Papers

20 results
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Article Tier 2

Use of a convolutional neural network for the classification of microbeads in urban wastewater

Researchers developed a convolutional neural network model to classify and identify microbeads from cosmetic products in urban wastewater, demonstrating that deep learning approaches can provide a practical and scalable standard for automated microplastic characterization in water treatment contexts.

2018 Chemosphere 101 citations
Article Tier 2

Rapid Classification of Microplastics by Using the Application of a Convolutional Neural Network

Researchers used convolutional neural networks (deep learning) to automatically classify microplastic particles in microscopy images into four categories: fragments, pellets, films, and fibers. The models achieved high classification accuracy, reducing the time and labor needed for manual identification. Automated AI classification could greatly accelerate large-scale microplastic monitoring programs.

2023 Proceedings of the World Congress on Civil, Structural, and Environmental Engineering 2 citations
Article Tier 2

Deep Learning Approaches for Detection and Classification of Microplastics in Water for Clean Water Management

Researchers applied dual deep learning models (YOLOv8, YOLOv11, and several CNN architectures) to detect and classify microplastics in water, finding that these AI approaches could accurately identify plastic types across both aquatic and non-aquatic datasets.

2025
Article Tier 2

Deep Learning-Based Image Recognition System for Automated Microplastic Detection and Water Pollution Monitoring

This study developed a deep learning image recognition system to automate the detection and classification of microplastics from microscopy images of water samples. The system achieved high accuracy across particle types and sizes, offering a scalable and less labor-intensive alternative to manual microscopy for large-scale water pollution monitoring.

2025 Artificial Intelligence Systems and Its Applications
Article Tier 2

Efficient Microplastic Detection in Water Using ResNet50 and Fluorescence Imaging

Researchers applied a ResNet50 deep learning model to fluorescence microscopy images of water samples, achieving high-accuracy classification of microplastics, demonstrating that deep learning can efficiently automate microplastic identification from microscopy data.

2025
Article Tier 2

Plastic Waste on Water Surfaces Detection Using Convolutional Neural Networks

Researchers evaluated state-of-the-art convolutional neural network architectures for automatically detecting plastic waste on water surfaces, training models on a dataset representing four categories of plastic litter including plastic bags. The study benchmarked multiple CNN object detection models following extensive dataset preprocessing to determine the most effective approach for automated plastic pollution identification.

2024
Article Tier 2

Automatic Detection of Microplastics in the Aqueous Environment

Researchers developed a deep-learning system for real-time detection and counting of microplastics in freshwater, achieving high accuracy for particles 1 mm and larger.

2023 10 citations
Article Tier 2

A Deep Learning Approach for Microplastic Segmentation in Microscopic Images

Researchers developed a deep learning model for automated segmentation and classification of microplastics in microscopic images, identifying five distinct categories including fibers, fragments, spheres, foam, and film. The model achieved high accuracy while maintaining low computational requirements, making it suitable for high-throughput deployment in environmental monitoring. The study offers a tool that could help overcome the measurement bottleneck in microplastic characterization for toxicological and risk assessment studies.

2025 Toxics 1 citations
Article Tier 2

Computer vision segmentation model—deep learning for categorizing microplastic debris

Researchers developed a deep learning computer vision model for automatically categorizing beached microplastic debris from images. The segmentation model was trained to identify and classify different types of microplastic particles, reducing the need for time-consuming manual counting and laboratory analysis. The study suggests that automated image-based detection could enable more scalable and consistent monitoring of microplastic pollution along coastlines.

2024 Frontiers in Environmental Science 10 citations
Article Tier 2

Quantitative analysis of microplastics in water environments based on Raman spectroscopy and convolutional neural network

Researchers developed a method combining Raman spectroscopy with a convolutional neural network to measure microplastic concentrations in water. The approach achieved high accuracy across six different sizes of polyethylene particles in five real-world water environments, outperforming other machine learning models and offering a practical tool for quantitative microplastic monitoring.

2024 The Science of The Total Environment 31 citations
Article Tier 2

Detection of microfibres in wastewater sludge with deep learning

Researchers developed a deep learning system using convolutional neural networks to automatically detect microfibres in sewage sludge samples, achieving detection accuracy of 68-72% depending on the filter type used. This approach significantly reduces the manual labor and processing time traditionally required to identify microplastic contamination in wastewater. The technology could help scale up monitoring of microfibre pollution from wastewater treatment plants, which are among the primary sources of environmental microfibre release.

2025 Results in Engineering 2 citations
Article Tier 2

Intelligent classification and pollution characteristics analysis of microplastics in urban surface waters using YNet

Researchers developed an AI-based system called YNet to automatically identify and classify microplastics in urban water samples from their visual appearance. The system achieved over 90% accuracy in distinguishing different microplastic shapes and was used to analyze pollution patterns in wetlands and reservoirs. The study demonstrates that artificial intelligence can make microplastic monitoring faster and more consistent compared to traditional manual identification methods.

2024 Journal of Hazardous Materials 5 citations
Article Tier 2

Enhancing marine debris identification with convolutional neural networks

A deep learning model was developed to identify and classify marine debris components captured by underwater remotely operated vehicle imagery, addressing the challenge of widely distributed ocean waste including microplastics. The convolutional neural network demonstrated improved accuracy for debris detection and classification compared to conventional image analysis methods.

2024 Journal of Emerging Investigators 1 citations
Article Tier 2

Proceeding the categorization of microplastics through deep learning-based image segmentation

Researchers developed a deep learning-based image segmentation method using Mask R-CNN to automatically identify and classify microplastic shapes in microscopic images, demonstrating a practical step toward standardized and automated microplastic categorization.

2023 The Science of The Total Environment 34 citations
Article Tier 2

Identification and detection of microplastic particles in marine environment by using improved faster R–CNN model

Researchers developed an improved Faster R-CNN deep learning model for identifying and detecting microplastic particles in marine environments. The model achieved an average detection confidence of 99% and successfully distinguished polystyrene microplastics from mixed particle suspensions across varying backgrounds and conditions, demonstrating a promising automated approach for monitoring microplastic pollution.

2023 Journal of Environmental Management 33 citations
Article Tier 2

GoogLeNet-Based Deep Learning Framework for Underwater Microplastic Classification in Marine Environments

Researchers trained a GoogLeNet deep learning model on underwater images to classify microplastics into four categories, achieving strong classification performance for primary microplastics, secondary microplastics, non-microplastic debris, and marine biota in turbid coastal waters.

2025
Article Tier 2

Microplastic Binary Segmentation with Resolution Fusion and Large Convolution Kernels

Researchers developed an improved machine-learning model to automatically detect and segment microplastic particles in images, achieving better accuracy than previous approaches by combining multi-resolution image analysis with large convolution kernels. Reliable automated detection tools are essential for scaling up microplastic monitoring, since manual identification is too slow and inconsistent for the volumes of environmental samples that need to be processed.

2024 Journal of Computing Science and Engineering 3 citations
Article Tier 2

An Image Analysis of Coastal Debris Detection -Detection of microplastics using deep learning-

Researchers developed a deep learning-based coastal debris detection system using YOLOv7 and the SAHI vision library to identify microplastics in image data collected from shorelines. The system demonstrated effective detection performance and offers a scalable approach for automated monitoring of microplastic litter in coastal environments.

2024 Proceedings of International Conference on Artificial Life and Robotics
Article Tier 2

A Machine Learning Approach To Microplastic Detection And Quantification In Aquatic Environments

This study developed a machine learning approach for detecting and quantifying microplastics in aquatic environments, demonstrating that automated image analysis can improve throughput and accuracy compared to manual microscopic counting for environmental monitoring applications.

2025 International Journal of Environmental Sciences
Article Tier 2

Development of Microplastics Detector and Quantifier Utilizing Deep Learning Based Algorithm

Researchers developed a microplastics detector and quantifier using deep learning-based image analysis, training a neural network to identify and count microplastic particles in microscopic images. The system achieved high accuracy and offers a faster, more objective alternative to manual counting.

2024