论文标题
在存在复杂货物的情况下,2D被动源检测的深度学习
Deep learning for 2D passive source detection in presence of complex cargo
论文作者
论文摘要
高噪声环境中源检测的方法对于单光子发射计算机断层扫描(SPECT)医学成像很重要,对于国土安全应用尤其重要,这是我们的主要兴趣。在后一种情况下,人们涉及被动检测具有明显背景噪声的低排放核源(信号与噪声比($ SNR $)$ 1 \%$或更少)。在被动排放问题中,需要方向敏感检测器,以匹配图像的维度和数据。在标准愤怒$γ$ -CAMERAS中用于该目的的准确性不是一种选择。取而代之的是,可以利用Compton $γ$ -CAMERAS(及其用于其他类型的辐射的类似物)。在存在随机统一背景的情况下,两位作者及其协作者之前提出了反向投影方法。但是,在大多数实用的应用中,运输容器和卡车中的货物包装会产生强大的吸收和散射区域,同时留出一些流质差距。在这种情况下,反射方法证明无效并失去了检测能力。尽管如此,对反射图片的视觉感知表明,数据中存在一些源的迹象。为了学习此类特征(如果确实存在),则在2D中实现了深层的神经网络方法,在低散射情况下,实际上比反向投影技术表现出更高的灵敏度和特异性,并且当复杂的货物的存在使反向投影完全失败时,它可以很好地工作。
Methods for source detection in high noise environments are important for single-photon emission computed tomography (SPECT) medical imaging and especially crucial for homeland security applications, which is our main interest. In the latter case, one deals with passively detecting the presence of low emission nuclear sources with significant background noise (with Signal To Noise Ratio ($SNR$) $1\%$ or less). In passive emission problems, direction sensitive detectors are needed, to match the dimensionalities of the image and the data. Collimation, used for that purpose in standard Anger $γ$-cameras, is not an option. Instead, Compton $γ$-cameras (and their analogs for other types of radiation) can be utilized. Backprojection methods suggested before by two of the authors and their collaborators enable detection in the presence of a random uniform background. In most practical applications, however, cargo packing in shipping containers and trucks creates regions of strong absorption and scattering, while leaving some streaming gaps open. In such cases backprojection methods prove ineffective and lose their detection ability. Nonetheless, visual perception of the backprojection pictures suggested that some indications of presence of a source might still be in the data. To learn such features (if they do exist), a deep neural network approach is implemented in 2D, which indeed exhibits higher sensitivity and specificity than the backprojection techniques in a low scattering case and works well when presence of complex cargo makes backprojection fail completely.