Thursday, 23 December 2021

Call for Research Papers - International Journal on Soft Computing ( IJSC )

 International Journal on Soft Computing ( IJSC )

ISSN: 2229 - 6735 [Online] ; 2229 - 7103 [Print]

https://airccse.org/journal/ijsc/ijsc.html

Contact Us 

Here's where you can reach us : ijscjournal@yahoo.com or ijsc@aircconline.com

Google scholar Link: https://scholar.google.co.in/citations?user=4BpotHUAAAAJ&hl=en

Academia URL: https://independent.academia.edu/IjscJournal

Submission Deadline : December 25, 2021

#FuzzyLogic #NeuralComputing #evolutionarycomputation #machinelearning #patternrecognition #IJSC #AIRCC



Wednesday, 22 December 2021

An approach to Fuzzy clustering of the iris petals by using Ac-means

Current Issue

November 2021, Volume 12, Number 2/3/4

An approach to Fuzzy clustering of the iris petals by using Ac-means

Nicolás Enrique Salgado Guitiérrez, Sergio Andrés Valencia Ramírez and José Soriano Méndez, District University FJDC, Colombia

Abstract

 This paper proposes a definition of a fuzzy partition element based on the homomorphism between type-1 fuzzy sets and the three-valued Kleene algebra. A new clustering method based on the C-means algorithm, using the defined partition, is presented in this paper, which will be validated with the traditional iris clustering problem by measuring its petals.

Keywords 

Fuzzy, Partition, K3 algebra, homomorphism, cluster, C-means.

Original Source URL: https://aircconline.com/ijsc/V12N4/12421ijsc01.pdf

https://airccse.org/journal/ijsc/current2021.html



Thursday, 16 December 2021

Current Issue: November 2021, Volume 12, Number 2/3/4 --- Table of Contents

 International Journal on Soft Computing (IJSC)

ISSN: 2229 - 6735 [Online]; 2229 - 7103 [Print]

http://airccse.org/journal/ijsc/ijsc.html

Current Issue

November 2021, Volume 12, Number 2/3/4 

An approach to Fuzzy clustering of the iris petals by using Ac-means Analysis  

Nicolás Enrique Salgado Guitiérrez, Sergio Andrés Valencia Ramírez and José Soriano Méndez, District University FJDC, Colombia

https://aircconline.com/ijsc/V12N4/12421ijsc01.pdf

http://airccse.org/journal/ijsc/current2021.html

Contact Us 

Here's where you can reach us : ijscjournal@yahoo.com or ijsc@aircconline.com



Friday, 10 December 2021

Broad Phoneme Classification Using Signal Based Features

Deekshitha G and Leena Mary

Advanced Digital Signal Processing Research Laboratory, Department of Electronics and Communication, Rajiv Gandhi Institute of Technology, Kottayam, Kerala, India

ABSTRACT

Speech is the most efficient and popular means of human communication Speech is produced as a sequence of phonemes. Phoneme recognition is the first step performed by automatic speech recognition system. The state-of-the-art recognizers use mel-frequency cepstral coefficients (MFCC) features derived through short time analysis, for which the recognition accuracy is limited. Instead of this, here broad phoneme classification is achieved using features derived directly from the speech at the signal level itself. Broad phoneme classes include vowels, nasals, fricatives, stops, approximants and silence. The features identified useful for broad phoneme classification are voiced/unvoiced decision, zero crossing rate (ZCR), short time energy, most dominant frequency, energy in most dominant frequency, spectral flatness measure and first three formants. Features derived from short time frames of training speech are used to train a multilayer feedforward neural network based classifier with manually marked class label as output and classification accuracy is then tested. Later this broad phoneme classifier is used for broad syllable structure prediction which is useful for applications such as automatic speech recognition and automatic language identification.

KEYWORDS

Automatic Speech Recognition, Broad phoneme classes, Neural Network Classifier, Phoneme, Syllable, Signal level features, 

Original Source URL: https://airccse.org/journal/ijsc/papers/5314ijsc01.pdf

https://airccse.org/journal/ijsc/current2014.html






Wednesday, 8 December 2021

International Journal on Soft Computing ( IJSC )

ISSN: 2229 - 6735 [Online] ; 2229 - 7103 [Print]

https://airccse.org/journal/ijsc/ijsc.html

Contact Us 

Here's where you can reach us : ijscjournal@yahoo.com or ijsc@aircconline.com

Submission System

http://coneco2009.com/submissions/imagination/home.html

Academia URL: https://independent.academia.edu/IjscJournal

#IJSC #AIRCC #optimization #softwaretesting #FuzzyLogic



Friday, 3 December 2021

Classification of Vehicles Based on Audio Signals using Quadratic Discriminant Analysis and High Energy Feature Vectors

A. D. Mayvan1, S. A. Beheshti1 and M. H. MasoomB2, 1Iran University of Science and Technology, Iran and 2Babol Noshirvani University of Technology, Iran

ABSTRACT

The focus of this paper is on classification of different vehicles using sound emanated from the vehicles. In this paper, quadratic discriminant analysis classifies audio signals of passing vehicles to bus, car, motor, and truck categories based on features such as short time energy, average zero cross rate, and pitch frequency of  periodic segments of signals. Simulation results show that just by considering high energy feature vectors, better classification accuracy can be achieved due to the correspondence of low energy regions with noises of the background. To separate these elements, short time energy and average zero cross rate are used simultaneously. In our method, we have used a few features which are easy to be calculated in time domain and enable practical implementation of efficient classifier. Although, the computation complexity is low, the classification accuracy is comparable with other classification methods based on long feature vectors reported in literature for this problem.

KEYWORD

Classification accuracy; Periodic segments; Quadratic Discriminant Analysis; Separation criterion; Short time analysis. 

Original Source URL: https://airccse.org/journal/ijsc/papers/6115ijsc05.pdf

https://airccse.org/journal/ijsc/current2015.html



February Issue Journal! Authors are invited to submit papers!

International Journal on Soft Computing (IJSC) ISSN: 2229 - 6735 [Online]; 2229 - 7103 [Print] https://airccse.org/journal/ijsc/ijsc.html He...