Authors:
Christoph Neukirchen,
Daniel Willett,
Gerhard Rigoll,
Page (NA) Paper number 1643
Abstract:
The paper deals with the problem of extracting topic information from
news show stories by statistical methods. It is shown that the traditional
topic-dependent n-gram language modeling approach can be decomposed
in order to apply neural networks for topic indexing. Two specific
problems in training of these networks are addressed: a very sparse
data distribution in the stories and the superposition of different
topics in a story. The first problem is tackled by an integrated smoothing
approach in the backpropagation method; an expansion of the neural
network structure can be used to cope with topic mixtures in stories.
Due to the efficient parameter sharing the application of neural networks
results in a small improvement in topic indexing performance on a small
corpus of broadcast news compared to the traditional topic-dependent
n-gram method.
Authors:
Avni H Rambhia,
Robb W Glenny,
Jenq-Neng Hwang,
Page (NA) Paper number 2032
Abstract:
We aimed at training a neural network to classify stress test exercise
data into one of three classes: normal, heart failure, or lung failure.
Good classification accuracy was obtained using a backpropagation neural
network architecture with one hidden layer during cross validation
on data set of 110 vectors, when all 17 channels were used. We further
aimed at determining which of these channels were critical to the decision
making process. This was done through an input sensitivity analysis.
Results showed that nine channels formed a critical superset of which
possibly any eight could achieve almost perfect classification. We
thus show that faster and more accurate classification may be obtained
by input channel elimination due to dimension reduction of input space,
which makes better generalization.
Authors:
Songyang Yu,
Ling Guan,
Page (NA) Paper number 1216
Abstract:
General regression neural networks (GRNNs) are proposed for selecting
the most discriminating features for the automatic detection of clustered
microcalcifications in digital mammograms. Previously, We have designed
an image processing system for detecting clustered microcalcifications.
The system uses wavelet coefficients and feed forward neural networks
to identify possible microcalcification pixels and a set of structure
features to locate individual microcalcifications. In this work, more
features are extracted, and the most discriminating features are selected
through the analysis of the GRNNs. The selected features are incorporated
into our image processing system and applied to a database of 40 mammograms
(Nijmegen database) containing 105 clusters of microcalcifications.
Free response operating characteristics (FROC) curves are used to evaluate
the performance. Results show that, by incorporating the proposed feature
selection scheme, the performance of our system is improved significantly.
Authors:
Jyh-Charn Liu,
Gouchol Pok,
Page (NA) Paper number 2440
Abstract:
Texture boundaries or edges are useful information for segmenting heterogeneous
textures into several classes. Texture edge detection is different
from the conventional edge detection that is based on the pixel-wise
changes of gray level intensities, because textures are formed by patterned
placement of texture elements over some regions. We propose a prediction-based
texture edge detection method that includes encoding and prediction
modules as its major components. The encoding module projects n-dimensional
texture features onto a 1-dimensional feature map through SOFM algorithm
to obtain scalar features, and the prediction module computes the predictive
relationship of the scalar features with respect to their neighbors
sampled from 8 directions. The variance of prediction errors is used
as the measure for detection of edges. In the experiments with the
micro-textures, our method has shown its effectiveness in detecting
the texture edges.
Authors:
Hau-san Wong, Department of Electrical Engineering, The University of Sydney, NSW 2006 Australia (Australia)
Terry Caelli, Center for Mapping, The Ohio State University, Columbus, Ohio 43212, USA. (USA)
Ling Guan, Department of Electrical Engineering, The University of Sydney, NSW 2006, Australia (Australia)
Page (NA) Paper number 1168
Abstract:
In this paper, we investigate the feasibility of characterizing significant
image edges using a model-based neural network with modular architecture.
Instead of employing traditional mathematical models for characterization,
we ask human users to select what they regard as significant features
on an image, and then incorporate these selected edges directly as
training examples for the network. Unlike conventional edge detection
schemes where decision thresholds have to be specified, the current
NN-based edge characterization scheme implicitly represents these decision
parameters in the form of network weights which are updated during
the training process. Experiments have confirmed that the resulting
network is capable of generalizing this previously acquired knowledge
to identify important edges in images not included in the training
set. Most importantly, the current approach is very robust against
noise contaminations, such that no re-training of the network is required
when it is applied to noisy images.
Authors:
Stefano Rovetta,
Rodolfo Zunino,
Page (NA) Paper number 1342
Abstract:
The paper describes a novel approach using Vector Quantization (VQ)
to process vehicle images for automated identification. The VQ-based
method yields superior quality in picture compression for archival
purposes, and, at the same time, supports the localization of text
regions in the image effectively. As opposed to standard approaches,
VQ encoding gives some hint about the contents of image regions; such
information is exploited to boost localization performance. The VQ
system may be trained empirically from examples; this provides adaptiveness
and on-field tuning facility. The approach has been tested in a real
application and included satisfactorily into a complete system for
vehicle identification.
Authors:
Marios Poulos, University of Piraeus, Piraeus, Greece (Greece)
maria Rangoussi, National Technical University of Athens, Athens, Greece (Greece)
Nikolaos Alexandris, University of Piraeus, Piraeus, Greece (Greece)
Page (NA) Paper number 2089
Abstract:
A direct connection between the ElectroEncephaloGram (EEG) and the
genetic information of an individual has been suspected and investigated
by neurophysiologists and psychiatrists since 1960. However, most of
this early, as well as more recent, research focuses on the classification
of pathological EEG cases, aiming to construct tests for purposes of
diagnosis. On the contrary, our work focuses on healthy individuals
and aims to establish an one-to-one correspondence between the genetic
information of the individual and certain features of the his/her EEG,
as an intermediate step towards the further goal of developing a test
for person identification based on features extracted from the EEG.
Potential applications include, among others, information encoding
and decoding and access to secure information. At the present stage,
the proposed method uses spectral information extracted from the EEG
non-parametrically, via the FFT, and employs a neural network (a Learning
Vector Quantizer - LVQ) to classify unknown EEGs as belonging to one
of a finite number of individuals. Correct classification scores ranging
from 80% to 100% in experiments conducted on real data, show evidence
that the EEG indeed carries genetic information and that the proposed
method can be used to construct person identification tests based on
the EEG.
Authors:
Lars Nonboe Andersen, Department of Mathematical Modeling, Technical University of Denmark (Denmark)
Whitlow W Au,
Jan Larsen, Department of Mathematical Modeling, Technical University of Denmark (Denmark)
Lars Kai Hansen, Department of Mathematical Modeling, Technical University of Denmark (Denmark)
Page (NA) Paper number 1940
Abstract:
This paper describes an underwater object discrimination system applied
to recognize cylinders of various compositions from different angles.
The system is based on a new combination of simulated dolphin clicks,
simulated auditory filters and artificial neural networks. The model
demonstrates its potential on real data collected from four different
cylinders in an environment where the angles were controlled in order
to evaluate the models capabilities to recognize cylinders independent
of angles.
Authors:
Hsin C Fu,
Z. H Chen,
Yeong Y Xu,
C. H Wang, Mentor Data Systems, Hsinchu, Taiwan (Taiwan)
Page (NA) Paper number 2434
Abstract:
In this paper, we proposed a neural network method for the high efficiency
requatization in the design of a transcoder. In our design, there are
two types of video bitrate control in the proposed transcoder. One
is the global adjusting of quantizer scales in which the adjusting
is based on the complication of the whole frame, the other is the adaptive
adjusting of quantizer scales, that the adjusting is the complication
of the current macroblock. From our experimental results, the prototype
transcoder can achieve desirable bitrate (1.5 Mbps) with an acceptable
image quality. In addition, we constructed a video multiplexer for
PPV or NVOD applications on the proposed transcoder.
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