Contextual Diversity for Active Learning

08/13/2020
by   Sharat Agarwal, et al.
10

Requirement of large annotated datasets restrict the use of deep convolutional neural networks (CNNs) for many practical applications. The problem can be mitigated by using active learning (AL) techniques which, under a given annotation budget, allow to select a subset of data that yields maximum accuracy upon fine tuning. State of the art AL approaches typically rely on measures of visual diversity or prediction uncertainty, which are unable to effectively capture the variations in spatial context. On the other hand, modern CNN architectures make heavy use of spatial context for achieving highly accurate predictions. Since the context is difficult to evaluate in the absence of ground-truth labels, we introduce the notion of contextual diversity that captures the confusion associated with spatially co-occurring classes. Contextual Diversity (CD) hinges on a crucial observation that the probability vector predicted by a CNN for a region of interest typically contains information from a larger receptive field. Exploiting this observation, we use the proposed CD measure within two AL frameworks: (1) a core-set based strategy and (2) a reinforcement learning based policy, for active frame selection. Our extensive empirical evaluation establish state of the art results for active learning on benchmark datasets of Semantic Segmentation, Object Detection and Image Classification. Our ablation studies show clear advantages of using contextual diversity for active learning. The source code and additional results are available at https://github.com/sharat29ag/CDAL.

READ FULL TEXT
research
11/21/2022

Plug and Play Active Learning for Object Detection

Annotating data for supervised learning is expensive and tedious, and we...
research
10/05/2020

OLALA: Object-Level Active Learning Based Layout Annotation

In layout object detection problems, the ground-truth datasets are const...
research
11/11/2022

LiDAL: Inter-frame Uncertainty Based Active Learning for 3D LiDAR Semantic Segmentation

We propose LiDAL, a novel active learning method for 3D LiDAR semantic s...
research
04/23/2023

You Never Get a Second Chance To Make a Good First Impression: Seeding Active Learning for 3D Semantic Segmentation

We propose SeedAL, a method to seed active learning for efficient annota...
research
07/17/2019

Half a Percent of Labels is Enough: Efficient Animal Detection in UAV Imagery using Deep CNNs and Active Learning

We present an Active Learning (AL) strategy for re-using a deep Convolut...
research
07/03/2023

REAL: A Representative Error-Driven Approach for Active Learning

Given a limited labeling budget, active learning (AL) aims to sample the...
research
08/20/2021

Region-level Active Learning for Cluttered Scenes

Active learning for object detection is conventionally achieved by apply...

Please sign up or login with your details

Forgot password? Click here to reset