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From Pixels to Polymers : A Deep-Hybrid Spectral Framework for Precise Plastic Detection Using Hyperspectral Imaging and AI

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dc.contributor.author CHAIB Mohammed, Yahiaoui Achraf
dc.date.accessioned 2025-10-19T08:10:10Z
dc.date.available 2025-10-19T08:10:10Z
dc.date.issued 2025
dc.identifier.uri https://dspace.univ-guelma.dz/jspui/handle/123456789/18292
dc.description.abstract The detection and classification of plastic waste have become critical priorities amid escalating environmental concerns, particularly in aquatic and terrestrial ecosystems. Conventional imaging and manual inspection techniques often lack the accuracy, efficiency, and scalability required to address these challenges in dynamic, real-world conditions. Hyperspectral imaging (HSI), with its ability to capture detailed spectral signatures across hundreds of narrow wavelength bands, emerges as a promising solution for identifying and distinguishing various plastic polymers from natural elements. However, the practical application of HSI is hindered by computational complexity, spectral redundancy, environmental variability, and the limited availability of labeled data. This thesis presents a comprehensive, adaptive framework that synergizes deep learning and classical machine learning techniques to overcome both environmental and computational barriers. We propose and evaluate four complementary methodologies : (1) a Principal Component Analysis (PCA) followed by Support Vector Machine (SVM) classifier for efficient low-dimensional spectral classification ; (2) a Random Forest model utilizing full-band statistics to enhance robustness and interpretability ; (3) a 2D U-Net convolutional neural network capable of direct spectral-spatial segmentation without prior dimensionality reduction ; and (4) a hybrid two-phase pipeline that couples U-Net-based RGB segmentation with hyperspectral SVM classification to achieve fine-grained polymer-level discrimination. These methods are benchmarked on a range of diverse, real-world hyperspectral datasets, including aerial drone imagery and controlled flume-based laboratory acquisitions, which feature varying environmental backgrounds (e.g., water, sand, algae), lighting conditions, and polymer types. Results demonstrate that the hybrid pipeline outperforms standalone models by leveraging the spatial precision of convolutional architectures and the spectral sensitivity of kernel-based classifiers. Specifically, the segmentation phase achieved an F1-score of 99.42%, accuracy of 99.35%, Intersection over Union (IoU) of 98.75%, and mean Average Precision (mAP) of 87.91%, with a validation loss of only 0.016. In the classification phase, the SVM attained an overall precision of 91.5% across six polymer types—PET, HDPE, LDPE, PP, EPSF, and weathered plastics, with perfect (100%) precision for EPSF and LDPE. The full framework processes 10 files in just 12.7 seconds on GPU, highlighting its potential for real-time deployment in embedded systems. This work confirms the feasibility of automated plastic detection in both field and lab environments and lays the groundwork for scalable applications in UAV and satellite-based monitoring, smart recycling infrastructures, and embedded environmental sensing platforms. en_US
dc.language.iso en en_US
dc.publisher University of Guelma en_US
dc.subject From Pixels to Polymers : A Deep-Hybrid Spectral Framework for Precise Plastic Detection Using Hyperspectral Imaging ; AI en_US
dc.title From Pixels to Polymers : A Deep-Hybrid Spectral Framework for Precise Plastic Detection Using Hyperspectral Imaging and AI en_US
dc.type Working Paper en_US


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