We introduce a method for efficiently crowdsourcing multiclass annotations in challenging, real world image datasets. Our method is designed to minimize the number of human annotations that are necessary to achieve a desired level of confidence on class labels. It is based on combining models of worker behavior with computer vision. Our method is general: it can handle a large number of classes, worker labels that come from a taxonomy rather than a flat list, and can model the dependence of labels when workers can see a history of previous annotations. Our method may be used as a drop-in replacement for the majority vote algorithms used in online crowdsourcing services that aggregate multiple human annotations into a final consolidated labe...
The creation of golden standard datasets is a costly business. Optimally more than one judgment per ...
Crowdsourced data annotation is noisier than annotation from trained workers. Previous work has sho...
The computational power is increasing day by day. Despite that, there are some tasks that are still...
We introduce a method for efficiently crowdsourcing multiclass annotations in challenging, real worl...
Distributing labeling tasks among hundreds or thousands of annotators is an increasingly important m...
We introduce a method to greatly reduce the amount of redundant annotations required when crowdsourc...
Labeling large datasets has become faster, cheaper, and easier with the advent of crowdsourcing ser...
International audienceLarge-scale annotated corpora have yielded impressive performance improvements...
© 2019 Dr. Yuan LiThis thesis explores aggregation methods for crowdsourced annotations. Crowdsourci...
The amount of digital image and video data keeps increasing at an ever-faster rate. While "big data"...
The creation of golden standard datasets is a costly business. Optimally more than one judgment per ...
Crowdsourcing is a popular cheap alternative in machine learning for gathering information from a se...
The success of deep learning in image recognition is substantially driven by large-scale, well-curat...
Real-world data for classification is often labeled by multiple annotators. For analyzing such data,...
This paper presents an aggregation approach that learns a regression model from crowdsourced annotat...
The creation of golden standard datasets is a costly business. Optimally more than one judgment per ...
Crowdsourced data annotation is noisier than annotation from trained workers. Previous work has sho...
The computational power is increasing day by day. Despite that, there are some tasks that are still...
We introduce a method for efficiently crowdsourcing multiclass annotations in challenging, real worl...
Distributing labeling tasks among hundreds or thousands of annotators is an increasingly important m...
We introduce a method to greatly reduce the amount of redundant annotations required when crowdsourc...
Labeling large datasets has become faster, cheaper, and easier with the advent of crowdsourcing ser...
International audienceLarge-scale annotated corpora have yielded impressive performance improvements...
© 2019 Dr. Yuan LiThis thesis explores aggregation methods for crowdsourced annotations. Crowdsourci...
The amount of digital image and video data keeps increasing at an ever-faster rate. While "big data"...
The creation of golden standard datasets is a costly business. Optimally more than one judgment per ...
Crowdsourcing is a popular cheap alternative in machine learning for gathering information from a se...
The success of deep learning in image recognition is substantially driven by large-scale, well-curat...
Real-world data for classification is often labeled by multiple annotators. For analyzing such data,...
This paper presents an aggregation approach that learns a regression model from crowdsourced annotat...
The creation of golden standard datasets is a costly business. Optimally more than one judgment per ...
Crowdsourced data annotation is noisier than annotation from trained workers. Previous work has sho...
The computational power is increasing day by day. Despite that, there are some tasks that are still...