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Author

Huiying Hu

Bio: Huiying Hu is an academic researcher from University of Western Australia. The author has contributed to research in topics: Facial recognition system & Feature extraction. The author has an hindex of 1, co-authored 1 publications receiving 12 citations.

Papers
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Proceedings ArticleDOI
01 Nov 2017
TL;DR: The results indicate that the proposed CNN model is capable to handle complex information from facial images in different dimensions, and provides valuable insights into further application of CNN on 3D face recognition.
Abstract: Face recognition remains a challenge today as recognition performance is strongly affected by variability such as illumination, expressions and poses. In this work we apply Convolutional Neural Networks (CNNs) on the challenging task of both 2D and 3D face recognition. We constructed two CNN models, namely CNN-1 (two convolutional layers) and CNN-2 (one convolutional layer) for testing on 2D and 3D dataset. A comprehensive parametric study of two CNN models on face recognition is represented in which different combinations of activation function, learning rate and filter size are investigated. We find that CNN-2 has a better accuracy performance on both 2D and 3D face recognition. Our experimental results show that an accuracy of 85.15% was accomplished using CNN-2 on depth images with FRGCv2.0 dataset (4950 images with 557 objectives). An accuracy of 95% was achieved using CNN-2 on 2D raw image with the AT&T dataset (400 images with 40 objectives). The results indicate that the proposed CNN model is capable to handle complex information from facial images in different dimensions. These results provide valuable insights into further application of CNN on 3D face recognition.

17 citations


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Journal ArticleDOI
02 Dec 2019-PeerJ
TL;DR: In this experiment, the end-to-end face recognition system based on 3D face texture is proposed, combining the geometric invariants, histogram of oriented gradients and the fine-tuned residual neural networks, which costs less than traditional methods.
Abstract: As the technology for 3D photography has developed rapidly in recent years, an enormous amount of 3D images has been produced, one of the directions of research for which is face recognition. Improving the accuracy of a number of data is crucial in 3D face recognition problems. Traditional machine learning methods can be used to recognize 3D faces, but the face recognition rate has declined rapidly with the increasing number of 3D images. As a result, classifying large amounts of 3D image data is time-consuming, expensive, and inefficient. The deep learning methods have become the focus of attention in the 3D face recognition research. In our experiment, the end-to-end face recognition system based on 3D face texture is proposed, combining the geometric invariants, histogram of oriented gradients and the fine-tuned residual neural networks. The research shows that when the performance is evaluated by the FRGC-v2 dataset, as the fine-tuned ResNet deep neural network layers are increased, the best Top-1 accuracy is up to 98.26% and the Top-2 accuracy is 99.40%. The framework proposed costs less iterations than traditional methods. The analysis suggests that a large number of 3D face data by the proposed recognition framework could significantly improve recognition decisions in realistic 3D face scenarios.

6 citations

Proceedings ArticleDOI
01 Nov 2018
TL;DR: A novel machine learning approach to quantify and predict the outcome of 3D facial rejuvenation prior to actual cosmetic procedure, which involves estimation of structural changes in 3D face images and to learn underlying structural mapping.
Abstract: How will I look afterwards? is a common question asked by the patients undergoing a cosmetic procedure. Cosmetic practitioners at present can only offer subjective and descriptive replies. This subjective prediction is a serious concern for patients undergoing cosmetic treatment and therefore necessitates the development of automatic techniques for facial quantification. This paper proposes a novel machine learning approach to quantify and predict the outcome of 3D facial rejuvenation prior to actual cosmetic procedure. The facial rejuvenation prediction results are achieved by estimating the dermal filler volume in 3D faces. This involves estimation of structural changes in 3D face images and to learn underlying structural mapping. Our preliminary experimental results show that the proposed model achieves superior prediction accuracy on real world dataset compared to baseline methods. The computational time analysis shows that the proposed technique is very efficient (at test time) which makes it suitable for real time applications.

5 citations

Journal ArticleDOI
TL;DR: In this article, the authors developed a solution to help the task force using a face recognition based UAV to identify the criminals, missing people, civilians and for surveillance, which is a technology which involves the understanding of how the faces are detected and recognized.
Abstract: This paper develops a solution to help the task force using a face recognition based Unmanned Aerial Vehicle (UAV) to identify the criminals, missing people, civilians and for surveillance. A facial recognition system is a technology which involves the understanding of how the faces are detected and recognized, usually employed to authenticate users through Identity verification services and computing facial features from a given image. This work elucidates an unmanned aerial vehicle with a camera attached that is linked to Face Recognition software and used to control a robot through a wireless remote. When the drone's camera angle is within 37 degrees, the accuracy is 98.6%, indicating that the suggested method can handle changing drone placements. Some applications are to assist the police officials with their investigations like search and rescue, investigations of incidents, crime analysis and crowd monitoring.

4 citations

Book ChapterDOI
18 Nov 2019
TL;DR: This paper presents spatial hierarchical analysis deep neural network, called ShaNet, for RGB-D object recognition, which consists of convolutional neural network (CNN) and recurrent neuralnetwork (RNNs) to analyse and learn distinctive and translationally invariant features in a hierarchical fashion.
Abstract: Deep learning based object recognition methods have achieved unprecedented success in the recent years. However, this level of success is yet to be achieved on multimodal RGB-D images. The latter can play an important role in several computer vision and robotics applications. In this paper, we present spatial hierarchical analysis deep neural network, called ShaNet, for RGB-D object recognition. Our network consists of convolutional neural network (CNN) and recurrent neural network (RNNs) to analyse and learn distinctive and translationally invariant features in a hierarchical fashion. Unlike existing methods, which employ pre-trained models or rely on transfer learning, our proposed network is trained from scratch on RGB-D data. The proposed model has been tested on two different publicly available RGB-D datasets including Washington RGB-D and 2D3D object dataset. Our experimental results show that the proposed deep neural network achieves superior performance compared to existing RGB-D object recognition methods.

4 citations

Journal ArticleDOI
TL;DR: A survey of more than 60 promising biometric works using deep learning is provided, illustrating their strengths and potential in various applications and some of the main challenges when utilizing these biometric recognition models.
Abstract: Biometrics is a technique used to define, assess, and quantify a person's physical and behavioral property. In recent history, deep learning has shown impressive progress in several places, including computer vision and natural language processing for supervised learning. Since biometrics deals with a person's traits, it mainly involves supervised learning and may exploit deep learning effectiveness in other similar fields. In this article, a survey of more than 60 promising biometric works using deep learning is provided, illustrating their strengths and potential in various applications. The paper starts with biometric basics, transfer learning in deep biometrics, an overview of convolutional neural networks, and then survey work. We address all the strategies and datasets used along with their accuracy. Further, some of the main challenges when utilizing these biometric recognition models and potential future avenues for research into this field are also addressed.

3 citations