Parameter-Free Adaptive Step-Size Multiobjective Optimization Applied to Remote Photoplethysmography

Richard Macwan1, Yannick Benezeth, Keisuke Nakamura2, Randy Gomez2, Yadong Wu, Alamin Mansouri

  • 1Universit? de Bourgogne
  • 2Honda Research Institute Japan Co., Ltd.

Details

19:30 - 20:30 | Tue 6 Mar | Caribbean ABC | TuPO.16

Session: Poster Session # 2 and BSN Innovative Health Technology Demonstrations

Abstract

In this work, we propose to reformulate the objective function of Independent Component Analysis (ICA) to make it a better posed problem in the context of Remote photoplethysmography (rPPG). In recent previous works, linear combination coefficients of RGB channels are estimated maximizing the non-Gaussianity of ICA output components. However, in the context of rPPG a priori knowledge of the pulse signal can be incorporated into the component extraction algorithm. To this end, the contrast function of regular ICA is extended with a measure of periodicity formulated using autocorrelation. This novel semi-blind source extraction method for measuring rPPG has the interesting property of being free from manual parameter adjustment. The tedious selection of the step-size parameter in the gradient-ascent algorithm has been advantageously replaced by an adaptive step size. Our method has been validated against our large in-house video database UBFC-RPPG.