@InProceedings{LaranjeiraLaceNasc:2019:MoCoOb,
author = "Laranjeira, Camila and Lacerda, Anisio and Nascimento, Erickson
R.",
affiliation = "{Universidade Federal de Minas Gerais} and {Universidade Federal
de Minas Gerais} and {Universidade Federal de Minas Gerais}",
title = "On Modeling Context from Objects with a Long Short-Term Memory for
Indoor Scene Recognition",
booktitle = "Proceedings...",
year = "2019",
editor = "Oliveira, Luciano Rebou{\c{c}}as de and Sarder, Pinaki and Lage,
Marcos and Sadlo, Filip",
organization = "Conference on Graphics, Patterns and Images, 32. (SIBGRAPI)",
publisher = "IEEE Computer Society",
address = "Los Alamitos",
keywords = "Indoor Scene Recognition, Recurrent Neural Networks.",
abstract = "Recognizing indoor scenes is still regarded an open challenge on
the Computer Vision field. Indoor scenes can be well represented
by their composing objects, which can vary in angle, appearance,
besides often being partially occluded. Even though Convolutional
Neural Networks are remarkable for image-related problems, the top
performances on indoor scenes are from approaches modeling the
intricate relationship of objects. Knowing that Recurrent Neural
Networks were designed to model structure from a given sequence,
we propose representing an image as a sequence of object-level
information in order to feed a bidirectional Long Short-Term
Memory network trained for scene classification. We perform a
Many-to-Many training approach, such that each element outputs a
scene prediction, allowing us to use each prediction to boost
recognition. Our method outperforms RNN-based approaches on MIT67,
an entirely indoor dataset, while also improved over the most
successful methods through an ensemble of classifiers.",
conference-location = "Rio de Janeiro, RJ, Brazil",
conference-year = "28-31 Oct. 2019",
doi = "10.1109/SIBGRAPI.2019.00041",
url = "http://dx.doi.org/10.1109/SIBGRAPI.2019.00041",
language = "en",
ibi = "8JMKD3MGPEW34M/3U2NP8L",
url = "http://urlib.net/ibi/8JMKD3MGPEW34M/3U2NP8L",
targetfile = "PID6127653.pdf",
urlaccessdate = "2025, Apr. 20"
}