An Intelligence Donation System using CNN and KNN
Paper ID : 1008-ICCITS (R1)
Authors
Alaa Hassan Hella 1, Tarek Salah Sobh *2
1Shorouk Academy
2Higher Institute of Computers and Information Technology, Computer Science Department, El. Shorouk Academy
Abstract
The growing concern over clothing waste and its environmental impact has motivated the development of reliable solutions for managing donation surplus garments. This work plays an important role to ensure a constant supply of clothes without waste. In addition, it supports both donor and donation warehouse by applying intelligent techniques. This paper introduces a smart clothing donation system leveraging Artificial Intelligence (AI). The system facilitates efficient collection, classification, and distribution of donated clothes. Utilizing Convolutional Neural Networks (CNN) for image-based classification achieving an accuracy of 92%, and K-Nearest Neighbors (KNN) for text-based classification with an accuracy of 93%, the system ensures accurate sorting of clothing items. The proposed approach aims to reduce textile waste while enhancing accessibility to clothing for underprivileged communities. Experimental results demonstrate the system's efficiency, achieving high accuracy in classification and significant reductions in processing time. This AI-driven solution represents a significant step forward in promoting sustainable clothing donation practices worldwide.
Keywords
Convolutional Neural Networks (CNN), K-Nearest Neighbors (KNN), clothes quality assurance
Status: Accepted (Oral Presentation)