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    An efficient inference in meanfield approximation by adaptive manifold filtering: (Machine learning & data mining)

    , Article Proceedings of the 4th International Conference on Computer and Knowledge Engineering, ICCKE 2014 ; 2014 , p. 581-585 Nasab, S. E ; Ramezanpur, S ; Kasaei, S ; Sanaei, E ; Sharif University of Technology
    Abstract
    A new method for speeding up the approximate maximum posterior marginal (MPM) inference in meanfield approximation of a fully connected graph is introduced. Weight of graph edges is measured by mixture of Gaussian kernels. This fully connected graph is used for segmentation of image data. The bottleneck of the inference in meanfield approximation is where the similar bilateral filtering is needed for updating the marginal in the message passing step. To speed up the inference, the adaptive manifold high dimensional Gaussian filter is used. As its time complexity is 0(ND), it leads to accelerating the marginal update in the message passing step. Its time complexity is linear and relative to... 

    Improvements of image-steganalysis using boosted combinatorial classifiers and gaussian high pass filtering

    , Article 2008 4th International Conference on Intelligent Information Hiding and Multiedia Signal Processing, IIH-MSP 2008, Harbin, 15 August 2008 through 17 August 2008 ; 2008 , Pages 1508-1511 ; 9780769532783 (ISBN) Asadi, N ; Jamzad, M ; Sajedi, H ; Sharif University of Technology
    2008
    Abstract
    Powerful universal steganalyzers were proposed in the literature during the past few years. In addition some studies have been conducted on improvements of current steganalysis results using information fusion techniques, merging available feature vectors, etc. This paper presents two independent ideas, which can be used together, to obtain higher accuracy in detecting stego images. First, we propose the use of boosted fusion methods to aggregate outputs of multiple steganalyzers. Second, we investigate how passing high frequencies through filtering can enhance the results of steganalysis techniques. In this work, it is shown that, through different tests over the state-of-the-art... 

    A neural network aided adaptive second-order gaussian filter for tracking maneuvering targets

    , Article ICTAI 2005: 17th IEEE International Conference on Tools with Artificial Intelligence, ICTAI'05, Hong Kong, 14 November 2005 through 16 November 2005 ; Volume 2005 , 2005 , Pages 439-446 ; 10823409 (ISSN); 0769524885 (ISBN); 9780769524887 (ISBN) Sadati, N ; Langary, D ; Sharif University of Technology
    2005
    Abstract
    The adaptive capability of filters is known to be increased by incorporating a neural network into the filtering procedure. In this paper, an adaptive algorithm for tracking maneuvering targets based on neural networks is proposed. This algorithm is implemented with two filters based on the current statistical model and a multilayer feedforward neural network. The two filters track the same maneuvering target in parallel and the neural network automatically considers all the state information of the two filters and adaptively adjusts the process variance of one of them to achieve better performance in different target maneuver tracking. Simulations results show that the proposed adaptive... 

    A neural network aided target tracking algorithm using angular measurements

    , Article 2005 Intelligent Sensors, Sensor Networks and Information Processing Conference, Melbourne, 5 December 2005 through 8 December 2005 ; Volume 2005 , 2005 , Pages 295-300 ; 0780393996 (ISBN); 9780780393998 (ISBN) Sadati, N ; Langary, D ; ARC Research Networks on Intelligent Sensors,; Australian Government, Australian Research Council ; Sharif University of Technology
    IEEE Computer Society  2005
    Abstract
    This paper investigates the problem of maneuvering target tracking by using hybrid (intelligent/classical) methods. The adaptive capability of filters is known to be increased by incorporating a neural network into the filtering procedure. The proposed algorithm is implemented with two second-order Gaussian filters based on the current statistical model and a multilayer feedforward neural network. The two filters, which use the noise corrupted measurements of the target line of sight (LOS) angle, track the same maneuvering target in parallel. The neural network automatically considers all the state information of the two filters and adaptively adjusts the process variance of one of them to...