Knowledge Agora



Similar Articles

Title Multispectral data classification with deep CNN for plastic bottle sorting
ID_Doc 29766
Authors Maliks, R; Kadikis, R
Title Multispectral data classification with deep CNN for plastic bottle sorting
Year 2021
Published
Abstract Current global trends and green policies indicate the importance of smart waste sorting. Polymer type identification plays a key role in the circular economy model, where high precision is vital to reduce the impurities of recycled plastic flakes. In this paper, we present a robust, high-accuracy plastic bottle polymer type classification using Convolutional Neural Network (CNN). Near-infrared (NIR) absorbance spectroscopy is used to gather polypropylene (PP), polyethene terephthalate (PET), high-density polyethene (HDPE), and low-density polyethene (LDPE) spectra in a dry and wet state. We propose a data augmentation method that generates additional training examples, and we experimentally determine the impact of the ratio of real and generated samples on the accuracy of the classification. In addition, we compare this classification approach with Support Vector Machine (SVM), Principal Component Analysis (PCA) and t-distributed Stochastic Neighbour Embedding (t-SNE) classification methods and also provide data-preprocessing steps for these methods. Finally, we combine pre-processing, component analysis, and CNN to achieve 98.4% accuracy rate while reducing the sizes of CNN input feature vectors and the CNN model itself.
PDF

Similar Articles

ID Score Article
20892 Cucuzza, P; Serranti, S; Capobianco, G; Bonifazi, G Multi-level color classification of post-consumer plastic packaging flakes by hyperspectral imaging for optimizing the recycling process(2023)
23170 Kroell, N; Chen, XZ; Maghmoumi, A; Lorenzo, J; Schlaak, M; Nordmann, C; Küppers, B; Thor, E; Greiff, K NIR-MFCO dataset: Near-infrare d-based false-color images of post-consumer plastics at different material flow compositions and material flow presentations(2023)
26943 Bonifazi, G; Capobianco, G; Serranti, S Fast and effective classification of plastic waste by pushbroom hyperspectral sensor coupled with hierarchical modelling and variable selection(2023)
22704 Rani, M; Marchesi, C; Federici, S; Rovelli, G; Alessandri, I; Vassalini, I; Ducoli, S; Borgese, L; Zacco, A; Bilo, F; Bontempi, E; Depero, LE Miniaturized Near-Infrared (MicroNIR) Spectrometer in Plastic Waste Sorting(2019)Materials, 12.0, 17
26662 Bonifazi, G; Capobianco, G; Cucuzza, P; Serranti, S; Spizzichino, V Black Plastic Waste Classification by Laser-Induced Fluorescence Technique Combined with Machine Learning Approaches(2024)Waste And Biomass Valorization, 15, 3
22162 Riba, JR; Cantero, R; Riba-Mosoll, P; Puig, R Post-Consumer Textile Waste Classification through Near-Infrared Spectroscopy, Using an Advanced Deep Learning Approach(2022)Polymers, 14.0, 12
23739 Alexakis, G; Maniadakis, M Hyperspectral Classification of Recyclable Plastics in Industrial Setups(2023)
Scroll