📝 Abstract
Microplastics (MPs (Micro, (Microplastics), 1 µm–5 mm) and nano plastics (NPs,(Nanoplastics), <1 µm) pose significant environmental and health risks, yet traditional detection methods are slow and resource-intensive. MPWebAI is a browser-based platform enabling users to upload microscopic images for automated MP detection, morphological classification (fibre, film, fragment, pellet), and quantitative analysis using Ultralytics YOLOv11m. Trained on a 7,200-image curated dataset, the model achieves mAP@50 of 95.4%, precision 94.2%, and recall 92.8%. The Fast API + React web app provides annotated images, particle counts, size statistics, and reports in seconds, requiring no specialized hardware beyond a standard microscope and smartphone. A review of current NP detection methods—including optical sieves, SERS, nano-DIHM, and AI-enhanced spectroscopy—highlights challenges for sub-micron particles such as matrix interference, spectral overlap, and the absence of certified reference materials. The paper outlines extensions integrating higher-resolution imaging and hybrid AI-spectroscopy. MPWebAI democratizes monitoring for researchers and citizen scientists in resource-limited regions. The system is open-source.
📝 How to Cite
Dr.Vani.G, Mohan Prasath.T,"A Web-Based Intelligent System for Automated Detection, Classification, and Analysis of Microplastics from Microscopic Images Using Ultralytics YOLO" International Journal of Advanced Multidisciplinary Research and Educational Development, V2(2): Page(955-960) Mar-Apr 2026. ISSN: 3107-6513. www.ijamred.com. Published by Scientific and Academic Research Publishing.