
Model compression of SDM‐based face alignment for mobile applications
Author(s) -
Shen Yehu,
Jiang Quansheng,
Yang Yong,
Wang Bangfu,
Zhu Qixin
Publication year - 2018
Publication title -
the journal of engineering
Language(s) - English
Resource type - Journals
ISSN - 2051-3305
DOI - 10.1049/joe.2018.8294
Subject(s) - computer science , uncompressed video , face (sociological concept) , parametric statistics , artificial intelligence , process (computing) , compression (physics) , data compression , pattern recognition (psychology) , data mining , video processing , video tracking , mathematics , social science , statistics , materials science , sociology , composite material , operating system
Face alignment could be widely used in face recognition, expression recognition, face‐based AR applications etc. Cascaded‐regression‐based face alignment algorithms have been popular in recent years for their low computational costs and impressive results in uncontrolled scenarios. Unfortunately, the size of the trained model is quite large for cascaded‐regression‐based methods which makes it unsuitable for commercial applications on mobile phones. In this study, the authors proposed a data compression method for the trained model of the supervised descent method (SDM). Firstly, the distribution of the model data was estimated using a non‐parametric method. Then an adaptive quantisation algorithm was proposed to quantise the model data. Finally, their adaptive quantisation algorithm was tightly coupled with the SDM training process to fine tune the results. The quantitative experimental results proved that their proposed method could compress the data model to <20% of its original size without hurting the performances. The proposed method has been integrated into a mobile AR application, subjective evaluations proved that the proposed compression method could provide similar visual effects compared with the uncompressed counterpart.