Ваш любимый книжный интернет-магазин
Перейти на
GlavKniga.SU
Ваш город: Алматы
Ваше местоположение – Алматы
 Да 
От вашего выбора зависит время и стоимость доставки
Корзина: пуста
Авторизация 
  Логин
  
  Пароль
  
Регистрация  Забыли пароль?

Поиск по каталогу 
(строгое соответствие)
ISBN
Фраза в названии или аннотации
Автор
Язык книги
Год издания
с по
Электронный носитель
Тип издания
Вид издания
Отрасли экономики
Отрасли знаний
Сферы деятельности
Надотраслевые технологии
Разделы каталога
худ. литературы

Soft computing based feature selection for sound classification.

В наличии
Местонахождение: АлматыСостояние экземпляра: новый
Бумажная
версия
Автор: Aamir Shakoor
ISBN: 9786202078955
Год издания: 2019
Формат книги: 60×90/16 (145×215 мм)
Количество страниц: 56
Издательство: LAP LAMBERT Academic Publishing
Цена: 23066 тг
Положить в корзину
Позиции в рубрикаторе
Отрасли экономики:
Код товара: 506480
Способы доставки в город Алматы *
комплектация (срок до отгрузки) не более 2 рабочих дней
Самовывоз из города Алматы (пункты самовывоза партнёра CDEK)
Курьерская доставка CDEK из города Москва
Доставка Почтой России из города Москва
      Аннотация: The topic of this work is soft computing based feature selection for environmental sound classification. Environmental sound classification systems have a wide range of applications, like hearing aids devices, handheld devices and auditory protection devices. Sound classification systems typically extract features which are learnt by a classifier. Using too many features can result in reduced performance by making the learning algorithm to learn wrong models. The proper selection of features for sound classification is a non-trivial task. Soft computing based feature selection methods are not studied for environmental sound classification, whereas these methods are very promising, because these can handle uncertain information in a more efficient way, using simple set theoretic functions and because these methods are more close to perception based reasoning. Therefore this research investigates different feature selection methods, including soft computing based feature selection and classical information, entropy and correlation based approaches.
Ключевые слова: Feature Selection, soft computing, environmental sound classification, rough/fuzzy set theory, Patternrecognition
Похожие издания
Отрасли экономики: Машиностроение
P. Radha,G. Chandrasekaran and N. Selvakumar
Soft Computing based Powder Metallurgy. Soft Computing tools for predicting the characteristics of composite materials in P/M Lab.
2020 г.,  52 стр.,  мягкий переплет
Soft-computing plays an important role in various critical stages of material science.The Mathematical models constructed based on soft-computing approach will avoid more experimentation cost and human energy in the Industries. Each tool has more contribution for the growth of material science. The Neural Network aids the knowledge mining in...

22924 тг
Бумажная версия
Отрасли знаний: Точные науки -> Информатика и программирование
Dharmendra Prasad Mahato and Ravi Shankar Singh
Soft Computing Based Dependability Analysis for On-Demand Computing. .
2019 г.,  208 стр.,  мягкий переплет
On-demand computing is a model for enabling ubiquitous, convenient, on-demand network access to a shared pool of configurable computing resources. It provides several services. On-demand computing based transaction processing is one of them which deals with the challenge to an enterprise to meet fluctuating demands of sufficient resources...

43954 тг
Бумажная версия
Сферы деятельности: Предпринимательская деятельность -> Менеджмент
Meena Tushir
Soft computing based system modeling & control. .
2016 г.,  96 стр.,  мягкий переплет
Several clustering algorithms have been explained in the book including kernel based clustering algorithm. A kernel based clustering incorporates a kernel metric in place of the Euclidean distance used in the objective function. The kernel induced metric maps the data points to a high dimensional feature space, in which the data is more clearly...

31747 тг
Бумажная версия
Отрасли экономики: Машиностроение -> Автомобилестроение
Vijaya Laxmi and Madhulika Das
Vehicle License Plate Recognition: A Soft Computing Based Approach. .
2016 г.,  100 стр.,  мягкий переплет
License plate recognition system (LPR) is an image processing technology used to identify vehicle by their license plate. This technology is gaining popularity in security and traffic installation. Much research has already been done for the recognition of Korean, Chinese, European, American and other license plates. This work presents license...

31889 тг
Бумажная версия