This work contributes to the recycling of technical black plastic particles, for example from the automotive or electronics industries. These plastics cannot yet be sorted with sufficient purity (up to 99.9%), which often makes economical recycling impossible. As a solution to this problem, imaging fluorescence spectroscopy with additional illumination in the near infrared spectral range in combination with classification by machine learning or deep learning classification algorithms is here investigated. The algorithms used are linear discriminant analysis (LDA), k-nearest neighbour classification (kNN), support vector machines (SVM), ensemble models with decision trees (ENSEMBLE), and convolutional neural networks (CNNs). The CNNs in part...
Plastics play an important role in manufacture and our daily life. In order to realize fast classifi...
To recycle the mixed plastic wastes (MPW), it is important to obtain the compositional information o...
Speed, safety and efficiency are the key to any industrial progress. We as human beings, get astound...
Pollution and climate change are some of the biggest challenges facing humanity. Moreover, for a sus...
Pollution and climate change are some of the biggest challenges that humanity is facing. In such a c...
We present a combination of convolutional neural network (CNN) framework and fast MIR (mid-infrared ...
Mismanagement of plastic waste globally has resulted in a multitude of environmental issues, which c...
The classification of plastic waste before recycling is of great significance to achieve effective r...
Plastic waste issues emerged from the build-up of plastics that negatively impacts the environment. ...
We present a convolutional neural network (CNN) framework for classifying different types of plastic...
A method for sorting plastic waste is developed. This method pretends to classify polymers by types ...
Nowadays, plastic usage and production is increasing leading to an augmentation in waste generation ...
Plastics are very valuable material for their desirable characteristics being one of them, their dur...
Near-infrared (NIR) hyperspectral imaging (HSI) was applied together with machine learning methods t...
Whereas plastics are a group of the most useful materials, widely used in all walks of life, the pla...
Plastics play an important role in manufacture and our daily life. In order to realize fast classifi...
To recycle the mixed plastic wastes (MPW), it is important to obtain the compositional information o...
Speed, safety and efficiency are the key to any industrial progress. We as human beings, get astound...
Pollution and climate change are some of the biggest challenges facing humanity. Moreover, for a sus...
Pollution and climate change are some of the biggest challenges that humanity is facing. In such a c...
We present a combination of convolutional neural network (CNN) framework and fast MIR (mid-infrared ...
Mismanagement of plastic waste globally has resulted in a multitude of environmental issues, which c...
The classification of plastic waste before recycling is of great significance to achieve effective r...
Plastic waste issues emerged from the build-up of plastics that negatively impacts the environment. ...
We present a convolutional neural network (CNN) framework for classifying different types of plastic...
A method for sorting plastic waste is developed. This method pretends to classify polymers by types ...
Nowadays, plastic usage and production is increasing leading to an augmentation in waste generation ...
Plastics are very valuable material for their desirable characteristics being one of them, their dur...
Near-infrared (NIR) hyperspectral imaging (HSI) was applied together with machine learning methods t...
Whereas plastics are a group of the most useful materials, widely used in all walks of life, the pla...
Plastics play an important role in manufacture and our daily life. In order to realize fast classifi...
To recycle the mixed plastic wastes (MPW), it is important to obtain the compositional information o...
Speed, safety and efficiency are the key to any industrial progress. We as human beings, get astound...