Skip to main content
. Author manuscript; available in PMC: 2019 Aug 9.
Published in final edited form as: Med Image Anal. 2019 Apr 22;55:136–147. doi: 10.1016/j.media.2019.04.009

Table 1.

Synthetic mistriggering artefact data classification results for mean accuracy (A), precision (P), recall (R) and balanced accuracy (BA) results. A 10-fold cross validation was used and each image was labelled once over all folds and standard deviation over folds is reported (mean ± std). All results are multiplied by 1000 and the bold font highlights the best results.

Methods A P R BA
K-Nearest Neighbours 742 ± 25 742 ± 33 746 ± 40 744 ± 37
Linear SVM 748 ± 36 743 ± 89 749 ± 41 746 ± 73
Decision Tree 756 ± 42 757 ± 46 751 ± 33 754 ± 41
Random Forests 787 ± 45 782 ± 78 786 ± 62 784 ± 67
Adaboost 783 ± 37 781 ± 60 778 ± 73 779 ± 66
Naive Bayesian 809 ± 65 796 ± 48 804 ± 57 800 ± 52
Variance of Laplacian 802 ± 42 799 ± 62 803 ± 79 802 ± 41
NIQE 922 ± 56 919 ± 72 925 ± 82 923 ± 71
Lorch et al. (2017) 893 ± 62 892 ± 83 894 ± 49 893 ± 22
3D CNN 961 ± 79 957 ± 101 959 ± 87 958 ± 74
LRCN 963 ± 45 963 ± 33 965 ± 41 964 ± 38