In this paper, an effective method to discover repeating pattern from audio is proposed. Since the previous feature extraction methods are usually process monophony audio, for extracting more descriptive features from...
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ISBN:
(纸本)3540335846
In this paper, an effective method to discover repeating pattern from audio is proposed. Since the previous feature extraction methods are usually process monophony audio, for extracting more descriptive features from polyphony audio, Gabor filters bank is introduced. Meanwhile the measure criteria is suggested for qualitatively and quantitatively weighting the discernibility of extracted features. In addition, the presented algorithm is based on the incremental match and has time complexity O(nlog(n)). Experimental evaluations show that our proposed method could extract complete and meaningful repeating patterns from polyphony audio.
To develop a good evaluation of the classes present on a scene is one of the difficulties in patternrecognition. To suitably describe those classes it is necessary to find feature spaces,which allow distinguishing be...
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ISBN:
(纸本)0780395840
To develop a good evaluation of the classes present on a scene is one of the difficulties in patternrecognition. To suitably describe those classes it is necessary to find feature spaces,which allow distinguishing between them. In this work, we propose an unsupervised segmentation/classification technique based on wavelet textural analysis and self-organizing maps clustering.
Rule induction is a datamining process for acquiring knowledge in terms of symbolic decision rules that explain the data in terms of causal relationship between conditional factors and a given decision/outcome. We pr...
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ISBN:
(纸本)3540335846
Rule induction is a datamining process for acquiring knowledge in terms of symbolic decision rules that explain the data in terms of causal relationship between conditional factors and a given decision/outcome. We present a Decision Rule Acquisition Workbench (DRAW) that discovers symbolic decision rules, in CNF form, from un-annotated data-sets. Our rule-induction strategy involves three phases: (a) conceptual clustering to cluster and generate a conceptual hierarchy of the data-set;(b) rough sets based rule induction algorithm to generate decision rules from the emergent data clusters;and (c) attribute oriented induction to generalize the derived decision rules to yield high-level decision rules and a minimal rule-set size. We evaluate DRAW with five standard machinelearningdatasets and apply to derive decision rules to understand optic nerve images in the realm of glaucoma decision support.
the proceedings contain 68 papers. the topics discussed include: a comparative analysis of data distribution methods in an agent-based neural system for classification tasks;stochastic differential portfolio games wit...
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ISBN:
(纸本)0769526624
the proceedings contain 68 papers. the topics discussed include: a comparative analysis of data distribution methods in an agent-based neural system for classification tasks;stochastic differential portfolio games with regime switching model;extracting symbolic rules from clustering of gene expression data;a novel microarray gene selection method based on consistency;combining greedy method and genetic algorithm to identify transcription factor binding sites;investigation of a new artificial immune system model applied to patternrecognition;RLM: a new method of encoding weights in DNA strands;shape representation and distance measure based on retational graph;fast modeling of curved object from two images;research on an improved gray gradient orientation algorithm in anisotropic high-pass filtering;and image color reduction based on self-organizing maps and growing self-organizing neural networks.
the aims and objectives of datamining is to discover actionable knowledge of main interest to real user needs, which is one of Grand Challenges in KDD. Most extant datamining is a data-driven trial-an-error process....
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ISBN:
(纸本)9781586036157
the aims and objectives of datamining is to discover actionable knowledge of main interest to real user needs, which is one of Grand Challenges in KDD. Most extant datamining is a data-driven trial-an-error process. patterns discovered via predefined models in the above process are often of limited interest to constraint-based real business. In order to work out patterns really interesting and actionable to the real world, pattern discovery is more likely to be a domain-driven human-machine-cooperated process. this talk proposes a practical datamining methodology named "domain-driven datamining". the main ideas include a Domain-Driven In-Depthpattern Discovery framework (DDID-PD), constraint-based mining, in-depthmining, human-cooperated mining and loop-closed mining. Guided by this methodology, we demonstrate some of our work in identifying useful correlations in real stock markets, for instance, discovering optimal trading rules from the existing rule classes, and mining trading rule-stock correlations in stock exchange data. the results have attracted strong interest from both traders and researchers in stock markets. It has shown that the methodology is potential for guiding deep mining of patterns interesting to real business.
this paper explores the customized learning from specific to general for classification learning. Our novel learning framework called SUPE customizes its learning process to the instance to be classified called query ...
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ISBN:
(纸本)3540335846
this paper explores the customized learning from specific to general for classification learning. Our novel learning framework called SUPE customizes its learning process to the instance to be classified called query instance. the data representation in SUPE is also customized to the query instance. Given a query instance, the training data is transformed into a query matrix, from which useful patterns are discovered for learning. the final prediction of the class label is performed by combining some statistics of the discovered useful patterns. We show that SUPE conducts the search from specific to general in a significantly reduced hypothesis space. the query matrix also facilitates the complicated operations in SUPE. the experimental results on benchmark data sets are encouraging.
Clustering is one branch of unsupervised machinelearningtheory, which has a wide variety of applications in patternrecognition, image processing, economics, document categorization, web mining, etc. Today, we const...
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ISBN:
(纸本)3540465359
Clustering is one branch of unsupervised machinelearningtheory, which has a wide variety of applications in patternrecognition, image processing, economics, document categorization, web mining, etc. Today, we constantly face how to handle a large number of similar data items, which drives many researchers to contribute themselves to this field. Support vector machine provides a new pathway for clustering, however, it behaves bad in handling massive data. As an emergent theory, artificial immune system can effectively recognize antigens and produce the memory antibodies. this mechanism is constantly used to achieve representative or feature data from raw data. A combinational clustering method is proposed in this paper based on artificial immune system and support vector machine, Experimentation in functionality and performance is done in detail. Finally a more challenging application in elevator industry is conducted. the results strongly indicate that this combinational clustering in this paper is of feasibility and of practice.
A conceptual clustering program CLUSTER3 is described that, given a set of objects represented by attribute-value tuples, groups them into clusters described by generalized conjunctive descriptions in attributional ca...
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ISBN:
(纸本)1845641787
A conceptual clustering program CLUSTER3 is described that, given a set of objects represented by attribute-value tuples, groups them into clusters described by generalized conjunctive descriptions in attributional calculus. the descriptions are optimized according to a user-designed multi-criterion clustering quality measure. the clustering process in CLUSTER3 depends on a viewpoint underlying the clustering goal, and employs the view-relevant attribute subsetting method (VAS) that selects for clustering only attributes relevant to this viewpoint. the program is illustrated by a simple designed problem and by its application to clustering of US Congressional voting records. the ongoing research concerns application of CLUSTER3 to large and complex datasets such as collections of web pages.
Glaucoma is a common disease of the eye that often results in partial blindness. the main symptom of glaucoma is the progressive deterioration of the visual field. Glaucoma management involves monitoring the progress ...
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ISBN:
(纸本)3540335846
Glaucoma is a common disease of the eye that often results in partial blindness. the main symptom of glaucoma is the progressive deterioration of the visual field. Glaucoma management involves monitoring the progress of the disease using regular visual field tests but currently there is no standard method for classifying changes in visual field measurements. Sequence matching techniques typically rely on similarity measures. However, visual field measurements are very noisy, particularly in people with glaucoma. It is therefore difficult to establish a reference data set including both stable and progressive visual fields. We describe method that uses a baseline computed from a query sequence, to match stable sequences in a database collected from volunteers. the results suggest that the new method is more accurate than other techniques for identifying progressive sequences, though there is a small penalty for stable sequences.
the proceedings contain 42 papers. the topics discussed include: can biological motion be a biometric?;indexing of document images based on nine-directional codes;steganalysis of LSB embedded images using variable thr...
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ISBN:
(纸本)1424406110
the proceedings contain 42 papers. the topics discussed include: can biological motion be a biometric?;indexing of document images based on nine-directional codes;steganalysis of LSB embedded images using variable threshold color pair analysis;mosaic generation in H.264 compressed domain;an energy-aware adaptive clustering protocol for sensor networks;distributed asynchronous clustering for self-organisation of wireless sensor networks;routing protocols for landslide prediction using wireless sensor networks;analysis of DNA spectrograms using machinelearning methods;Fisher linear discriminant analysis based technique useful for efficient character recognition;data sharing strategy for guaranteeing quality-of-service in VoD application;linear feature extraction using combined approach of Hough transform, eigen values and raster scan algorithms;and a heuristic detection network: an adaptive DDoS control.
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