SOTAVerified

Large-scale representation learning from visually grounded untranscribed speech

2019-09-19CONLL 2019Unverified0· sign in to hype

Gabriel Ilharco, Yuan Zhang, Jason Baldridge

Unverified — Be the first to reproduce this paper.

Reproduce

Abstract

Systems that can associate images with their spoken audio captions are an important step towards visually grounded language learning. We describe a scalable method to automatically generate diverse audio for image captioning datasets. This supports pretraining deep networks for encoding both audio and images, which we do via a dual encoder that learns to align latent representations from both modalities. We show that a masked margin softmax loss for such models is superior to the standard triplet loss. We fine-tune these models on the Flickr8k Audio Captions Corpus and obtain state-of-the-art results---improving recall in the top 10 from 29.6% to 49.5%. We also obtain human ratings on retrieval outputs to better assess the impact of incidentally matching image-caption pairs that were not associated in the data, finding that automatic evaluation substantially underestimates the quality of the retrieved results.

Tasks

Reproductions