Jointly Discovering Visual Objects and Spoken Words from Raw Sensory Input
Author(s)
Harwath, David F.; Recasens, Adria; Suris Coll-Vinent, Didac; Chuang, Galen; Torralba, Antonio; Glass, James R; ... Show more Show less
Download11263_2019_1205_ReferencePDF.pdf (39.35Mb)
Open Access Policy
Open Access Policy
Creative Commons Attribution-Noncommercial-Share Alike
Terms of use
Metadata
Show full item recordAbstract
Abstract
In this paper, we explore neural network models that learn to associate segments of spoken audio captions with the semantically relevant portions of natural images that they refer to. We demonstrate that these audio-visual associative localizations emerge from network-internal representations learned as a by-product of training to perform an image-audio retrieval task. Our models operate directly on the image pixels and speech waveform, and do not rely on any conventional supervision in the form of labels, segmentations, or alignments between the modalities during training. We perform analysis using the Places 205 and ADE20k datasets demonstrating that our models implicitly learn semantically coupled object and word detectors.
Date issued
2019-08-05Department
Massachusetts Institute of Technology. Computer Science and Artificial Intelligence Laboratory; Massachusetts Institute of Technology. Department of Electrical Engineering and Computer SciencePublisher
Springer US