Network


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

Hotspot


Dive into the research topics where Dong-n Li is active.

Publication


Featured researches published by Dong-n Li.


soft computing | 2017

A new mechanism for data visualization with TSK-type preprocessed collaborative fuzzy rule based system

Mukesh Prasad; Yu-Ting Liu; Dong-Lin Li; Chin-Teng Lin; Rajiv Ratn Shah; Om Prakash Kaiwartya

Abstract A novel data knowledge representation with the combination of structure learning ability of preprocessed collaborative fuzzy clustering and fuzzy expert knowledge of Takagi- Sugeno-Kang type model is presented in this paper. The proposed method divides a huge dataset into two or more subsets of dataset. The subsets of dataset interact with each other through a collaborative mechanism in order to find some similar properties within each-other. The proposed method is useful in dealing with big data issues since it divides a huge dataset into subsets of dataset and finds common features among the subsets. The salient feature of the proposed method is that it uses a small subset of dataset and some common features instead of using the entire dataset and all the features. Before interactions among subsets of the dataset, the proposed method applies a mapping technique for granules of data and centroid of clusters. The proposed method uses information of only half or less/more than the half of the data patterns for the training process, and it provides an accurate and robust model, whereas the other existing methods use the entire information of the data patterns. Simulation results show the proposed method performs better than existing methods on some benchmark problems.


International Journal of Advanced Robotic Systems | 2012

Automatic Age Estimation System for Face Images

Chin-Teng Lin; Dong-Lin Li; Jian-Hao Lai; Ming-Feng Han; Jyh-Yeong Chang

Humans are the most important tracking objects in surveillance systems. However, human tracking is not enough to provide the required information for personalized recognition. In this paper, we present a novel and reliable framework for automatic age estimation based on computer vision. It exploits global face features based on the combination of Gabor wavelets and orthogonal locality preserving projections. In addition, the proposed system can extract face aging features automatically in real-time. This means that the proposed system has more potential in applications compared to other semi-automatic systems. The results obtained from this novel approach could provide clearer insight for operators in the field of age estimation to develop real-world applications.


2014 IEEE Symposium on Computational Intelligence in Control and Automation (CICA) | 2014

Collaborative fuzzy rule learning for Mamdani type fuzzy inference system with mapping of cluster centers

Mukesh Prasad; Kuang-Pen Chou; Amit Kumar Saxena; Om Prakash Kawrtiya; Dong-Lin Li; Chin-Teng Lin

This paper demonstrates a novel model for Mamdani type fuzzy inference system by using the knowledge learning ability of collaborative fuzzy clustering and rule learning capability of FCM. The collaboration process finds consistency between different datasets, these datasets can be generated at various places or same place with diverse environment containing common features space and bring together to find common features within them. For any kind of collaboration or integration of datasets, there is a need of keeping privacy and security at some level. By using collaboration process, it helps fuzzy inference system to define the accurate numbers of rules for structure learning and keeps the performance of system at satisfactory level while preserving the privacy and security of given datasets.


ieee international conference on fuzzy systems | 2014

A preprocessed induced partition matrix based collaborative fuzzy clustering for data analysis

Mukesh Prasad; Linda Siana; Dong-Lin Li; Chin-Teng Lin; Yu-Ting Liu Liu; Amit Kumar Saxena

Preprocessing is generally used for data analysis in the real world datasets that are noisy, incomplete and inconsistent. In this paper, preprocessing is used to refine the inconsistency of the prototype and partition matrices before getting involved in the collaboration process. To date, almost all organizations are trying to establish some collaboration with others in order to enhance the performance of their services. Due to privacy and security issues they cannot share their information and data with each other. Collaborative clustering helps this kind of collaborative process while maintaining the privacy and security of data and can still yield a satisfactory result. Preprocessing helps the collaborative process by using an induced partition matrix generated based on cluster prototypes. The induced partition matrix is calculated from local data by using the cluster prototypes obtained from other data sites. Each member of the collaborating team collects the data and generates information locally by using the fuzzy c-means (FCM) and shares the cluster prototypes to other members. The other members preprocess the centroids before collaboration and use this information to share globally through collaborative fuzzy clustering (CFC) with other data. This process helps system to learn and gather information from other data sets. It is found that preprocessing helps system to provide reliable and satisfactory result, which can be easily visualized through our simulation results in this paper.


systems man and cybernetics | 2017

Soft-Boosted Self-Constructing Neural Fuzzy Inference Network

Mukesh Prasad; Chin-Teng Lin; Dong-Lin Li; Chao-Tien Hong; Weiping Ding; Jyh-Yeong Chang

This correspondence paper proposes an improved version of the self-constructing neural fuzzy inference network (SONFIN), called soft-boosted SONFIN (SB-SONFIN). The design softly boosts the learning process of the SONFIN in order to decrease the error rate and enhance the learning speed. The SB-SONFIN boosts the learning power of the SONFIN by taking into account the numbers of fuzzy rules and initial weights which are two important parameters of the SONFIN, SB-SONFIN advances the learning process by: 1) initializing the weights with the width of the fuzzy sets rather than just with random values and 2) improving the parameter learning rates with the number of learned fuzzy rules. The effectiveness of the proposed soft boosting scheme is validated on several real world and benchmark datasets. The experimental results show that the SB-SONFIN possesses the capability to outperform other known methods on various datasets.


Neurocomputing | 2016

Self-adjusting feature maps network and its applications

Dong-Lin Li; Mukesh Prasad; Chin-Teng Lin; Jyh-Yeong Chang

This paper, proposes a novel artificial neural network, called self-adjusting feature map (SAM), and develop its unsupervised learning ability with self-adjusting mechanism. The trained network structure of representative connected neurons not only displays the spatial relation of the input data distribution but also quantizes the data well. The SAM can automatically isolate a set of connected neurons, in which, the used number of the sets may indicate the number of clusters. The idea of self-adjusting mechanism is based on combining of mathematical statistics and neurological advantages and retreat of waste. In the training process, for each representative neuron has are three phases, growth, adaptation and decline. The network of representative neurons, first create the necessary neurons according to the local density of the input data in the growth phase. In the adaption phase, it adjusts neighborhood neuron pairs connected/disconnected topology constantly according to the statistics of input feature data. Finally, the unnecessary neurons of the network are merged or remove in the decline phase. In this paper, we exploit the SAM to handle some peculiar cases that cannot be handled easily by classical unsupervised learning networks such as self-organizing map (SOM) network. The remarkable characteristics of the SAM can be seen on various real world cases in the experimental results.


international conference on neural information processing | 2017

Automatic Multi-view Action Recognition with Robust Features

Kuang-Pen Chou; Mukesh Prasad; Dong-Lin Li; Neha Bharill; Yu-Feng Lin; Farookh Khadeer Hussain; Chin-Teng Lin; Wen-Chieh Lin

This paper proposes view-invariant features to address multi-view action recognition for different actions performed in different views. The view-invariant features are obtained from clouds of varying temporal scale by extracting holistic features, which are modeled to explicitly take advantage of the global, spatial and temporal distribution of interest points. The proposed view-invariant features are highly discriminative and robust for recognizing actions as the view changes. This paper proposes a mechanism for real world application which can follow the actions of a person in a video based on image sequences and can separate these actions according to given training data. Using the proposed mechanism, the beginning and ending of an action sequence can be labeled automatically without the need for manual setting. It is not necessary in the proposed approach to re-train the system if there are changes in scenario, which means the trained database can be applied in a wide variety of environments. The experiment results show that the proposed approach outperforms existing methods on KTH and WEIZMANN datasets.


international conference on neural information processing | 2017

Robust Facial Alignment for Face Recognition

Kuang-Pen Chou; Dong-Lin Li; Mukesh Prasad; Mahardhika Pratama; Sheng-Yao Su; Haiyan Lu; Chin-Teng Lin; Wen-Chieh Lin

This paper proposes a robust real-time face recognition system that utilizes regression tree based method to locate the facial feature points. The proposed system finds the face region which is suitable to perform the recognition task by geometrically analyses of the facial expression of the target face image. In real-world facial recognition systems, the face is often cropped based on the face detection techniques. The misalignment is inevitably occurred due to facial pose, noise, occlusion, and so on. However misalignment affects the recognition rate due to sensitive nature of the face classifier. The performance of the proposed approach is evaluated with four benchmark databases. The experiment results show the robustness of the proposed approach with significant improvement in the facial recognition system on the various size and resolution of given face images.


international conference on neural information processing | 2011

Self-Adjusting Feature Maps Network

Chin-Teng Lin; Dong-Lin Li; Jyh-Yeong Chang

In this paper, we propose a novel artificial neural network, called self-adjusting feature map (SAM), and its unsupervised learning algorithm with self-adjusting mechanism. After the training of SAM network, we will obtain a map composed of a set of representative connected neurons. The trained network structure of representative connected neurons not only displays the spatial relation of the input data distribution but also quantizes the data well. SAM can automatically isolate a set of connected neurons, in which the number of the set may indicate the number of clusters to be used. The idea of self-adjusting mechanism is based on combining of mathematical statistics and neurological advance and retreat of waste. For each representative neuron, there are three periods, growth, adaptation and decline, in its training process. The network of representative neurons will first create the necessary neurons according to the local density of the input data in the growth period. Then it will adjust neighborhood neuron pair’s connected/disconnected topology constantly according to the statistics of input feature data in the adaptation period. Lastly the unnecessary neurons of the network will be merged or deleted in the decline period. In this study, we exploit SAM to handle some peculiar cases that cannot be well dealt with by classical unsupervised learning networks such as self-organizing feature map (SOM) network. Furthermore, we also take several real world cases to exhibit the remarkable characteristics of SAM.


EURASIP Journal on Advances in Signal Processing | 2012

Face recognition using nonparametric-weighted Fisherfaces

Dong-Lin Li; Mukesh Prasad; Sheng-Chih Hsu; Chao-Ting Hong; Chin-Teng Lin

Collaboration


Dive into the Dong-n Li's collaboration.

Top Co-Authors

Avatar

Kuang-Pen Chou

National Chiao Tung University

View shared research outputs
Top Co-Authors

Avatar

Jyh-Yeong Chang

National Chiao Tung University

View shared research outputs
Top Co-Authors

Avatar

Wen-Chieh Lin

National Chiao Tung University

View shared research outputs
Top Co-Authors

Avatar

Ming-Feng Han

National Chiao Tung University

View shared research outputs
Top Co-Authors

Avatar

Sheng-Chih Hsu

National Chiao Tung University

View shared research outputs
Top Co-Authors

Avatar

Yu-Feng Lin

National Chiao Tung University

View shared research outputs
Top Co-Authors

Avatar
Top Co-Authors

Avatar

Chao-Tien Hong

National Chiao Tung University

View shared research outputs
Top Co-Authors

Avatar

Chao-Ting Hong

National Chiao Tung University

View shared research outputs
Top Co-Authors

Avatar

Cheng-Hung Chen

National Formosa University

View shared research outputs
Researchain Logo
Decentralizing Knowledge