Papers

61,005 results
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Article Tier 2

Detection of Microplastics Using Machine Learning

Researchers reviewed and demonstrated machine learning approaches for detecting and classifying microplastics in environmental samples, finding that automated image analysis and spectral classification methods can improve the speed and accuracy of microplastic monitoring compared to manual methods.

2019 30 citations
Article Tier 2

Artificial intelligence in microplastic detection and pollution control

This review examines how artificial intelligence is being combined with spectroscopy and imaging techniques to dramatically improve the speed and accuracy of microplastic detection in the environment. Better detection methods are essential for tracking the sources and spread of microplastic pollution that ultimately affects human health through contaminated food and water.

2024 Environmental Research 68 citations
Article Tier 2

The Development of Sensors for Microplastic Detection Using Artificial Intelligence

This review examined AI-enhanced sensors developed for microplastic detection and characterization in aquatic environments, covering machine learning, deep learning, and spectroscopic sensor approaches. The authors found that AI substantially reduces the labor intensity of microplastic identification and improves detection of small particles, though training dataset standardization and real-world validation remain priority challenges.

2025 International Journal of Artificial Intelligence
Article Tier 2

Microscopic Hyperspectral Image Analysis via Deep Learning

This paper reviews deep learning approaches applied to microscopic hyperspectral imaging, a technique that captures detailed spectral data useful for identifying materials including microplastics. Advances in portable cameras and AI analysis are expanding applications for environmental monitoring and pollution detection.

2020 Griffith Research Online (Griffith University, Queensland, Australia)
Article Tier 2

Advances in machine learning for the detection and characterization of microplastics in the environment

This review examines how machine learning and artificial intelligence are being used to speed up and improve the detection of microplastics in the environment. Techniques like neural networks and computer vision can now automatically identify plastic types and count particles much faster than traditional manual methods, though challenges remain in standardizing these approaches.

2025 Frontiers in Environmental Science 34 citations
Review Tier 2

A Critical Review on Artificial Intelligence—Based Microplastics Imaging Technology: Recent Advances, Hot-Spots and Challenges

Researchers reviewed the use of artificial intelligence and machine learning techniques for detecting and identifying microplastics in environmental samples. The study found that AI-based imaging tools can significantly speed up analysis and improve accuracy compared to traditional manual methods. However, challenges remain around standardizing datasets and making these tools accessible for routine environmental monitoring.

2023 International Journal of Environmental Research and Public Health 56 citations
Article Tier 2

Artificial intelligence in microplastics domain: Current progress, challenges, and sustainable prospects

This critical review assesses how artificial intelligence tools—including machine learning and image recognition—are being applied to detect, characterize, and predict the behavior of microplastics in the environment. AI approaches show promise for overcoming persistent bottlenecks in large-scale microplastic analysis, but the authors highlight challenges around data quality, model interpretability, and standardization that must be addressed for these tools to reach their potential.

2026 Journal of Hazardous Materials
Article Tier 2

Data driven AI (artificial intelligence) detection furnish economic pathways for microplastics

This review examines how artificial intelligence and machine learning approaches are being applied to detect and classify microplastics in water more quickly and affordably than traditional laboratory methods. Researchers found that AI-powered image recognition and spectral analysis tools can significantly speed up identification while reducing costs. The study suggests that data-driven detection methods could make large-scale microplastic monitoring more practical and accessible.

2024 Journal of Contaminant Hydrology 8 citations
Article Tier 2

Role of AI in Microplastic Pollution Detection and management studies

This review assessed how artificial intelligence approaches—including machine learning and deep learning—are being applied to detect, identify, and monitor microplastics in environmental and biological samples. The authors found AI substantially accelerates microplastic characterization workflows but that training data quality and standardization across studies remains a limiting factor.

2025
Article Tier 2

The Identification of Spherical Engineered Microplastics and Microalgae by Micro-hyperspectral Imaging

Scientists used hyperspectral imaging combined with machine learning to distinguish between microplastic particles and microalgae in seawater samples. Developing reliable automated methods for identifying microplastics in complex environmental samples is critical for accurate contamination monitoring.

2021 Bulletin of Environmental Contamination and Toxicology 18 citations
Article Tier 2

Application of hyperspectral imaging and machine learning for the automatic identification of microplastics on sandy beaches

Hyperspectral imaging combined with machine learning was applied to identify and classify microplastics on sandy beach surfaces, offering a faster and more scalable alternative to conventional spectroscopic analysis for large-area environmental monitoring.

2024 1 citations
Article Tier 2

Recent progress and technological advancements for detection of micro/nano-plastics in the environment

This review surveys the latest analytical tools for detecting micro- and nanoplastics across environmental samples, covering imaging, spectroscopy, electrochemical sensors, and artificial intelligence. It highlights how the very small size and chemical complexity of nanoplastics makes detection especially challenging, and discusses how AI integration is improving accuracy and throughput. Advancing detection methods is foundational to understanding the true scale of microplastic contamination and its risks to ecosystems and human health.

2026 Advances in Colloid and Interface Science
Article Tier 2

Spectrometric Detection Of Microplastics In The Environment: A Novel Approach Using Hyperspectral Imaging System

This study developed a novel spectrometric approach to detect microplastics in environmental samples, combining spectral analysis with machine learning classification. The method enabled rapid, accurate identification of multiple polymer types without extensive sample preparation.

2024 UND Scholarly Commons (University of North Dakota)
Article Tier 2

Advancements and challenges in microplastic detection and risk assessment: Integrating AI and standardized methods

This review examines current methods for detecting and measuring microplastics in water, soil, and biological samples, including microscopy and spectroscopy techniques. The authors highlight how artificial intelligence could make detection faster and more accurate. Standardized testing methods and better health risk assessments are needed to understand and manage the dangers microplastics pose to human health.

2025 Marine Pollution Bulletin 17 citations
Article Tier 2

Artificial Intelligence and Machine Learning Approaches for Automatic Microplastics Identification and Characterization

This review examines how artificial intelligence and machine learning algorithms are being applied to identify, characterize, and model microplastic pollution in the environment. The authors found that these tools can analyze large sensor datasets to detect microplastics in water bodies, predict transport patterns, and model adsorption behavior under various environmental conditions. The study highlights the growing role of computational approaches in understanding and mitigating microplastic contamination.

2024 3 citations
Systematic Review Tier 1

Hyperspectral imaging as an emerging tool to analyze microplastics: A systematic review and recommendations for future development

This systematic review evaluates hyperspectral imaging as a faster, more efficient method for detecting and identifying microplastics. Better detection technology is critical for understanding how much microplastic contamination exists in our food, water, and environment, and for assessing human exposure levels.

2021 Microplastics and Nanoplastics 122 citations
Article Tier 2

The Role of Artificial Intelligence in Microplastic Pollution Studies and Management

This review explores how artificial intelligence is transforming microplastic research, from automating detection in microscopy images and spectral analysis to predicting how plastics interact with pollutants and living organisms. AI-powered sensors and real-time monitoring systems are also being integrated into wastewater treatment to reduce microplastic release, making the technology a powerful tool for both understanding and managing plastic pollution.

2025 Recent Progress in Science and Engineering 2 citations
Systematic Review Tier 1

Hyperspectral imaging: An early systematic review of emerging applications for rapid microplastic analysis

This systematic review examines the emerging use of hyperspectral imaging technology for detecting and analyzing microplastics in environmental samples. Better detection methods matter for human health because accurately measuring microplastic contamination in water, food, and air is essential for understanding our true level of exposure and developing effective strategies to reduce it.

2020 Zenodo (CERN European Organization for Nuclear Research) 1 citations
Article Tier 2

Using artificial intelligence to rapidly identify microplastics pollution and predict microplastics environmental behaviors

This review summarizes how artificial intelligence and machine learning are being used to identify, track, and predict the environmental behavior of microplastics in soil and water. AI methods can analyze the chemical composition, shape, and distribution of microplastics faster and more accurately than traditional techniques. The technology could help scientists better understand where microplastics accumulate and what risks they pose to ecosystems and human health.

2024 Journal of Hazardous Materials 50 citations
Article Tier 2

Deep learning-powered efficient characterization and quantification of microplastics

Researchers developed an artificial intelligence framework that uses deep learning to automatically identify and quantify microplastics from infrared spectra and visual images. The system achieved high accuracy in classifying plastic types and counting particles, dramatically reducing the time needed compared to manual analysis. This tool could make large-scale microplastic monitoring faster and more consistent across different research laboratories.

2024 Journal of Hazardous Materials 7 citations
Article Tier 2

Deep Learning-Based Shape Classification for Hyperspectral-Imaged Microplastics

Researchers tested nine deep learning architectures for automating the shape classification of microplastic particles in hyperspectral images, comparing performance on original and augmented datasets. The best models achieved high classification accuracy, offering a faster and more consistent alternative to labour-intensive manual identification.

2025 Analytical Chemistry
Article Tier 2

Machine learning assisted Raman spectroscopy: A viable approach for the detection of microplastics

This review covers how machine learning combined with Raman spectroscopy can improve the detection and identification of microplastics in environmental samples. Traditional detection methods are slow and have limitations in resolution and particle size analysis, but AI algorithms can process spectral data more quickly and accurately. Better detection tools are essential for understanding the true scale of microplastic contamination in our water, food, and environment.

2024 Journal of Water Process Engineering 53 citations
Article Tier 2

AI-assisted Microplastics Removal

This review explored how artificial intelligence is being used to improve the detection and removal of microplastics from water and the environment. Researchers found that machine learning techniques can enhance the identification of microplastic particles and optimize treatment processes like filtration and coagulation. The study suggests that AI-driven approaches could overcome many of the efficiency and cost limitations of conventional microplastic removal methods.

2025 Journal of Neuromorphic Intelligence 3 citations
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