Learning Good Features to Transfer Across Tasks and Domains

01/26/2023
by   Pierluigi Zama Ramirez, et al.
0

Availability of labelled data is the major obstacle to the deployment of deep learning algorithms for computer vision tasks in new domains. The fact that many frameworks adopted to solve different tasks share the same architecture suggests that there should be a way of reusing the knowledge learned in a specific setting to solve novel tasks with limited or no additional supervision. In this work, we first show that such knowledge can be shared across tasks by learning a mapping between task-specific deep features in a given domain. Then, we show that this mapping function, implemented by a neural network, is able to generalize to novel unseen domains. Besides, we propose a set of strategies to constrain the learned feature spaces, to ease learning and increase the generalization capability of the mapping network, thereby considerably improving the final performance of our framework. Our proposal obtains compelling results in challenging synthetic-to-real adaptation scenarios by transferring knowledge between monocular depth estimation and semantic segmentation tasks.

READ FULL TEXT

page 1

page 3

page 5

page 6

page 7

page 8

page 9

page 15

research
04/09/2019

Learning Across Tasks and Domains

Recent works have proven that many relevant visual tasks are closely rel...
research
05/17/2021

Learning to Relate Depth and Semantics for Unsupervised Domain Adaptation

We present an approach for encoding visual task relationships to improve...
research
11/10/2015

The Fast Bilateral Solver

We present the bilateral solver, a novel algorithm for edge-aware smooth...
research
12/16/2020

Towards Recognizing New Semantic Concepts in New Visual Domains

Deep learning models heavily rely on large scale annotated datasets for ...
research
04/28/2020

Deflating Dataset Bias Using Synthetic Data Augmentation

Deep Learning has seen an unprecedented increase in vision applications ...
research
06/07/2020

SharinGAN: Combining Synthetic and Real Data for Unsupervised Geometry Estimation

We propose a novel method for combining synthetic and real images when t...
research
06/24/2020

Improving task-specific representation via 1M unlabelled images without any extra knowledge

We present a case-study to improve the task-specific representation by l...

Please sign up or login with your details

Forgot password? Click here to reset