Deep Learning for Plastic Waste Classification System

被引:72
作者
Bobulski, Janusz [1 ]
Kubanek, Mariusz [1 ]
机构
[1] Czestochowa Tech Univ, Dept Comp Sci, Czestochowa, Poland
关键词
CONSTRUCTION; QUALITY;
D O I
10.1155/2021/6626948
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Plastic waste management is a challenge for the whole world. Manual sorting of garbage is a difficult and expensive process, which is why scientists create and study automated sorting methods that increase the efficiency of the recycling process. The plastic waste may be automatically chosen on a transmission belt for waste removal by using methods of image processing and artificial intelligence, especially deep learning, to improve the recycling process. Waste segregation techniques and procedures are applied to major groups of materials such as paper, plastic, metal, and glass. Though, the biggest challenge is separating different materials types in a group, for example, sorting different colours of glass or plastics types. The issue of plastic garbage is important due to the possibility of recycling only certain types of plastic (PET can be converted into polyester material). Therefore, we should look for ways to separate this waste. One of the opportunities is the use of deep learning and convolutional neural network. In household waste, the most problematic are plastic components, and the main types are polyethylene, polypropylene, and polystyrene. The main problem considered in this article is creating an automatic plastic waste segregation method, which can separate garbage into four mentioned categories, PS, PP, PE-HD, and PET, and could be applicable on a sorting plant or home by citizens. We proposed a technique that can apply in portable devices for waste recognizing which would be helpful in solving urban waste problems.
引用
收藏
页数:7
相关论文
共 21 条
[11]   Rapid discrimination of plastic packaging materials using MIR spectroscopy coupled with independent components analysis (ICA) [J].
Kassouf, Amine ;
Maalouly, Jacqueline ;
Rutledge, Douglas N. ;
Chebib, Hanna ;
Ducruet, Violette .
WASTE MANAGEMENT, 2014, 34 (11) :2131-2138
[12]   Real-time hyperspectral processing for automatic nonferrous material sorting [J].
Picon, Artzai ;
Ghita, Ovidiu ;
Bereciartua, Aranzazu ;
Echazarra, Jone ;
Whelan, Paul F. ;
Iriondo, Pedro M. .
JOURNAL OF ELECTRONIC IMAGING, 2012, 21 (01)
[13]   Influence of shape and size of the particles on jigging separation of plastics mixture [J].
Pita, Fernando ;
Castilho, Ana .
WASTE MANAGEMENT, 2016, 48 :89-94
[14]  
Radziewicz J., 2019, PROBLEMY GOSPODARKI
[15]   Sorting of polypropylene resins by color in MSW using visible reflectance spectroscopy [J].
Safavi, S. M. ;
Masoumi, H. ;
Mirian, S. S. ;
Tabrizchi, M. .
WASTE MANAGEMENT, 2010, 30 (11) :2216-2222
[16]  
Serranti S., 2010, The Open Waste Manage. J, V3, P56
[17]   Classification of polyolefins from building and construction waste using NIR hyperspectral imaging system [J].
Serranti, Silvia ;
Gargiulo, Aldo ;
Bonifazi, Giuseppe .
RESOURCES CONSERVATION AND RECYCLING, 2012, 61 :52-58
[18]   Characterization of post-consumer polyolefin wastes by hyperspectral imaging for quality control in recycling processes [J].
Serranti, Silvia ;
Gargiulo, Aldo ;
Bonifazi, Giuseppe .
WASTE MANAGEMENT, 2011, 31 (11) :2217-2227
[19]   Industrial application for inline material sorting using hyperspectral imaging in the NIR range [J].
Tatzer, P ;
Wolf, M ;
Panner, T .
REAL-TIME IMAGING, 2005, 11 (02) :99-107
[20]   Upgrading the quality of mixed recycled aggregates from construction and demolition waste by using near-infrared sorting technology [J].
Vegas, Inigo ;
Broos, Kris ;
Nielsen, Peter ;
Lambertz, Oliver ;
Lisbona, Amaia .
CONSTRUCTION AND BUILDING MATERIALS, 2015, 75 :121-128