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Universal Noise Annotation: Unveiling the Impact of Noisy annotation on Object Detection

Authors :
Ryoo, Kwangrok
Jo, Yeonsik
Lee, Seungjun
Kim, Mira
Jo, Ahra
Kim, Seung Hwan
Kim, Seungryong
Lee, Soonyoung
Publication Year :
2023

Abstract

For object detection task with noisy labels, it is important to consider not only categorization noise, as in image classification, but also localization noise, missing annotations, and bogus bounding boxes. However, previous studies have only addressed certain types of noise (e.g., localization or categorization). In this paper, we propose Universal-Noise Annotation (UNA), a more practical setting that encompasses all types of noise that can occur in object detection, and analyze how UNA affects the performance of the detector. We analyzed the development direction of previous works of detection algorithms and examined the factors that impact the robustness of detection model learning method. We open-source the code for injecting UNA into the dataset and all the training log and weight are also shared.<br />Comment: appendix and code : https://github.com/Ryoo72/UNA

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2312.13822
Document Type :
Working Paper