Hyperspectral Face Recognition with Adaptive and Parallel SVMs in Partially Hidden Face Scenarios

Sensors (Basel). 2022 Oct 9;22(19):7641. doi: 10.3390/s22197641.

Abstract

Hyperspectral imaging opens up new opportunities for masked face recognition via discrimination of the spectral information obtained by hyperspectral sensors. In this work, we present a novel algorithm to extract facial spectral-features from different regions of interests by performing computer vision techniques over the hyperspectral images, particularly Histogram of Oriented Gradients. We have applied this algorithm over the UWA-HSFD dataset to extract the facial spectral-features and then a set of parallel Support Vector Machines with custom kernels, based on the cosine similarity and Euclidean distance, have been trained on fly to classify unknown subjects/faces according to the distance of the visible facial spectral-features, i.e., the regions that are not concealed by a face mask or scarf. The results draw up an optimal trade-off between recognition accuracy and compression ratio in accordance with the facial regions that are not occluded.

Keywords: SVM; biometrics; computer vision; facial recognition; hyperspectral compression; hyperspectral imaging.

MeSH terms

  • Algorithms
  • Facial Recognition*
  • Support Vector Machine