Поиск по каталогу |
(строгое соответствие)
|
- Профессиональная
- Научно-популярная
- Художественная
- Публицистика
- Детская
- Искусство
- Хобби, семья, дом
- Спорт
- Путеводители
- Блокноты, тетради, открытки
Classifying Chest Pathology Images Using Deep Learning Techniques. To Develop Computer Based System for Diagnosis of Healthy vs Pathology Chest X-Ray Images to Assist Radiologists
В наличии
Местонахождение: Алматы | Состояние экземпляра: новый |
Бумажная
версия
версия
Автор: Vrushali Dhanokar
ISBN: 9786203027211
Год издания: 2020
Формат книги: 60×90/16 (145×215 мм)
Количество страниц: 68
Издательство: LAP LAMBERT Academic Publishing
Цена: 23493 тг
Положить в корзину
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: Chest radiographs are the most common examination in radiology in today’s era. They are essential and very helpful for the supervision of various diseases associated with high mortality and display a wide range of potential information about various diseases. The most common verdicts in chest X-rays include Tuberculosis, Cardiomegaly & Mediastinum chest diseases. Distinguishing the various chest pathologies is a difficult task even to the human observer and for radiologist. Therefore, there is an interest in developing computer system diagnosis to assist radiologists in reading chest images through machine. The healthy versus pathology detection i.e. Tuberculosis and Cardiomegaly in chest radiography was explored using Laplacian of Gaussian (LoG), Local Binary Patterns (LBP), Speed up Robust Features (SURF) and also used the Bag-of-Visual-Words (BoVW) model using Artificial Neural Network (ANN) & Deep Learning techniques that classifies between healthy vs pathological cases.
Ключевые слова: Deep Learning, Chest X-Ray Images, LBP, ANN, Healthy vs Pathology, Image Extraction, CNN, Feature extraction, MRI, BoVW, SVM