Deep Learning based Image Recognition for Separation of Recycling Waste
Year 2024,
Volume: 2 Issue: 1, 25 - 28, 30.06.2024
Mehmet Bahadır Çetinkaya
,
Nihat Akdamar
,
Meriç Anıl Alkan
,
Hazal Bölükbaşı
Abstract
Recycling waste sorting with high accuracy has become a significant area of research in recent years due to its direct effect on environment and economy. Computer-aided approaches are able to provide effective performances in recycling processes which consist of big data sizes. In this work, a deep learning (DL) based image analysis approach has been improved by using Python programming language and the YOLOv8x DL algorithm to optimize the recycling processes. From the simulation results, it can be concluded that DL-based approaches are able to provide high accuracy in image recognition and can successfully be used in processing of big data sets.
Supporting Institution
This work has been supported by Scientific and Technological Research Council of Turkey (TUBITAK) under TUBITAK-2209 A Program
Project Number
Application number: 1919B012200459
References
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image segmentation. Inform in Medic Unlocked 2020; 18:1-
12.
- [2] Kodipalli A, Guha S, Dasar S, İsmail T. An inception-ResNet
deep learning approach to classify tumours in the ovary as
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Accurate classification of cherry fruit using deep CNN based
on hybrid pooling approach. Postharvest Biology Tech
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for cotton leaf disease and pest diagnosis. J Elect Comp Eng
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deep learning and artificial neural network. IEEE Access
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classification algorithms based on traditional machine
learning and deep learning. Pattern Recog Letters
2021;141:61-67.
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method for remote sensing images. IEEE Access
2023;11:125122-125137.
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In Proceedings of 3rd International Conference for Learning
Representations, 2015, pp. 1-9.
Deep Learning based Image Recognition for Separation of Recycling Waste
Year 2024,
Volume: 2 Issue: 1, 25 - 28, 30.06.2024
Mehmet Bahadır Çetinkaya
,
Nihat Akdamar
,
Meriç Anıl Alkan
,
Hazal Bölükbaşı
Abstract
Recycling waste sorting with high accuracy has become a significant area of research in recent years due to its direct effect on environment and economy. Computer-aided approaches are able to provide effective performances in recycling processes which consist of big data sizes. In this work, a deep learning (DL) based image analysis approach has been improved by using Python programming language and the YOLOv8x DL algorithm to optimize the recycling processes. From the simulation results, it can be concluded that DL-based approaches are able to provide high accuracy in image recognition and can successfully be used in processing of big data sets.
Project Number
Application number: 1919B012200459
References
- [1] Haque IR, Neubert J. Deep learning approaches to biomedical
image segmentation. Inform in Medic Unlocked 2020; 18:1-
12.
- [2] Kodipalli A, Guha S, Dasar S, İsmail T. An inception-ResNet
deep learning approach to classify tumours in the ovary as
benign and malignant. Expert Syst 2022;e13215:1-11.
- [3] Momeny M, Jahanbakhshi A, Jafarnezhad K, Zhang YD.
Accurate classification of cherry fruit using deep CNN based
on hybrid pooling approach. Postharvest Biology Tech
2020;166: 1-9.
- [4] Zekiwos M, Bruck A. Deep learning-based image processing
for cotton leaf disease and pest diagnosis. J Elect Comp Eng
2021;2021:1-10,
- [5] Huixian J. The analysis of plants image recognition based on
deep learning and artificial neural network. IEEE Access
2020;8:68828-68841.
- [6] Wang P, Fan E, Wang P. Comparative analysis of image
classification algorithms based on traditional machine
learning and deep learning. Pattern Recog Letters
2021;141:61-67.
- [7] Shen L, Lang B, Song Z. DS-YOLOv8-based object detection
method for remote sensing images. IEEE Access
2023;11:125122-125137.
- [8] Kingma DP, Ba J. Adam: A method for stochastic optimization.
In Proceedings of 3rd International Conference for Learning
Representations, 2015, pp. 1-9.