Natural Scene Statistics commonly used in non-reference image quality measures and a deep learning based quality assessment approach are proposed as biometric quality indicators for vasculature images. While NIQE and BRISQUE if trained on common images with usual distortions do not work well for assessing vasculature pattern samples' quality, their variants being trained on high and low quality vasculature sample data behave as expected from a biometric quality estimator in most cases (deviations from the overall trend occur for certain datasets or feature extraction methods). The proposed deep learning based quality metric is capable of assigning the correct quality class to the vaculature pattern samples in most cases, independent of finger or hand vein patterns being assessed. The experiments were conducted on a total of 13 publicly available finger and hand vein datasets and involve three distinct template representations (two of them especially designed for vascular biometrics). The proposed (trained) quality measures are compared to a several classical quality metrics, with their achieved results underlining their promising behaviour.
翻译:在不参考图像质量措施和深层次学习质量评估方法中,通常使用的自然景象统计作为血管图像的生物鉴别质量指标。虽然NIQE和BRISQUE如果接受通常扭曲的普通图像培训,在评估血管图样样本质量方面效果不佳,但其变异体在高和低质量血管抽样数据方面受到的培训与生物鉴别质量估测器所预期的一样(从某些数据集或特征提取方法的总趋势中出现的证据),拟议的深层次学习质量指标能够在多数情况下将正确的质量等级分配给真空图样样本,而不受手指或手血管形态的影响。实验是在总共13个公开可得的手指和手血管数据集上进行的,并涉及三种不同的模板显示(其中两个是专门为血管生物测定器设计的)。拟议的(经过培训的)质量措施与若干典型质量指标进行了比较,其取得的结果突出其有希望的行为。