PartAL: Efficient Partial Active Learning in Multi-Task Visual Settings

11/21/2022
by   Nikita Durasov, et al.
0

Multi-task learning is central to many real-world applications. Unfortunately, obtaining labelled data for all tasks is time-consuming, challenging, and expensive. Active Learning (AL) can be used to reduce this burden. Existing techniques typically involve picking images to be annotated and providing annotations for all tasks. In this paper, we show that it is more effective to select not only the images to be annotated but also a subset of tasks for which to provide annotations at each AL iteration. Furthermore, the annotations that are provided can be used to guess pseudo-labels for the tasks that remain unannotated. We demonstrate the effectiveness of our approach on several popular multi-task datasets.

READ FULL TEXT

page 2

page 4

page 7

research
08/10/2022

Multi-task Active Learning for Pre-trained Transformer-based Models

Multi-task learning, in which several tasks are jointly learned by a sin...
research
01/01/2019

An Active Learning Framework for Efficient Robust Policy Search

Robust Policy Search is the problem of learning policies that do not deg...
research
09/23/2020

Label-Efficient Multi-Task Segmentation using Contrastive Learning

Obtaining annotations for 3D medical images is expensive and time-consum...
research
02/02/2022

Active Multi-Task Representation Learning

To leverage the power of big data from source tasks and overcome the sca...
research
06/25/2021

Generative Modeling for Multi-task Visual Learning

Generative modeling has recently shown great promise in computer vision,...
research
08/21/2023

Test-time augmentation-based active learning and self-training for label-efficient segmentation

Deep learning techniques depend on large datasets whose annotation is ti...
research
12/23/2016

Active Learning and Proofreading for Delineation of Curvilinear Structures

Many state-of-the-art delineation methods rely on supervised machine lea...

Please sign up or login with your details

Forgot password? Click here to reset