List of Topics:
Location Research Breakthrough Possible @S-Logix pro@slogix.in

Office Address

Social List

Unsupervised domain adaptation for COVID-19 classification based on balanced slice Wasserstein distance - 2023

unsupervised-domain-adaptation-for-covid-19-classification-based-on-balanced-slice-Wasserstein-distance.jpg

Research Paper On Unsupervised domain adaptation for COVID-19 classification based on balanced slice Wasserstein distance

Research Area:  Machine Learning

Abstract:

The reliable and fast detection of cracks is crucial for assessing the condition and maintaining civil infrastructure. However, due to diverse construction materials, imaging conditions, and environmental interference, there exists a domain shift between crack images collected from civil infrastructure. This shift results in significant performance drops of crack detection models trained on one dataset when applied to another, limiting their cross-dataset applicability. To address this issue, this paper proposes DACrack, an unsupervised domain adaptation framework for crack detection of civil infrastructure. The proposed method performs domain adaptation at the input, feature, and output levels using contrastive mechanisms, adversarial learning, and variational autoencoders. Extensive experiments demonstrate the effectiveness and robustness of the proposed method for cross-dataset crack detection. By mitigating the impact of domain shift, DACrack offers a more reliable and accurate solution for assessing the condition of civil infrastructure.

Keywords:  
slice Wasserstein distance
COVID-19 classification

Author(s) Name:  Xingxing Weng,Yuchun Huang,Yanan Li,He Yang,Shaohuai Yu

Journal name:  Computers in Biology and Medicine

Conferrence name:  

Publisher name:  ScienceDirect

DOI:  10.1016/j.autcon.2023.104939

Volume Information:  Volume 153,(2023)