Improving Training on Noisy Stuctured Labels

03/08/2020
by   Abubakar Abid, et al.
0

Fine-grained annotations—e.g. dense image labels, image segmentation and text tagging—are useful in many ML applications but they are labor-intensive to generate. Moreover there are often systematic, structured errors in these fine-grained annotations. For example, a car might be entirely unannotated in the image, or the boundary between a car and street might only be coarsely annotated. Standard ML training on data with such structured errors produces models with biases and poor performance. In this work, we propose a novel framework of Error-Correcting Networks (ECN) to address the challenge of learning in the presence structured error in fine-grained annotations. Given a large noisy dataset with commonly occurring structured errors, and a much smaller dataset with more accurate annotations, ECN is able to substantially improve the prediction of fine-grained annotations compared to standard approaches for training on noisy data. It does so by learning to leverage the structures in the annotations and in the noisy labels. Systematic experiments on image segmentation and text tagging demonstrate the strong performance of ECN in improving training on noisy structured labels.

READ FULL TEXT

page 2

page 4

page 8

page 12

page 13

research
11/20/2015

The Unreasonable Effectiveness of Noisy Data for Fine-Grained Recognition

Current approaches for fine-grained recognition do the following: First,...
research
12/03/2014

Context-Dependent Fine-Grained Entity Type Tagging

Entity type tagging is the task of assigning category labels to each men...
research
06/20/2021

Solution for Large-scale Long-tailed Recognition with Noisy Labels

This is a technical report for CVPR 2021 AliProducts Challenge. AliProdu...
research
05/23/2022

Fine-Grained Counting with Crowd-Sourced Supervision

Crowd-sourcing is an increasingly popular tool for image analysis in ani...
research
05/18/2018

Adversarial Structure Matching Loss for Image Segmentation

The per-pixel cross-entropy loss (CEL) has been widely used in structure...
research
05/28/2018

Investigating Label Noise Sensitivity of Convolutional Neural Networks for Fine Grained Audio Signal Labelling

We measure the effect of small amounts of systematic and random label no...
research
11/25/2020

No Subclass Left Behind: Fine-Grained Robustness in Coarse-Grained Classification Problems

In real-world classification tasks, each class often comprises multiple ...

Please sign up or login with your details

Forgot password? Click here to reset