Please use this identifier to cite or link to this item: https://hdl.handle.net/2440/139216
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Type: Conference paper
Title: Instance-Dependent Noisy Label Learning via Graphical Modelling
Author: Garg, A.
Nguyen, C.
Felix, R.
Do, T.-T.
Carneiro, G.
Citation: Proceedings of the IEEE/CVF Winter Conference on Applications of Computer Vision (WACV 2023), 2023, pp.2287-2297
Publisher: IEEE
Publisher Place: Online
Issue Date: 2023
Series/Report no.: IEEE Winter Conference on Applications of Computer Vision
ISBN: 9781665493475
ISSN: 2472-6737
2642-9381
Conference Name: IEEE/CVF Winter Conference on Applications of Computer Vision (WACV) (2 Jan 2023 - 7 Jan 2023 : Waikoloa, HI, USA)
Statement of
Responsibility: 
Arpit Garg, Cuong Nguyen, Rafael Felix, Thanh-Toan Do, and Gustavo Carneiro
Abstract: Noisy labels are unavoidable yet troublesome in the ecosystem of deep learning because models can easily overfit them. There are many types of label noise, such as symmetric, asymmetric and instance-dependent noise (IDN), with IDN being the only type that depends on image information. Such dependence on image information makes IDN a critical type of label noise to study, given that labelling mistakes are caused in large part by insufficient or ambiguous information about the visual classes present in images. Aiming to provide an effective technique to address IDN, we present a new graphical modelling approach called InstanceGM, that combines discriminative and generative models. The main contributions of InstanceGM are: i) the use of the continuous Bernoulli distribution to train the generative model, offering significant training advantages, and ii) the exploration of a state-of-the-art noisy-label discriminative classifier to generate clean labels from instancedependent noisy-label samples. InstanceGM is competitive with current noisy-label learning approaches, particularly in IDN benchmarks using synthetic and real-world datasets, where our method shows better accuracy than the competitors in most experiments¹.
Rights: ©2023 IEEE
DOI: 10.1109/wacv56688.2023.00232
Grant ID: http://purl.org/au-research/grants/arc/DP180103232
http://purl.org/au-research/grants/arc/FT190100525
Published version: https://ieeexplore.ieee.org/xpl/conhome/10030081/proceeding
Appears in Collections:Australian Institute for Machine Learning publications
Computer Science publications

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