# IEEE Transactions on Cybernetics

## Filter Results

Displaying Results 1 - 25 of 32

Publication Year: 2015, Page(s):C1 - 2625
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• ### IEEE Transactions on Cybernetics publication information

Publication Year: 2015, Page(s): C2
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• ### A New Multivariate Approach for Prognostics Based on Extreme Learning Machine and Fuzzy Clustering

Publication Year: 2015, Page(s):2626 - 2639
Cited by:  Papers (30)
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Prognostics is a core process of prognostics and health management (PHM) discipline, that estimates the remaining useful life (RUL) of a degrading machinery to optimize its service delivery potential. However, machinery operates in a dynamic environment and the acquired condition monitoring data are usually noisy and subject to a high level of uncertainty/unpredictability, which complicates progno... View full abstract»

• ### Rigidity-Preserving Team Partitions in Multiagent Networks

Publication Year: 2015, Page(s):2640 - 2653
Cited by:  Papers (3)
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Motivated by the strong influence network rigidity has on collaborative systems, in this paper, we consider the problem of partitioning a multiagent network into two sub-teams, a bipartition, such that the resulting sub-teams are topologically rigid. In this direction, we determine the existence conditions for rigidity-preserving bipartitions, and provide an iterative algorithm that identifies suc... View full abstract»

• ### Can We Do Better in Unimodal Biometric Systems? A Rank-Based Score Normalization Framework

Publication Year: 2015, Page(s):2654 - 2667
Cited by:  Papers (3)
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Biometric systems use score normalization techniques and fusion rules to improve recognition performance. The large amount of research on score fusion for multimodal systems raises an important question: can we utilize the available information from unimodal systems more effectively? In this paper, we present a rank-based score normalization framework that addresses this problem. Specifically, our... View full abstract»

• ### Fully Connected Cascade Artificial Neural Network Architecture for Attention Deficit Hyperactivity Disorder Classification From Functional Magnetic Resonance Imaging Data

Publication Year: 2015, Page(s):2668 - 2679
Cited by:  Papers (21)
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Automated recognition and classification of brain diseases are of tremendous value to society. Attention deficit hyperactivity disorder (ADHD) is a diverse spectrum disorder whose diagnosis is based on behavior and hence will benefit from classification utilizing objective neuroimaging measures. Toward this end, an international competition was conducted for classifying ADHD using functional magne... View full abstract»

• ### Receding Horizon Stabilization and Disturbance Attenuation for Neural Networks With Time-Varying Delay

Publication Year: 2015, Page(s):2680 - 2692
Cited by:  Papers (66)
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This paper is concerned with the problems of receding horizon stabilization and disturbance attenuation for neural networks with time-varying delay. New delay-dependent conditions on the terminal weighting matrices of a new finite horizon cost functional for receding horizon stabilization are established for neural networks with time-varying or time-invariant delays using single- and double-integr... View full abstract»

• ### Mining Spatial-Temporal Patterns and Structural Sparsity for Human Motion Data Denoising

Publication Year: 2015, Page(s):2693 - 2706
Cited by:  Papers (9)
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Motion capture is an important technique with a wide range of applications in areas such as computer vision, computer animation, film production, and medical rehabilitation. Even with the professional motion capture systems, the acquired raw data mostly contain inevitable noises and outliers. To denoise the data, numerous methods have been developed, while this problem still remains a challenge du... View full abstract»

• ### Efficient Video Stitching Based on Fast Structure Deformation

Publication Year: 2015, Page(s):2707 - 2719
Cited by:  Papers (13)
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In computer vision, video stitching is a very challenging problem. In this paper, we proposed an efficient and effective wide-view video stitching method based on fast structure deformation that is capable of simultaneously achieving quality stitching and computational efficiency. For a group of synchronized frames, firstly, an effective double-seam selection scheme is designed to search two disti... View full abstract»

• ### Reliable Mixed$H_\infty$and Passivity-Based Control for Fuzzy Markovian Switching Systems With Probabilistic Time Delays and Actuator Failures

Publication Year: 2015, Page(s):2720 - 2731
Cited by:  Papers (52)
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This paper is concerned with the problem of reliable mixed H∞and passivity-based control for a class of stochastic Takagi-Sugeno (TS) fuzzy systems with Markovian switching and probabilistic time varying delays. Different from the existing works, the H∞and passivity control problem with probabilistic occurrence of time-varying delays and actuator failures is considered in a u... View full abstract»

• ### Large Tanker Motion Model Identification Using Generalized Ellipsoidal Basis Function-Based Fuzzy Neural Networks

Publication Year: 2015, Page(s):2732 - 2743
Cited by:  Papers (17)
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In this paper, the motion dynamics of a large tanker is modeled by the generalized ellipsoidal function-based fuzzy neural network (GEBF-FNN). The reference model of tanker motion dynamics in the form of nonlinear difference equations is established to generate training data samples for the GEBF-FNN algorithm which begins with no hidden neuron. In the sequel, fuzzy rules associated with the GEBF-F... View full abstract»

• ### Adaptive Fuzzy Tracking Control for a Class of MIMO Nonlinear Systems in Nonstrict-Feedback Form

Publication Year: 2015, Page(s):2744 - 2755
Cited by:  Papers (34)
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This paper focuses on the problem of fuzzy adaptive control for a class of multiinput and multioutput (MIMO) nonlinear systems in nonstrict-feedback form, which contains the strict-feedback form as a special case. By the condition of variable partition, a new fuzzy adaptive backstepping is proposed for such a class of nonlinear MIMO systems. The suggested fuzzy adaptive controller guarantees that ... View full abstract»

• ### Content-Based Visual Landmark Search via Multimodal Hypergraph Learning

Publication Year: 2015, Page(s):2756 - 2769
Cited by:  Papers (36)
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While content-based landmark image search has recently received a lot of attention and became a very active domain, it still remains a challenging problem. Among the various reasons, high diverse visual content is the most significant one. It is common that for the same landmark, images with a wide range of visual appearances can be found from different sources and different landmarks may share ve... View full abstract»

• ### Optimal Tracking Control of Unknown Discrete-Time Linear Systems Using Input-Output Measured Data

Publication Year: 2015, Page(s):2770 - 2779
Cited by:  Papers (41)
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In this paper, an output-feedback solution to the infinite-horizon linear quadratic tracking (LQT) problem for unknown discrete-time systems is proposed. An augmented system composed of the system dynamics and the reference trajectory dynamics is constructed. The state of the augmented system is constructed from a limited number of measurements of the past input, output, and reference trajectory i... View full abstract»

• ### Methods for Multiloop Identification of Visual and Neuromuscular Pilot Responses

Publication Year: 2015, Page(s):2780 - 2791
Cited by:  Papers (4)
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In this paper, identification methods are proposed to estimate the neuromuscular and visual responses of a multiloop pilot model. A conventional and widely used technique for simultaneous identification of the neuromuscular and visual systems makes use of cross-spectral density estimates. This paper shows that this technique requires a specific noninterference hypothesis, often implicitly assumed,... View full abstract»

• ### Topic Model for Graph Mining

Publication Year: 2015, Page(s):2792 - 2803
Cited by:  Papers (16)
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Graph mining has been a popular research area because of its numerous application scenarios. Many unstructured and structured data can be represented as graphs, such as, documents, chemical molecular structures, and images. However, an issue in relation to current research on graphs is that they cannot adequately discover the topics hidden in graph-structured data which can be beneficial for both ... View full abstract»

• ### Event-Triggered State Estimation for Complex Networks With Mixed Time Delays via Sampled Data Information: The Continuous-Time Case

Publication Year: 2015, Page(s):2804 - 2815
Cited by:  Papers (90)
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In this paper, the event-triggered state estimation problem is investigated for a class of complex networks with mixed time delays using sampled data information. A novel state estimator is presented to estimate the network states. A new event-triggered transmission scheme is proposed to reduce unnecessary network traffic between the sensors and the estimator, where the sampled data is transmitted... View full abstract»

• ### Observed-Based Adaptive Fuzzy Tracking Control for Switched Nonlinear Systems With Dead-Zone

Publication Year: 2015, Page(s):2816 - 2826
Cited by:  Papers (75)
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In this paper, the problem of adaptive fuzzy output-feedback control is investigated for a class of uncertain switched nonlinear systems in strict-feedback form. The considered switched systems contain unknown nonlinearities, dead-zone, and immeasurable states. Fuzzy logic systems are utilized to approximate the unknown nonlinear functions, a switched fuzzy state observer is designed and thus the ... View full abstract»

• ### Artificial Bee Colony Algorithm Based on Information Learning

Publication Year: 2015, Page(s):2827 - 2839
Cited by:  Papers (33)
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Inspired by the fact that the division of labor and cooperation play extremely important roles in the human history development, this paper develops a novel artificial bee colony algorithm based on information learning (ILABC, for short). In ILABC, at each generation, the whole population is divided into several subpopulations by the clustering partition and the size of subpopulation is dynamicall... View full abstract»

• ### Resilient Asynchronous$H_{\infty }$Filtering for Markov Jump Neural Networks With Unideal Measurements and Multiplicative Noises

Publication Year: 2015, Page(s):2840 - 2852
Cited by:  Papers (81)
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This paper is concerned with the resilient H∞filtering problem for a class of discrete-time Markov jump neural networks (NNs) with time-varying delays, unideal measurements, and multiplicative noises. The transitions of NNs modes and desired mode-dependent filters are considered to be asynchronous, and a nonhomogeneous mode transition matrix of filters is used to model the asynchronous ... View full abstract»

• ### Multiagent Learning of Coordination in Loosely Coupled Multiagent Systems

Publication Year: 2015, Page(s):2853 - 2867
Cited by:  Papers (9)
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Multiagent learning (MAL) is a promising technique for agents to learn efficient coordinated behaviors in multiagent systems (MASs). In MAL, concurrent multiple distributed learning processes can make the learning environment nonstationary for each individual learner. Developing an efficient learning approach to coordinate agents' behaviors in this dynamic environment is a difficult problem, espec... View full abstract»

• ### Output Consensus of Heterogeneous Linear Discrete-Time Multiagent Systems With Structural Uncertainties

Publication Year: 2015, Page(s):2868 - 2879
Cited by:  Papers (43)
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This paper investigates the output consensus problem of heterogeneous discrete-time multiagent systems with individual agents subject to structural uncertainties and different disturbances. A novel distributed control law based on internal reference models is first presented for output consensus of heterogeneous discrete-time multiagent systems without structural uncertainties, where internal refe... View full abstract»

• ### Analysis and Synthesis of Memory-Based Fuzzy Sliding Mode Controllers

Publication Year: 2015, Page(s):2880 - 2889
Cited by:  Papers (18)
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This paper addresses the sliding mode control problem for a class of Takagi-Sugeno fuzzy systems with matched uncertainties. Different from the conventional memoryless sliding surface, a memory-based sliding surface is proposed which consists of not only the current state but also the delayed state. Both robust and adaptive fuzzy sliding mode controllers are designed based on the proposed memory-b... View full abstract»

• ### A Parallel and Incremental Approach for Data-Intensive Learning of Bayesian Networks

Publication Year: 2015, Page(s):2890 - 2904
Cited by:  Papers (17)
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Bayesian network (BN) has been adopted as the underlying model for representing and inferring uncertain knowledge. As the basis of realistic applications centered on probabilistic inferences, learning a BN from data is a critical subject of machine learning, artificial intelligence, and big data paradigms. Currently, it is necessary to extend the classical methods for learning BNs with respect to ... View full abstract»

• ### Structural Atomic Representation for Classification

Publication Year: 2015, Page(s):2905 - 2913
Cited by:  Papers (5)
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Recently, a large family of representation-based classification methods have been proposed and attracted great interest in pattern recognition and computer vision. This paper presents a general framework, termed as atomic representation-based classifier (ARC), to systematically unify many of them. By defining different atomic sets, most popular representation-based classifiers (RCs) follow ARC as ... View full abstract»

## Aims & Scope

The scope of the IEEE Transactions on Cybernetics includes computational approaches to the field of cybernetics.

Full Aims & Scope

## Meet Our Editors

Editor-in-Chief
Prof. Jun Wang
Dept. of Computer Science
City University of Hong Kong
Kowloon Tong, Kowloon, Hong Kong
Tel: +852 34429701
Email: jwang.cs@cityu.edu.hk