%Aigaion2 BibTeX export from Idiap Publications %Monday 09 December 2024 08:53:55 PM @INPROCEEDINGS{monay:pascal:2006, author = {Monay, Florent and Quelhas, Pedro and Gatica-Perez, Daniel and Odobez, Jean-Marc}, projects = {Idiap}, title = {Constructing visual models with a latent space approach}, booktitle = {{t}he {S}pringer series of {L}ecture Notes in {C}omputer {S}cience}, year = {2006}, note = {IDIAP-RR 05-14}, crossref = {monay:rr05-14}, abstract = {We propose the use of latent space models applied to local invariant features for object classification. We investigate whether using latent space models enables to learn patterns of visual co-occurrence and if the learned visual models improve performance when less labeled data are available. We present and discuss results that support these hypotheses. Probabilistic Latent Semantic Analysis (PLSA) automatically identifies aspects from the data with semantic meaning, producing unsupervised soft clustering. The resulting compact representation retains sufficient discriminative information for accurate object classification, and improves the classification accuracy through the use of unlabeled data when less labeled training data are available. We perform experiments on a 7-class object database containing 1776 images.}, pdf = {https://publications.idiap.ch/attachments/papers/2006/monay-pascal-2006.pdf}, postscript = {ftp://ftp.idiap.ch/pub/papers/2006/monay-pascal-2006.ps.gz}, ipdmembership={vision}, } crossreferenced publications: @TECHREPORT{monay:rr05-14, author = {Monay, Florent and Quelhas, Pedro and Gatica-Perez, Daniel and Odobez, Jean-Marc}, projects = {Idiap}, title = {Constructing visual models with a latent space approach}, type = {Idiap-RR}, number = {Idiap-RR-14-2005}, year = {2005}, institution = {IDIAP}, note = {To appear in Springer series of Lecture Notes in Computer Science}, abstract = {We propose the use of latent space models applied to local invariant features for object classification. We investigate whether using latent space models enables to learn patterns of visual co-occurrence and if the learned visual models improve performance when less labeled data are available. We present and discuss results that support these hypotheses. Probabilistic Latent Semantic Analysis (PLSA) automatically identifies aspects from the data with semantic meaning, producing unsupervised soft clustering. The resulting compact representation retains sufficient discriminative information for accurate object classification, and improves the classification accuracy through the use of unlabeled data when less labeled training data are available. We perform experiments on a 7-class object database containing 1776 images.}, pdf = {https://publications.idiap.ch/attachments/reports/2005/monay-idiap-rr-05-14.pdf}, postscript = {ftp://ftp.idiap.ch/pub/reports/2005/monay-idiap-rr-05-14.ps.gz}, ipdmembership={vision}, }