460 research outputs found
Impact of COVID-19 on Cross-cultural Learning from Malaysia-to-Japan Research Exchange
Outbound research exchange program to Japanese Higher Education Institutes is very popular among Malaysian researchers. During the exchange program, bilateral cultural learning occurs between researchers from Malaysia and Japan. Mutual cultural understanding accelerates the respect for foreign cultures and enables cultural diversity to flourish in the globalized world. However, the COVID-19 outbreak has shattered the traditional cultural learning paradigm. This study analyzes the cultural components of the Japanese exchange program disrupted by the pandemic. A survey with a Likert scale of 1 to 5 was conducted to investigate the disruption of continuous cultural learning in terms of lifestyle, language, social value, and trends experienced by Malaysian researchers after the pandemic. The results show that the Japanese social values are influencing Malaysian researchers and the disruption caused by the pandemic is significant
Research in Polymer Chemistry using Local Raw Materials
An inaugural lecture delivered at the University of Malaya, 11 Febuary 2004
Applications of Microcapsules in Self-Healing Polymeric Materials
Self-healing polymeric materials have a great potential to be explored and utilized in many applications such as engineering and surface coating. Various smart materials with self-healing ability and unique self-healing mechanisms have been reported in recent publications. Currently, the most widely employed technique is by embedding microcapsules that contain a healing agent into the bulk polymer matrix. When cracks develop in the polymer matrix, the curing agent is released from the microcapsules to cross-link and repair the cracks. Microencapsulation of the healing agent in the core can be achieved by in situ polymerizing of shell material. This chapter presents a general review on self-healing materials, and particularly, self-healing of epoxy matrices that includes epoxy composite and epoxy coating by microencapsulation technique. Microencapsulation processes, including types of resin used, processing parameters such as core/shell ratio, concentration of emulsifiers, viscosities of aqueous and organic phases and stirring rate are discussed
A Hybrid SFANC-FxNLMS Algorithm for Active Noise Control based on Deep Learning
The selective fixed-filter active noise control (SFANC) method selecting the
best pre-trained control filters for various types of noise can achieve a fast
response time. However, it may lead to large steady-state errors due to
inaccurate filter selection and the lack of adaptability. In comparison, the
filtered-X normalized least-mean-square (FxNLMS) algorithm can obtain lower
steady-state errors through adaptive optimization. Nonetheless, its slow
convergence has a detrimental effect on dynamic noise attenuation. Therefore,
this paper proposes a hybrid SFANC-FxNLMS approach to overcome the adaptive
algorithm's slow convergence and provide a better noise reduction level than
the SFANC method. A lightweight one-dimensional convolutional neural network
(1D CNN) is designed to automatically select the most suitable pre-trained
control filter for each frame of the primary noise. Meanwhile, the FxNLMS
algorithm continues to update the coefficients of the chosen pre-trained
control filter at the sampling rate. Owing to the effective combination of the
two algorithms, experimental results show that the hybrid SFANC-FxNLMS
algorithm can achieve a rapid response time, a low noise reduction error, and a
high degree of robustness
Knee cartilage segmentation using multi purpose interactive approach
Interactive model incorporates expert interpretation and automated segmentation. However, cartilage has complicated structure, indistinctive tissue contrast in magnetic resonance image of knee hardens image review and existing interactive methods are sensitive to various technical problems such as bi-label segmentation problem, shortcut problem and sensitive to image noise. Moreover, redundancy issue caused by non-cartilage labelling has never been tackled. Therefore, Bi-Bezier Curve Contrast Enhancement is developed to improve visual quality of magnetic resonance image by considering brightness preservation and contrast enhancement control. Then, Multipurpose Interactive Tool is developed to handle users’ interaction through Label Insertion Point approach. Approximate NonCartilage Labelling system is developed to generate computerized non-cartilage label, while preserves cartilage for expert labelling. Both computerized and interactive labels initialize Random Walks based segmentation model. To evaluate contrast enhancement techniques, Measure of Enhancement (EME), Absolute Mean Brightness Error (AMBE) and Feature Similarity Index (FSIM) are used. The results suggest that Bi-Bezier Curve Contrast Enhancement outperforms existing methods in terms of contrast enhancement control (EME = 41.44±1.06), brightness distortion (AMBE = 14.02±1.29) and image quality (FSIM = 0.92±0.02). Besides, implementation of Approximate Non-Cartilage Labelling model has demonstrated significant efficiency improvement in segmenting normal cartilage (61s±8s, P = 3.52 x 10-5) and diseased cartilage (56s±16s, P = 1.4 x 10-4). Finally, the proposed labelling model has high Dice values (Normal: 0.94±0.022, P = 1.03 x 10-9; Abnormal: 0.92±0.051, P = 4.94 x 10-6) and is found to be beneficial to interactive model (+0.12)
ARABIDOPSIS JUMONJI HISTONE DEMETHYLASES REGULATE FLORAL TRANSITION THROUGH THE FLORAL REPRESSOR FLC
Ph.DDOCTOR OF PHILOSOPH
Active Noise Control in The New Century: The Role and Prospect of Signal Processing
Since Paul Leug's 1933 patent application for a system for the active control
of sound, the field of active noise control (ANC) has not flourished until the
advent of digital signal processors forty years ago. Early theoretical
advancements in digital signal processing and processors laid the groundwork
for the phenomenal growth of the field, particularly over the past
quarter-century. The widespread commercial success of ANC in aircraft cabins,
automobile cabins, and headsets demonstrates the immeasurable public health and
economic benefits of ANC. This article continues where Elliott and Nelson's
1993 Signal Processing Magazine article and Elliott's 1997 50th anniversary
commentary~\cite{kahrs1997past} on ANC left off, tracing the technical
developments and applications in ANC spurred by the seminal texts of Nelson and
Elliott (1991), Kuo and Morgan (1996), Hansen and Snyder (1996), and Elliott
(2001) since the turn of the century. This article focuses on technical
developments pertaining to real-world implementations, such as improving
algorithmic convergence, reducing system latency, and extending control to
non-stationary and/or broadband noise, as well as the commercial transition
challenges from analog to digital ANC systems. Finally, open issues and the
future of ANC in the era of artificial intelligence are discussed.Comment: Inter-Noise 202
Partially Randomizing Transformer Weights for Dialogue Response Diversity
Despite recent progress in generative open-domain dialogue, the issue of low
response diversity persists. Prior works have addressed this issue via either
novel objective functions, alternative learning approaches such as variational
frameworks, or architectural extensions such as the Randomized Link (RL)
Transformer. However, these approaches typically entail either additional
difficulties during training/inference, or a significant increase in model size
and complexity. Hence, we propose the \underline{Pa}rtially
\underline{Ra}ndomized trans\underline{Former} (PaRaFormer), a simple extension
of the transformer which involves freezing the weights of selected layers after
random initialization. Experimental results reveal that the performance of the
PaRaformer is comparable to that of the aforementioned approaches, despite not
entailing any additional training difficulty or increase in model complexity
An Empirical Bayes Framework for Open-Domain Dialogue Generation
To engage human users in meaningful conversation, open-domain dialogue agents
are required to generate diverse and contextually coherent dialogue. Despite
recent advancements, which can be attributed to the usage of pretrained
language models, the generation of diverse and coherent dialogue remains an
open research problem. A popular approach to address this issue involves the
adaptation of variational frameworks. However, while these approaches
successfully improve diversity, they tend to compromise on contextual
coherence. Hence, we propose the Bayesian Open-domain Dialogue with Empirical
Bayes (BODEB) framework, an empirical bayes framework for constructing an
Bayesian open-domain dialogue agent by leveraging pretrained parameters to
inform the prior and posterior parameter distributions. Empirical results show
that BODEB achieves better results in terms of both diversity and coherence
compared to variational frameworks
A Sequence Matching Network for Polyphonic Sound Event Localization and Detection
Polyphonic sound event detection and direction-of-arrival estimation require
different input features from audio signals. While sound event detection mainly
relies on time-frequency patterns, direction-of-arrival estimation relies on
magnitude or phase differences between microphones. Previous approaches use the
same input features for sound event detection and direction-of-arrival
estimation, and train the two tasks jointly or in a two-stage transfer-learning
manner. We propose a two-step approach that decouples the learning of the sound
event detection and directional-of-arrival estimation systems. In the first
step, we detect the sound events and estimate the directions-of-arrival
separately to optimize the performance of each system. In the second step, we
train a deep neural network to match the two output sequences of the event
detector and the direction-of-arrival estimator. This modular and hierarchical
approach allows the flexibility in the system design, and increase the
performance of the whole sound event localization and detection system. The
experimental results using the DCASE 2019 sound event localization and
detection dataset show an improved performance compared to the previous
state-of-the-art solutions.Comment: to be published in 2020 IEEE International Conference on Acoustics,
Speech and Signal Processing (ICASSP
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