Accurate label refinement from multiannotator of remote sensing data
X Wang, L Chen, T Ban, D Lyu, Y Guan… - … on Geoscience and …, 2023 - ieeexplore.ieee.org
The remote sensing (RS) field has an increasing research interest in using deep learning
(DL) models to recognize kinds of RS data, leading to a great demand for training data …
(DL) models to recognize kinds of RS data, leading to a great demand for training data …
[PDF][PDF] The effects of autonomy and task meaning in algorithmic management of crowdwork
With the tremendous development of AI technologies, people will increasingly encounter
software algorithms that supervise their work. Algorithmic management is the term for AI that …
software algorithms that supervise their work. Algorithmic management is the term for AI that …
Selection of crowd in crowdsourcing for smart intelligent applications: A systematic mapping study
Crowdsourcing is a task‐solving model in which human crowd is hired to solve a particular
task. During the crowdsourcing process, the crowd selection is performed in order to select …
task. During the crowdsourcing process, the crowd selection is performed in order to select …
A truthful mechanism for time-bound tasks in IoT-based crowdsourcing with zero budget
V Kumar Singh, S Mishra - Multimedia Tools and Applications, 2024 - Springer
Crowdsourcing is a process of engaging a 'crowd'or a group of common people for
accomplishing the tasks. In this work, the time-bound tasks allocation problem in IoT-based …
accomplishing the tasks. In this work, the time-bound tasks allocation problem in IoT-based …
Performance of Human Annotators in Object Detection and Segmentation of Remotely Sensed Data
R Blushtein-Livnon, T Svoray, M Dorman - arXiv preprint arXiv:2409.10272, 2024 - arxiv.org
This study introduces a laboratory experiment designed to assess the influence of
annotation strategies, levels of imbalanced data, and prior experience, on the performance …
annotation strategies, levels of imbalanced data, and prior experience, on the performance …
Multicriteria‐Based Crowd Selection Using Ant Colony Optimization
Internet‐enabled technologies have provided a way for people to communicate and
collaborate with each other. The collaboration and communication made crowdsourcing an …
collaborate with each other. The collaboration and communication made crowdsourcing an …
Rating mechanisms for sustainability of crowdsourcing platforms
Crowdsourcing leverages the diverse skill sets of large collections of individual contributors
to solve problems and execute projects, where contributors may vary significantly in …
to solve problems and execute projects, where contributors may vary significantly in …
A budget-limited mechanism for category-aware crowdsourcing systems
Y Luo, N Jennings - 2020 - repository.lboro.ac.uk
Crowdsourcing harnesses human effort to solve computer-hard problems. Such tasks often
have different levels of difficulty and workers have varying levels of skill at completing them …
have different levels of difficulty and workers have varying levels of skill at completing them …
TWLR: A novel truth inference approach based on worker representations for crowdsourcing in the low redundancy situation
A redundancy-based strategy is widely employed by assigning each task to multiple workers
and then inferring the correct answer (called truth) for each task in crowdsourcing. Most …
and then inferring the correct answer (called truth) for each task in crowdsourcing. Most …
Quantifying Worker Reliability for Crowdsensing Applications: Robust Feedback Rating and Convergence
H Xie, JCS Lui - IEEE Transactions on Mobile Computing, 2021 - ieeexplore.ieee.org
Worker reliability estimation is a fundamental problem in crowdsensing applications. This
paper proposes a robust feedback rating approach to estimate worker reliability explicitly. In …
paper proposes a robust feedback rating approach to estimate worker reliability explicitly. In …