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  1. 81

    Towards robust sensing and recognition : from statistical learning to transfer learning by Yang, Jianfei

    Published 2020
    “…To this end, we propose a Siamese deep model with both spatial and temporal feature extractors, which discards the intrinsic noises of CSI data during feature learning. The proposed method also allows user to fine-tune the system using few samples, and thus is user-friendly. …”
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    Thesis-Doctor of Philosophy
  2. 82

    A study on open set recognition methods by Sun, Xin

    Published 2021
    “…To have a shorter running time, we proposed an OSR method, called Discriminative Loss. We combine the proposed loss function with the Softmax loss function, which is used in most Convolutional Neural Networks (CNNs), to force learned features in different classes to be close to different centroids for Gaussian modeling. …”
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    Thesis-Doctor of Philosophy
  3. 83

    Interactive learning on ECG by Zhu, Yu Ting

    Published 2024
    “…This report demonstrates the various interactive learning methods with the implementation of hardware components and software development. …”
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    Final Year Project (FYP)
  4. 84

    Multifidelity Methods for Design of Transition MetalComplexes by Janet, Jon Paul

    Published 2024
    “…Multiple sources of uncertainty that would limit the application of these methods to TM complexes are addressed. Surrogate models are trained to estimate system-specific DFT uncertainty by including data from DFT calculations with different fractions of exact exchange, and a novel uncertainty metric for data-driven discovery is proposed that quantifies the ability of ANNs to generalize to unseen data based on similarity in the learned latent space. …”
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    Thesis
  5. 85

    From public health to AI safety: improving machine learning approaches by collecting, selecting, or reducing the need for high-quality data by Brauner, J

    Published 2024
    “…In the process, we develop novel machine learning (ML) methods to tackle various challenges. …”
    Thesis
  6. 86

    Biometric contrastive learning for data-efficient deep learning from electrocardiographic images by Sangha, V, Khunte, A, Holste, G, Mortazavi, BJ, Wang, Z, Oikonomou, EK, Khera, R

    Published 2024
    “…We compared BCL with ImageNet initialization and general-purpose self-supervised contrastive learning for images (simCLR).</p> <p><strong>Results:&nbsp;</strong>While with 100% labeled training data, BCL performed similarly to other approaches for detecting AF/Gender/LVEF&thinsp;&lt;&thinsp;40% with an AUROC of 0.98/0.90/0.90 in the held-out test sets, it consistently outperformed other methods with smaller proportions of labeled data, reaching equivalent performance at 50% of data. …”
    Conference item
  7. 87

    Visual recognition using deep learning (video captioning using deep learning) by Thong, Jing Lin

    Published 2021
    “…Thereafter, reinforcement learning techniques were used to further optimise the model. …”
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    Final Year Project (FYP)
  8. 88

    The rise of deep learning in cyber security: Bibliometric analysis of deep learning and malware by Nur Khairani, Kamarudin, Ahmad Firdaus, Zainal Abidin, Mohd Zamri, Osman, Alanda, Alde, Erianda, Aldo, Shahreen, Kasim, Mohd Faizal, Ab Razak

    Published 2024
    “…Deep learning is a machine learning technology that allows computational models to learn via experience, mimicking human cognitive processes. …”
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    Article
  9. 89

    The devil is in the details: an evaluation of recent feature encoding methods by Chatfield, K, Lempitsky, V, Vedaldi, A, Zisserman, A

    Published 2011
    “…While several authors have reported very good results on the challenging PASCAL VOC classification data by means of these new techniques, differences in the feature computation and learning algorithms, missing details in the description of the methods, and different tuning of the various components, make it impossible to compare directly these methods and hard to reproduce the results reported. …”
    Conference item
  10. 90

    Robust partial-to-partial point cloud registration in a full range by Pan, Liang, Cai, Zhongang, Liu, Ziwei

    Published 2024
    “…Extensive experiments show that GMCNet outperforms previous state-of-the-art methods for PPR.…”
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    Journal Article
  11. 91

    Image retrieval with deep learning by Tan, Joe Chin Yong

    Published 2017
    “…The query images are distorted with the 3 methods mentioned with different values of sigma, variance and quality. …”
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    Final Year Project (FYP)
  12. 92

    Efficient rare event sampling with unsupervised normalizing flows by Asghar, Solomon, Pei, Qing-Xiang, Volpe, Giorgio, Ni, Ran

    Published 2025
    “…Classical computational methods to sample rare events remain prohibitively inefficient and are bottlenecks for enhanced samplers that require prior data. …”
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    Journal Article
  13. 93

    Fish classification and deep learning by Zhang, Dawei

    Published 2023
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    Thesis-Master by Coursework
  14. 94

    Transfer learning on UR robots by Yu, Xiwei

    Published 2024
    “…As neural networks and deep learning develop, researchers are continually exploring the capabilities and potential of using data-driven methods to control robots. …”
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    Final Year Project (FYP)
  15. 95

    Descriptor learning for efficient retrieval by Philbin, J, Isard, M, Sivic, J, Zisserman, A

    Published 2010
    “…Scalable, stochastic gradient methods are used for the optimization.</p> <br> <p>For the case of particular object retrieval, we demonstrate impressive gains in performance on a ground truth dataset: our learnt 32-D descriptor without spatial re-ranking outperforms a baseline method using 128-D SIFT descriptors with spatial re-ranking.…”
    Conference item
  16. 96

    Online learning for search and classification by Nguyen, Thanh Tam

    Published 2014
    “…(i) Feature selection: we have investigated a number of newly supervised term weighting methods to improve the performance of text classification; (ii) Online classification: we have proposed several online learning algorithms that can be used for topic classification; (iii) Two-view online learning: we have proposed a two-view online learning algorithm, which can work on two-view datasets; (iv) Online learning-to-rank: for search engine, we have proposed an online learning-to-rank algorithm, which was to learn a scoring function to re-rank the search result.…”
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    Thesis
  17. 97

    Optimization strategies for federated learning by Zhang, Tinghao

    Published 2025
    “…We achieve this through a deep reinforcement learning-based scheduling strategy and an optimized bandwidth allocation method, enabling FL to achieve target accuracy with reduced system costs. …”
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    Thesis-Doctor of Philosophy
  18. 98

    Reinforcement learning for robot assembly by Vuong Quoc Nghia

    Published 2024
    “…Finally, this thesis examines methods to narrow the reality gap - the fundamental problem in sim-to-real reinforcement learning. …”
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    Thesis-Doctor of Philosophy
  19. 99

    Vision language representation learning by Yang, Xiaofeng

    Published 2023
    “…Despite its significance, learning effective vision language representation remains challenging due to several reasons. …”
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    Thesis-Doctor of Philosophy
  20. 100

    iTD3-CLN: learn to navigate in dynamic scene through Deep Reinforcement Learning by Jiang, Haoge, Esfahani, Mahdi Abolfazli, Wu, Keyu, Wan, Kong-wah, Heng, Kuan-kian, Wang, Han, Jiang, Xudong

    Published 2022
    “…In contrast to the conventional methods such as the DWA, our approach is found superior in the following ways: no need for prior knowledge of the environment and metric map, lower reliance on an accurate sensor, learning emergent behavior in dynamic scene that is intuitive, and more remarkably, able to transfer to the real robot without further fine-tuning. …”
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    Journal Article