AnnoVate: Revolutionizing Data Annotation with Automated Labeling Technique
-
Published:2024-05-22
Issue:2
Volume:12
Page:24-30
-
ISSN:2309-3978
-
Container-title:VFAST Transactions on Software Engineering
-
language:
-
Short-container-title:VFAST trans. softw. eng.
Author:
Qazi FarheenORCID, Muhammad Naseem , Aslam SonishORCID, Zainab Attaria , Muhammad Ali Jan , Syed Salman Junaid
Abstract
This research introduces AnnoVate, an innovative web application designed to automate the labor-intensive task of object annotation for computer vision applications. Focused on image annotation, the study addresses the escalating demand for data refinement and labeling in the field of artificial intelligence (AI). Leveraging the power of YOLOv8 (You Only Look Once), a high-performance object detection algorithm, AnnoVate minimizes human intervention while achieving an impressive 85% overall accuracy in object detection. The methodology integrates active learning, allowing labelers to selectively prioritize uncertain data during the labeling process. An iterative training approach continuously refines the model, creating a self-improving loop that enhances accuracy over successive loops. The system's flexibility enables users to export labeled datasets for their preferred AI model architectures. AnnoVate not only overcomes the limitations of traditional labeling methods but also establishes a collaborative human-machine interaction paradigm, setting the stage for further advancements in computer vision.
Publisher
VFAST Research Platform
Reference20 articles.
1. M. Desmond, M. Muller, Z. Ashktorab, C. Dugan, E. Duesterwald, K. Brimijoin, C. Finegan-Dollak et al., "Increasing the speed and accuracy of data labeling through an ai assisted interface," in 26th International Conference on Intelligent User Interfaces, 2021, pp. 392-401. 2. M. Desmond, E. Duesterwald, K. Brimijoin, M. Brachman, and Q. Pan, "Semi-automated data labeling," in NeurIPS 2020 Competition and Demonstration Track, PMLR, 2021, pp. 156-169. 3. M. Knaeble, M. Nadj, and A. Maedche, "Oracle or Teacher? A Systematic Overview of Research on Interactive Labeling for Machine Learning," Wirtschaftsinformatik (Zentrale Tracks), 2020, pp. 2-16. 4. C. Schreiner, H. Zhang, C. Guerrero, K. Torkkola, and K. Zhang, "A semi-automatic data annotation tool for driving simulator data reduction," in Driving Simulation Conference, North America, 2007, p. 9. 5. T. Fredriksson, J. Bosch, and H. H. Olsson, "Machine Learning Models for Automatic Labeling: A Systematic Literature Review," in ICSOFT, 2020, pp. 552-561.
|
|