Active Learning for Video Description With Cluster-Regularized Ensemble
Ranking
- URL: http://arxiv.org/abs/2007.13913v3
- Date: Wed, 2 Dec 2020 23:38:20 GMT
- Title: Active Learning for Video Description With Cluster-Regularized Ensemble
Ranking
- Authors: David M. Chan, Sudheendra Vijayanarasimhan, David A. Ross, John Canny
- Abstract summary: We show that a cluster-regularized ensemble strategy provides the best active learning approach to efficiently gather training sets for video captioning.
We evaluate our approaches on the MSR-VTT and LSMDC datasets using both transformer and LSTM based captioning models.
- Score: 3.5721078031625018
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Automatic video captioning aims to train models to generate text descriptions
for all segments in a video, however, the most effective approaches require
large amounts of manual annotation which is slow and expensive. Active learning
is a promising way to efficiently build a training set for video captioning
tasks while reducing the need to manually label uninformative examples. In this
work we both explore various active learning approaches for automatic video
captioning and show that a cluster-regularized ensemble strategy provides the
best active learning approach to efficiently gather training sets for video
captioning. We evaluate our approaches on the MSR-VTT and LSMDC datasets using
both transformer and LSTM based captioning models and show that our novel
strategy can achieve high performance while using up to 60% fewer training data
than the strong state of the art baselines.
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