%Aigaion2 BibTeX export from Idiap Publications %Thursday 21 November 2024 11:47:42 AM @INPROCEEDINGS{fasel02b-conf, author = {Fasel, B.}, projects = {Idiap}, month = {9}, title = {Facial {E}xpression {A}nalysis using {S}hape and {M}otion {I}nformation {E}xtracted by {C}onvolutional Neural Networks}, booktitle = {International {IEEE} {W}orkshop on Neural Networks for {S}ignal {P}rocessing ({NNSP} 02)}, year = {2002}, address = {Martigny, Switzerland}, note = {IDIAP-RR 01-49}, crossref = {fasel-rr-01-49}, abstract = {In this paper we discuss a neural networks-based face analysis approach that is able to cope with faces subject to pose and lighting variations. Especially head pose variations are difficult to tackle and many face analysis methods require the use of sophisticated normalization procedures. Data-driven shape and motion-based face analysis approaches are introduced that are not only capable of extracting features relevant to a given face analysis task at hand, but are also robust with regard to translation and scale variations. This is achieved by deploying convolutional and time-delayed neural networks, which are either trained for face shape deformation or facial motion analysis.}, pdf = {https://publications.idiap.ch/attachments/reports/2001/rr01-49.pdf}, postscript = {ftp://ftp.idiap.ch/pub/reports/2001/rr01-49.ps.gz}, ipdmembership={vision}, } crossreferenced publications: @TECHREPORT{fasel-RR-01-49, author = {Fasel, B.}, projects = {Idiap}, title = {Facial {E}xpression {A}nalysis using {S}hape and {M}otion {I}nformation {E}xtracted by {C}onvolutional Neural Networks}, type = {Idiap-RR}, number = {Idiap-RR-49-2001}, year = {2001}, institution = {IDIAP}, note = {Published in the Proceedings of the IEEE Workshop on Neural Networks for Signal Processing (NNSP 2002,',','), Martigny, Switzerland, 2002}, abstract = {In this paper we discuss a neural networks-based face analysis approach that is able to cope with faces subject to pose and lighting variations. Especially head pose variations are difficult to tackle and many face analysis methods require the use of sophisticated normalization procedures. Data-driven shape and motion-based face analysis approaches are introduced that are not only capable of extracting features relevant to a given face analysis task at hand, but are also robust with regard to translation and scale variations. This is achieved by deploying convolutional and time-delayed neural networks, which are either trained for face shape deformation or facial motion analysis.}, pdf = {https://publications.idiap.ch/attachments/reports/2001/rr01-49.pdf}, postscript = {ftp://ftp.idiap.ch/pub/reports/2001/rr01-49.ps.gz}, ipdmembership={vision}, }