Back to Search Start Over

MILA: Multi-Task Learning from Videos via Efficient Inter-Frame Attention

Authors :
Kim, Donghyun
Lan, Tian
Zou, Chuhang
Xu, Ning
Plummer, Bryan A.
Sclaroff, Stan
Eledath, Jayan
Medioni, Gerard
Publication Year :
2020

Abstract

Prior work in multi-task learning has mainly focused on predictions on a single image. In this work, we present a new approach for multi-task learning from videos via efficient inter-frame local attention (MILA). Our approach contains a novel inter-frame attention module which allows learning of task-specific attention across frames. We embed the attention module in a ``slow-fast'' architecture, where the slower network runs on sparsely sampled keyframes and the light-weight shallow network runs on non-keyframes at a high frame rate. We also propose an effective adversarial learning strategy to encourage the slow and fast network to learn similar features. Our approach ensures low-latency multi-task learning while maintaining high quality predictions. Experiments show competitive accuracy compared to state-of-the-art on two multi-task learning benchmarks while reducing the number of floating point operations (FLOPs) by up to 70\%. In addition, our attention based feature propagation method (ILA) outperforms prior work in terms of task accuracy while also reducing up to 90\% of FLOPs.<br />Comment: Accepted in ICCV 2021 MTL Workshop

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2002.07362
Document Type :
Working Paper