peak detection accuracy for each test samples while existing method achieved 91.1% and 95.4%. The proposed algorithm detected center peaks almost perfectly and improved detectability of boundary peaks. Also, the whole decoding process was done in short amount of time. However, the algorithm proposed in this paper only considered the spatial information of the peaks in flood map. In further studies we will develop improved algorithm with using both spatial and energy information to develop more precise and practical decoding algorithm.
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