Measuring Waste Recyclability Level Using Convolutional Neural Network and Fuzzy Inference System

This paper presents a hybrid model that is used to measure the waste recyclability level using a convolutional neural network (CNN) and fuzzy inference system (FIS; WRL-CNNFIS). The proposed system uses waste images to train a multilayer convolutional neural network to extract the most relevant features that were used in a rule-based fuzzy system to give an accurate percentage of the recyclability level of these images. The proposed model did overcome many challenges in transfer learning models alone, like overfitting and low accuracy. The use of fuzzy rules, improved the performance even with a small data set, Results have shown the effectiveness of the proposed model in terms of all four metrics: accuracy, precision, recall, and F1 score. The performance was measured under two testing scenarios. For all evaluation measurement, in all experiments the validation was conducted using the cross validation in the last step. The proposed approach is a robust and consistent approach for classifying organic and recyclable waste types. WRL-CNNFIS has achieved accuracy rate of more than 98%.

[1]  Vincent Andrearczyk,et al.  On the Scale Invariance in State of the Art CNNs Trained on ImageNet , 2021, Mach. Learn. Knowl. Extr..

[2]  H. S. Nam,et al.  Implementation and Performance Evaluation of Farm Waste Image Classification System using CNN-based Transfer Learning Models , 2021, Journal of Rehabilitation Welfare Engineering & Assistive Technology.

[3]  Leandro D. Medus,et al.  Hyperspectral image classification using CNN: Application to industrial food packaging , 2021, Food Control.

[4]  S. Altikat,et al.  Intelligent solid waste classification using deep convolutional neural networks , 2021, International Journal of Environmental Science and Technology.

[5]  Seong-Whan Lee,et al.  Adaptive transfer learning for EEG motor imagery classification with deep Convolutional Neural Network , 2020, Neural Networks.

[6]  Yunyi Liao,et al.  A Web-Based Dataset for Garbage Classification Based on Shanghai’s Rule , 2020 .

[7]  T. Kiran COMPUTER VISION ACCURACY ANALYSIS WITH DEEP LEARNING MODEL USING TENSORFLOW , 2020, International Journal of Innovative Research in Computer Science & Technology.

[8]  Jacklin Presilla Gounder,et al.  Waste Segregation Using Smart Bin and Optimization of Collection Routes , 2020, SSRN Electronic Journal.

[9]  Songcan Chen,et al.  Guided CNN for generalized zero-shot and open-set recognition using visual and semantic prototypes , 2020, Pattern Recognition.

[10]  Qassim Nasir,et al.  Artificial intelligence applications in solid waste management: A systematic research review. , 2020, Waste management.

[11]  Junhao Wen,et al.  Exudate Detection for Diabetic Retinopathy Using Pretrained Convolutional Neural Networks , 2020, Complex..

[12]  R. R. Sedamkar,et al.  Detecting Affect States Using VGG16, ResNet50 and SE-ResNet50 Networks , 2020, SN Computer Science.

[13]  Chenxi Liu,et al.  A Modeling Method for Automatic Extraction of Offshore Aquaculture Zones Based on Semantic Segmentation , 2020, ISPRS Int. J. Geo Inf..

[14]  R. Sidortsov,et al.  Sorting out a problem: A co-production approach to household waste management in Shanghai, China. , 2019, Waste management.

[15]  R Sarc,et al.  Digitalisation and intelligent robotics in value chain of circular economy oriented waste management - A review. , 2019, Waste management.

[16]  N. Diffenbaugh,et al.  Global warming has increased global economic inequality , 2019, Proceedings of the National Academy of Sciences.

[17]  Nazmul Huda,et al.  Ensuring best E-waste recycling practices in developed countries: An Australian example , 2019, Journal of Cleaner Production.

[18]  Xiaogang Xiong,et al.  Multilayer Hybrid Deep-Learning Method for Waste Classification and Recycling , 2018, Comput. Intell. Neurosci..

[19]  Farid Melgani,et al.  Ensemble of Deep Models for Event Recognition , 2018, ACM Trans. Multim. Comput. Commun. Appl..

[20]  Ruoyu Jin,et al.  An empirical study of perceptions towards construction and demolition waste recycling and reuse in China , 2017 .

[21]  Geoffrey E. Hinton,et al.  ImageNet classification with deep convolutional neural networks , 2012, Commun. ACM.

[22]  Perrine Chancerel,et al.  Recycling-oriented characterization of small waste electrical and electronic equipment. , 2009, Waste management.

[23]  Cihan H. Dagli,et al.  Efficient Architecture Search for Deep Neural Networks , 2020 .

[24]  Ying Wang,et al.  Autonomous garbage detection for intelligent urban management , 2018 .