MTI-Net: Multi-Scale Task Interaction Networks for Multi-Task Learning

Bibliographic Details
Title: MTI-Net: Multi-Scale Task Interaction Networks for Multi-Task Learning
Authors: Vandenhende, Simon, Georgoulis, Stamatios, Van Gool, Luc
Publication Year: 2020
Collection: Computer Science
Subject Terms: Computer Science - Computer Vision and Pattern Recognition
More Details: In this paper, we argue about the importance of considering task interactions at multiple scales when distilling task information in a multi-task learning setup. In contrast to common belief, we show that tasks with high affinity at a certain scale are not guaranteed to retain this behaviour at other scales, and vice versa. We propose a novel architecture, namely MTI-Net, that builds upon this finding in three ways. First, it explicitly models task interactions at every scale via a multi-scale multi-modal distillation unit. Second, it propagates distilled task information from lower to higher scales via a feature propagation module. Third, it aggregates the refined task features from all scales via a feature aggregation unit to produce the final per-task predictions. Extensive experiments on two multi-task dense labeling datasets show that, unlike prior work, our multi-task model delivers on the full potential of multi-task learning, that is, smaller memory footprint, reduced number of calculations, and better performance w.r.t. single-task learning. The code is made publicly available: https://github.com/SimonVandenhende/Multi-Task-Learning-PyTorch.
Comment: Accepted at ECCV2020 (spotlight) - Code: https://github.com/SimonVandenhende/Multi-Task-Learning-PyTorch
Document Type: Working Paper
Access URL: http://arxiv.org/abs/2001.06902
Accession Number: edsarx.2001.06902
Database: arXiv
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