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TrashNeXt Dataset
- Citation Author(s):
- Submitted by:
- Jahid Tanvir
- Last updated:
- Wed, 03/12/2025 - 19:29
- DOI:
- 10.21227/arx6-f723
- Research Article Link:
- License:
- Categories:
- Keywords:
Abstract
An automatic waste classification system embedded with higher accuracy and precision of convolution neural network (CNN) model can significantly the reduce manual labor involved in recycling. The ConvNeXt architecture has gained remarkable improvements in image recognition. A larger dataset, called TrashNeXt, comprising 23,625 images across nine categories has been introduced in this study by combining and thoroughly analyzing various pre-existing datasets. The deep transfer learning (DTL)-based proposed model achieved the highest accuracy of 94.97% compared to other CNN models by applying image augmentation and comprehensively fine-tuning hyperparameters. Additionally, the trained and optimized weights are utilized to classify water-bound liter objects.
Class NameTrainValidTestTotal
cardboard18862362352357
e-waste24043013013006
foam_rubber22882862862860
glass20092512522512
medical15651961961957
metal20652582582581
organic23912992992989
paper21552692702694
plastic21352672672669
Total188982363236423,625
Readme
There are a total of 23,625 waste images belonging to 9 distinct classes or labels, which are cardboard, e-waste, foam_rubber, glass, medical, metal, organic, paper,
and plastic. The dataset are split into 2 portions - training dataset, and test_valid dataset. The ratio of test-train split is 80:10:10. An classification test
accuracy of 94.97% was achieveb by transfer learning algorithm based on ConvNeXt architecture.
We request you to properly cite the published journal.
Journal link: https://doi.org/10.1016/j.cscee.2024.101073
Documentation
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