Asoke K Nandi
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Explore the profile of Asoke K Nandi including associated specialties, affiliations and a list of published articles.
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55
Citations
350
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Recent Articles
1.
Wang J, Sun C, Nandi A, Yan R, Chen X
IEEE Trans Neural Netw Learn Syst
. 2025 Mar;
PP.
PMID: 40030581
Deep learning has attracted much attention in bearing fault diagnosis because of its high precision and end-to-end modules. However, in real industrial scenarios, some complex mechanical structures and working environments...
2.
Song J, Wang Z, Xue K, Chen Y, Guo G, Li M, et al.
Sci Rep
. 2025 Feb;
15(1):4864.
PMID: 39929950
Thermal protection materials are widely used in the aerospace field, where detecting internal defects is crucial for ensuring spacecraft structural integrity and safety in extreme temperature environments. Existing detection models...
3.
Xue K, Zhang W, Song J, Wang Z, Jin Y, Nandi A, et al.
Opt Express
. 2024 Nov;
32(16):27303-27316.
PMID: 39538570
The feasibility of employing a continuous-wave terahertz detection system for non-contact and non-destructive testing (NDT) in multi-layered bonding structures is assessed in this study. The paper introduces the detection principle...
4.
Hu C, Wu J, Sun C, Chen X, Nandi A, Yan R
IEEE Trans Cybern
. 2024 Oct;
55(1):221-233.
PMID: 39471118
Intelligent anomaly detection (AD) methods have achieved much successes in machinery condition monitoring. However, the underlying independent and identically distributed assumption restricts their application scopes to steady operating conditions. False...
5.
Wang Y, Luo B, Zhang Y, Xiao Z, Wang M, Niu Y, et al.
IEEE J Biomed Health Inform
. 2024 Sep;
28(12):7311-7321.
PMID: 39298305
There are relatively few studies on the multi-coil reconstruction task of existing Magnetic Resonance Imaging (MRI) methods, as there are problems with insufficient reconstruction details, high memory occupation during training,...
6.
Mahini R, Zhang G, Parviainen T, Dusing R, Nandi A, Cong F, et al.
Brain Topogr
. 2024 Aug;
37(6):1010-1032.
PMID: 39162867
In event-related potential (ERP) analysis, it is commonly assumed that individual trials from a subject share similar properties and originate from comparable neural sources, allowing reliable interpretation of group-averages. Nevertheless,...
7.
Ma L, Deng W, Bai Y, Du Z, Xiao M, Wang L, et al.
IEEE/ACM Trans Comput Biol Bioinform
. 2023 Oct;
20(6):3772-3785.
PMID: 37812548
Phages are the functional viruses that infect bacteria and they play important roles in microbial communities and ecosystems. Phage research has attracted great attention due to the wide applications of...
8.
Hidden-information extraction from layered structures through terahertz imaging down to ultralow SNR
Cui Y, Xu Y, Han D, Wang X, Shen Z, Hou Y, et al.
Sci Adv
. 2023 Oct;
9(40):eadg8435.
PMID: 37792928
Noninvasive inspection of layered structures has remained a long-standing challenge for time-resolved imaging techniques, where both resolution and contrast are compromised by prominent signal attenuation, interlayer reflections, and dispersion. Our...
9.
Lei T, Sun R, Du X, Fu H, Zhang C, Nandi A
IEEE J Biomed Health Inform
. 2023 Apr;
PP.
PMID: 37021889
Convolutional neural networks (CNNs) have achieved significant success in medical image segmentation. However, they also suffer from the requirement of a large number of parameters, leading to a difficulty of...
10.
Lei T, Zhang D, Du X, Wang X, Wan Y, Nandi A
IEEE Trans Med Imaging
. 2022 Nov;
42(5):1265-1277.
PMID: 36449588
Popular semi-supervised medical image segmentation networks often suffer from error supervision from unlabeled data since they usually use consistency learning under different data perturbations to regularize model training. These networks...