Increasing the rate of material identification, separation and recovery is a priority in resource management and recovery, and rapid, low cost imaging and interpretation is key. This study uses different combinations of cameras, illuminations and data augmentation techniques to create databases of images to train deep neural networks for the recognition of fibre materials. Using a limited set of 24 material samples sized 1200 cm2, it compares the outcome of reducing them to 30 cm2. The best classification accuracies obtained range from 76.6% to 77.5% indicating it is possible to overcome problems such as limited available materials, time, or storage capabilities, by using a setup with 5 cameras, 5 lights and applying simple software image m...
This work demonstrates that a transfer learning-based deep learning model can perform unambiguous cl...
Determining the material category of a surface from an image is a demanding task in perception that ...
Urban mining is defined as the process of reclaiming raw materials from spent products, buildings an...
Advanced digital solutions are increasingly introduced into manufacturing systems to make them more ...
Minimization of the environmental impact of the incineration process and to produce energy efficient...
The proper classification and disposal of waste are crucial in reducing environmental impacts and...
To help combat the environmental impacts caused by humans this project is about investigating one wa...
The ever-increasing amount of global refuse is overwhelming the waste and recycling management indus...
Recycling is one of the most important approaches to safeguard the environment since it aims to redu...
Waste management processes generally represent a significant loss of material, energy and economic r...
A key topic in the field of computer vision is image classification, which involves predicting one c...
Waste and related threats are becoming more and more severe problems in environmental security. Ther...
Thanks to the development of artificial intelligence (AI), the outdated trash system now offers bett...
Speed, safety and efficiency are the key to any industrial progress. We as human beings, get astound...
It is possible to divide the materials used in the world into recyclable and nonrecyclable. Biodegra...
This work demonstrates that a transfer learning-based deep learning model can perform unambiguous cl...
Determining the material category of a surface from an image is a demanding task in perception that ...
Urban mining is defined as the process of reclaiming raw materials from spent products, buildings an...
Advanced digital solutions are increasingly introduced into manufacturing systems to make them more ...
Minimization of the environmental impact of the incineration process and to produce energy efficient...
The proper classification and disposal of waste are crucial in reducing environmental impacts and...
To help combat the environmental impacts caused by humans this project is about investigating one wa...
The ever-increasing amount of global refuse is overwhelming the waste and recycling management indus...
Recycling is one of the most important approaches to safeguard the environment since it aims to redu...
Waste management processes generally represent a significant loss of material, energy and economic r...
A key topic in the field of computer vision is image classification, which involves predicting one c...
Waste and related threats are becoming more and more severe problems in environmental security. Ther...
Thanks to the development of artificial intelligence (AI), the outdated trash system now offers bett...
Speed, safety and efficiency are the key to any industrial progress. We as human beings, get astound...
It is possible to divide the materials used in the world into recyclable and nonrecyclable. Biodegra...
This work demonstrates that a transfer learning-based deep learning model can perform unambiguous cl...
Determining the material category of a surface from an image is a demanding task in perception that ...
Urban mining is defined as the process of reclaiming raw materials from spent products, buildings an...