ISSN: 2476-2075

Оптометрия: открытый доступ

Открытый доступ

Наша группа организует более 3000 глобальных конференций Ежегодные мероприятия в США, Европе и США. Азия при поддержке еще 1000 научных обществ и публикует более 700 Открытого доступа Журналы, в которых представлены более 50 000 выдающихся деятелей, авторитетных учёных, входящих в редколлегии.

 

Журналы открытого доступа набирают больше читателей и цитируемости
700 журналов и 15 000 000 читателей Каждый журнал получает более 25 000 читателей

Абстрактный

Revolutionizing Fashion Accessibility: Object Detection for Clothing Defect Detection in the Visually Impaired

Chris Lievens

The fashion industry plays a significant role in society, but it presents unique challenges for individuals with visual impairments. Detecting defects in clothing is a crucial task that allows individuals to maintain their self-confidence and independence. This article reviews the use of object detection technology to identify defects in clothing for blind people. We explore the current state of the art, challenges, and potential future directions for this technology, emphasizing its impact on the lives of visually impaired individuals. Blind people often encounter challenges in managing their clothing, specifically in identifying defects such as stains or holes. With the progress of the computer vision field, it is crucial to minimize these limitations as much as possible to assist blind people with selecting appropriate clothing. Therefore, the objective of this paper is to use object detection technology to categorize and detect stains on garments. The methodology used for the optimization of the defect detection system was based on three main components: (i) increasing the dataset with new defects, illumination conditions, and backgrounds, (ii) introducing data augmentation, and (iii) introducing defect classification. The authors compared and evaluated three different YOLOv5 models. The results of this study demonstrate that the proposed approach is effective and suitable for different challenging defect detection conditions, showing high average precision (AP) values, and paving the way for a mobile application to be accessible for the blind community.