Data-dependent Nonlinearity Analysis in CT Denoising CNNs

被引:0
|
作者
Wang, Wenying [1 ]
Li, Junyuan [1 ]
Tivnan, Matthew [1 ]
Stayman, J. Webster [1 ]
Gang, Grace J. [1 ]
机构
[1] Johns Hopkins Univ, Dept Biomed Engn, Baltimore, MD 21218 USA
关键词
D O I
10.1117/12.2612569
中图分类号
O43 [光学];
学科分类号
070207 ; 0803 ;
摘要
Recent years have seen the increasing application of deep learning methods in medical imaging formation, processing, and analysis. These methods take advantage of the flexibility of nonlinear neural network models to encode information and features in ways that can outperform conventional approaches. However, because of the nonlinear nature of this processing, images formed by neural networks have properties that are highly data-dependent and difficult to analyze. In particular, the generalizability and robustness of these approaches can be difficult to ascertain. In this work, we analyze a class of neural networks that use only piece-wise linear activation functions. This class of networks can be represented by locally linear systems where the linear properties are highly data-dependent - allowing, for example, estimation of noise in image output via standard propagation methods. We propose a nonlinearity index metric that quantifies the fidelity of a local linear approximation of trained models based on specific input data. We applied this analysis to three example CT denoising CNNs to analytically predict the noise properties in the output images. We found that the proposed nonlinearity metric highly correlates with the accuracy of noise predictions. The analysis proposed in this work provides theoretical understanding of the nonlinear behavior of neural networks and enables performance prediction and quantitation under certain conditions.
引用
收藏
页数:6
相关论文
共 50 条
  • [41] Extending the data parallel paradigm with data-dependent operators
    Biancardi, A
    Mérigot, A
    PARALLEL COMPUTING, 2002, 28 (7-8) : 995 - 1021
  • [42] ECHOCARDIOGRAM PROCESSING AND CLASSIFICATION USING DATA-DEPENDENT SYSTEMS-ANALYSIS
    AMBARDAR, A
    WALWORTH, M
    PANDIT, SM
    ZIEGLER, RF
    ISA TRANSACTIONS, 1984, 23 (03) : 57 - 64
  • [43] Data detection and coding for data-dependent superimposed training
    Wang, Ping
    Fan, Pingzhi
    Yuan, Weina
    Darnell, Michael
    IET SIGNAL PROCESSING, 2014, 8 (02) : 138 - 145
  • [44] Switchable data-dependent operations: New designs
    Moldovyan, N. A.
    Moldovyan, A. A.
    INTERNATIONAL E-CONFERENCE ON COMPUTER SCIENCE 2005, 2005, 2 : 174 - 177
  • [45] First CPIR Protocol with Data-Dependent Computation
    Lipmaa, Helger
    INFORMATION SECURITY AND CRYPTOLOGY - ISISC 2009, 2010, 5984 : 193 - 210
  • [46] Maximum relative margin and data-dependent regularization
    Shivaswamy, Pannagadatta K.
    Jebara, Tony
    Journal of Machine Learning Research, 2010, 11 : 747 - 788
  • [47] Data-dependent reduced-dimension STAP
    Zhang, Wei
    Han, Minghua
    He, Zishu
    Li, Huiyong
    IET RADAR SONAR AND NAVIGATION, 2019, 13 (08): : 1287 - 1294
  • [48] An error diffusion algorithm with data-dependent prefiltering
    Hanaoka, C
    Taguchi, A
    ELECTRONICS AND COMMUNICATIONS IN JAPAN PART III-FUNDAMENTAL ELECTRONIC SCIENCE, 2006, 89 (05): : 1 - 11
  • [49] A Low-Complexity Data-Dependent Beamformer
    Synnevag, Johan-Fredrik
    Austeng, Andreas
    Holm, Sverre
    IEEE TRANSACTIONS ON ULTRASONICS FERROELECTRICS AND FREQUENCY CONTROL, 2011, 58 (02) : 281 - 289
  • [50] Classification Model with Subspace Data-Dependent Balls
    Klakhaeng, Nattapon
    Kangkachit, Thanapat
    Rakthanmanon, Thanawin
    Waiyamai, Kitsana
    2013 10TH INTERNATIONAL JOINT CONFERENCE ON COMPUTER SCIENCE AND SOFTWARE ENGINEERING (JCSSE), 2013, : 211 - 216