Involving members of the public in image classification tasks that can be tricky to automate is increasingly recognized as a way to complete large amounts of these tasks and promote citizen involvement in science. While this labor is usually provided for free, it is still limited, making it important for researchers to use volunteer contributions as efficiently as possible. Using volunteer labor efficiently becomes complicated when individual tasks are assigned to multiple volunteers to increase confidence that the correct classification has been reached. In this paper, we develop a system to decide when enough information has been accumulated to confidently declare an image to be classified and remove it from circulation. We use a Bayesian...
We present an incremental Bayesian model that resolves key issues of crowd size and data quality for...
Citizen science projects face a dilemma in relying on contributions from volunteers to achieve their...
Simple consensus methods are often used in crowdsourcing studies to label cases when data are provid...
Involving members of the public in image classification tasks that can be tricky to automate is incr...
Involving members of the public in image classification tasks that can be tricky to automate is incr...
Crowdsourcing can efficiently complete tasks that are difficult to automate, but the quality of crow...
Volunteered geographic information (VGI) is the assembly of spatial information based on public inpu...
Volunteer citizen scientists are an invaluable resource for classifying large numbers of images that...
Public participation in scientific activities, often called citizen science, offers a possibility to...
In the past few years, volunteers have produced geographic information of different kinds, using a v...
The idea that closer things are more related than distant things, known as Tobler's first law of geo...
In the past few years, volunteers have produced geographic information of different kinds, using a v...
Crowdsourcing is a new approach for solving data processing problems for which conventional methods ...
Crowdsourcing is a new approach to performing tasks, with a group of volunteers rather than experts....
In the past few years, volunteers have produced geographic information of different kinds, using a v...
We present an incremental Bayesian model that resolves key issues of crowd size and data quality for...
Citizen science projects face a dilemma in relying on contributions from volunteers to achieve their...
Simple consensus methods are often used in crowdsourcing studies to label cases when data are provid...
Involving members of the public in image classification tasks that can be tricky to automate is incr...
Involving members of the public in image classification tasks that can be tricky to automate is incr...
Crowdsourcing can efficiently complete tasks that are difficult to automate, but the quality of crow...
Volunteered geographic information (VGI) is the assembly of spatial information based on public inpu...
Volunteer citizen scientists are an invaluable resource for classifying large numbers of images that...
Public participation in scientific activities, often called citizen science, offers a possibility to...
In the past few years, volunteers have produced geographic information of different kinds, using a v...
The idea that closer things are more related than distant things, known as Tobler's first law of geo...
In the past few years, volunteers have produced geographic information of different kinds, using a v...
Crowdsourcing is a new approach for solving data processing problems for which conventional methods ...
Crowdsourcing is a new approach to performing tasks, with a group of volunteers rather than experts....
In the past few years, volunteers have produced geographic information of different kinds, using a v...
We present an incremental Bayesian model that resolves key issues of crowd size and data quality for...
Citizen science projects face a dilemma in relying on contributions from volunteers to achieve their...
Simple consensus methods are often used in crowdsourcing studies to label cases when data are provid...