Network


Latest external collaboration on country level. Dive into details by clicking on the dots.

Hotspot


Dive into the research topics where Ooi Shih Yin is active.

Publication


Featured researches published by Ooi Shih Yin.


Journal of Visual Communication and Image Representation | 2010

A secure digital camera based fingerprint verification system

Bee Yan Hiew; Andrew Beng Jin Teoh; Ooi Shih Yin

Contemporary fingerprint system uses solid flat sensor which requires contact of the finger on a platen surface. This often results in several problems such as image deformation, durability weakening in the sensor, latent fingerprint issues which can lead to forgery and hygienic problems. On the other hand, biometric characteristics cannot be changed; therefore, the loss of privacy is permanent if they are ever compromised. Coupled with template protection mechanism, a touch-less fingerprint verification system is further provoked. In this issue, a secure end-to-end touch-less fingerprint verification system is presented. The fingerprint image captured with a digital camera is first pre-processed via the proposed pre-processing algorithm to reduce the problems appear in the image. Then, Multiple Random Projections-Support Vector Machine (MRP-SVM) is proposed to secure fingerprint template while improving system performance.


information assurance and security | 2011

State of the art: Signature verification system

Tee Wilkin; Ooi Shih Yin

This paper presents a review of some online/dynamic and offline/static signature verification system that have been proposed from year 2000 to 2010. There are numerous signature verification systems algorithms and methods been proposed in the last decade. This paper will mainly focus on discussing the signature verification techniques from year 2000 onwards to make a novice summary and conclusion for them.


international conference on signal and image processing applications | 2015

Face recognition via semi-supervised discriminant local analysis

Goh Fan Ling; Pang Ying Han; Khor Ean Yee; Ooi Shih Yin

Semi-supervised learning approach is a fusion approach of supervised and unsupervised learning. Semi-supervised approach performs data learning from a limited number of available labelled training images along with a large pool of unlabelled data. Semi-supervised discriminant analysis (SDA) is one of the popular semi-supervised techniques. However, there is room for improvement. SDA resides in the illumination and local change of the face features. Hence, it is hardly to guarantee its performance if there are illumination and local changes on the images. This paper presents an improved version of SDA, termed as Semi-Supervised Discriminant Local Analysis (SDLA). In this proposed technique, a local descriptor is amalgamated with SDA. Hence, SDLA could possess the capabilities of both the local descriptor and SDA, in such a way that SDLA utilizes limited number of labelled training data and huge pool of unlabelled data to optimally capture local discriminant features of face data. The empirical results demonstrate that SDLA shows promising performance in both normal and makeup face authentication.


international colloquium on signal processing and its applications | 2015

Semi-supervised generic descriptor in face recognition

Pang Ying Han; Ooi Shih Yin; Goh Fan Ling

Supervised learning techniques are preferable in face recognition for their pleasant data discriminating capability. However, their performance just can be assured if and only if there are sufficient labelled training images available. Practically, it always happens that only a small number of labelled training images available due to costly and time consuming labelling process. On the other hand, a large pool of unlabeled data could be easily obtained through public databases like Google or Flickr. Hence, semi-supervised learning is an alternative direction in face recognition. Semi-supervised techniques utilize limited labelled training images and huge amount of unlabeled training data for data learning. This paper presents a new semi-supervised technique, namely Semi-supervised Generic Descriptor (SSGD). SSGD uses labelled training images to compute the null space of class scatter vector and generate class generic descriptors to represent each class. Besides that, unlabelled training images are exploited to obtain more information about face data structure. The empirical results demonstrate that SSGD shows relatively promising performance in face verification.


International Conference on Advanced Engineering  Theory and Applications | 2016

Independent Statistical Descriptor in Face Recognition

Pang Ying Han; Goh Fan Ling; Ooi Shih Yin

This paper devises a filter bank approach to extract the local structure knowledge of a face image by computing its probability distribution function from the filter responses. Independent Component Analysis (ICA) filters are embraced in this work. Considering the limitation of ICA filter learning in handling the image conditions with uncontrolled facial expressions, illuminations, aging, etc., we proposed an independent statistical descriptor, coined ISD, in this paper with the aim to handle the rampant images. ISD intensifies ICA response invariance through hashing the filter responses by encoding the relation between each response element and its neighbour and then block-wise histogramming the output. In addition, an overlapping average pooling is executed to regulate the histogram features, prior to whitening PCA compression. The good performance of ISD descriptors has been extensively corroborated in the empirical results on face recognition.


international conference on signal and image processing applications | 2015

Intelligent web crawler for file safety inspection

Ling Cong Xiang; Ooi Shih Yin; Pang Ying Han

The Internet has always been growing with all the contents and information added by different types of users. Without proper storage and indexing, these contents can easily be lost in the sea of information housed by the Internet. Hence, an automated program, known as the web crawler is used to index all the contents added to the Internet. With proper configurations and settings, a web crawler can be used for other purposes besides web indexing, which include downloading files from the web. Millions or billions of files are uploaded on the Internet and for most of the sites which host these files, there are no direct indication of whether the file is safe and free of malicious codes. Therefore, this paper aims to provide a construction of a web crawler which crawls all the pages in a given website domain, and download all the possible downloadable files linked to those pages, for the purpose of file safety inspection.


ieee international conference on control system computing and engineering | 2015

Can subspace based learning approach perform on makeup face recognition

Khor Ean Yee; Pang Ying Han; Ooi Shih Yin; Wee Kuok Kwee

The impacts of facial makeup on automated face recognition system have received attention recently and studies have shown that facial cosmetics can compromise the accuracy of current face recognition techniques. Hence, there are groups of researchers endeavoring to develop the face recognition systems that are robust to facial makeup. In this work, the literatures on various techniques proposed to deal with facial makeup are reviewed. At the same time, we present the findings of subspace based learning approach in makeup face recognition the performance comparison of local descriptors and subspace learning approaches.


international conference on neural information processing | 2014

Wavelet Based SDA for Face Recognition

Goh Fan Ling; Pang Ying Han; Liew Yee Ping; Ooi Shih Yin; Loo Chu Kiong

Semi-supervised discriminant analysis (SDA) is a popular semi-supervise learning technique for limited labelled training sample problem in face recognition. However, SDA resides in the illumination variations and noise of the face features. Hence, SDA exposes the illumination variations and noise when constructing the optimal projection. It could affect the projection, leading to poor performance. In this paper, an enhanced SDA, namely Wavelet SDA, is proposed. This proposed technique is to resolve the problem of intra-class variations due to illumination variations and noise on image data. The robustness of the proposed technique is evaluated using three well-known face databases, i.e. ORL, FERET and FRGC. Empirical results validated the good effects of wavelet transform on SDA, leading to better recognition performance.


World Academy of Science, Engineering and Technology, International Journal of Computer, Electrical, Automation, Control and Information Engineering | 2013

Normalization discriminant independent component analysis

Liew Yee Ping; Pang Ying Han; Lau Siong Hoe; Ooi Shih Yin; Housam Khalifa Bashier Babiker


Far East Journal of Electronics and Communications | 2018

M2M DOWNLINK LTE RESOURCE ALLOCATION: A GAME THEORY APPROACH WITH GLICKO SYSTEM FRAMEWORK

Khoo Siew Kay; Wee Kuok Kwee; Ooi Shih Yin

Collaboration


Dive into the Ooi Shih Yin's collaboration.

Top Co-Authors

Avatar
Top Co-Authors

Avatar
Top Co-Authors

Avatar
Top Co-Authors

Avatar
Top Co-Authors

Avatar
Top Co-Authors

Avatar
Top Co-Authors

Avatar
Top Co-Authors

Avatar
Top Co-Authors

Avatar
Top Co-Authors

Avatar
Researchain Logo
Decentralizing Knowledge