TY - GEN
T1 - Learning from Noisy Labeled Data via Sharpen Prediction Loss and Re-Correction
AU - Wang, Juncheng
AU - Ren, Siyue
AU - Geng, Jie
N1 - Publisher Copyright:
© 2021 IEEE.
PY - 2021
Y1 - 2021
N2 - Deep learning has achieved excellent results in many applications with a large number of high-quality annotation datasets. However, it is difficult to obtain numerous high-quality labeled samples, since it may generate noisy labeled data during manually annotating. Deep neural network with noisy labeled data leads to overfitting a nd greatly affects t he performance. In order to overcome the issue, a deep model with sharpen prediction loss and re-correction is proposed for learning from noisy labeled data, which aims to modify the loss distributions of noise samples and clean samples, and eliminate noise samples by unsupervised clustering. In the proposed framework, the deep model is warmed up through several epochs, sharpen prediction loss is proposed to effectively measure the sample loss, and recorrection is utilized to separate noise and clean samples as well as predict the final l abels. Experimental results on two datasets with noisy labeled data demonstrate that our proposed model yields superior classification accuracies.
AB - Deep learning has achieved excellent results in many applications with a large number of high-quality annotation datasets. However, it is difficult to obtain numerous high-quality labeled samples, since it may generate noisy labeled data during manually annotating. Deep neural network with noisy labeled data leads to overfitting a nd greatly affects t he performance. In order to overcome the issue, a deep model with sharpen prediction loss and re-correction is proposed for learning from noisy labeled data, which aims to modify the loss distributions of noise samples and clean samples, and eliminate noise samples by unsupervised clustering. In the proposed framework, the deep model is warmed up through several epochs, sharpen prediction loss is proposed to effectively measure the sample loss, and recorrection is utilized to separate noise and clean samples as well as predict the final l abels. Experimental results on two datasets with noisy labeled data demonstrate that our proposed model yields superior classification accuracies.
KW - Gaussian Mixture Model
KW - Learning with Noisy Labels
KW - Loss Modeling
KW - Prediction Distribution
UR - http://www.scopus.com/inward/record.url?scp=85124002883&partnerID=8YFLogxK
U2 - 10.1109/ICCAIS52680.2021.9624662
DO - 10.1109/ICCAIS52680.2021.9624662
M3 - 会议稿件
AN - SCOPUS:85124002883
T3 - 10th International Conference on Control, Automation and Information Sciences, ICCAIS 2021 - Proceedings
SP - 537
EP - 542
BT - 10th International Conference on Control, Automation and Information Sciences, ICCAIS 2021 - Proceedings
PB - Institute of Electrical and Electronics Engineers Inc.
T2 - 10th International Conference on Control, Automation and Information Sciences, ICCAIS 2021
Y2 - 14 October 2021 through 17 October 2021
ER -