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基于人工智能的塑料垃圾分类方法,利用目标检测模型提高分类效果。

AI-based plastic waste sorting method utilizing object detection models for enhanced classification.

作者信息

Son Junhyeok, Ahn Yuchan

机构信息

Department of Chemical Engineering, Keimyung University, Daegu 42601, Republic of Korea.

Department of Chemical Engineering, Keimyung University, Daegu 42601, Republic of Korea.

出版信息

Waste Manag. 2025 Feb 1;193:273-282. doi: 10.1016/j.wasman.2024.12.014. Epub 2024 Dec 16.

Abstract

The export ban on plastic waste by China has brought domestic plastic recycling to the forefront of environmental concerns, with sorting being a crucial step in the recycling process. This study assessed the performance of advanced AI models, Mask R-CNN, and YOLO v8, in enhancing plastic waste sorting. The models were evaluated in terms of accuracy, mean average precision (mAP), precision, recall, F1 score, and inference time, with hyperparameter tuning performed through grid search. Mask R-CNN, with an accuracy of 0.912 and mAP of 0.911, outperformed YOLO v8 in tasks requiring detailed segmentation, despite a longer inference time of 200-350 ms. Conversely, YOLO v8, with an accuracy of 0.867 and mAP of 0.922, excelled in real-time applications owing to its shorter inference time of 80-160 ms. This study underscores the importance of selecting the appropriate model based on specific application requirements.

摘要

中国对塑料垃圾的出口禁令将国内塑料回收推到了环境问题的前沿,其中分类是回收过程中的关键一步。本研究评估了先进的人工智能模型Mask R-CNN和YOLO v8在加强塑料垃圾分类方面的性能。通过网格搜索进行超参数调整,根据准确率、平均精度均值(mAP)、精确率、召回率、F1分数和推理时间对模型进行评估。Mask R-CNN在需要详细分割的任务中表现优于YOLO v8,其准确率为0.912,mAP为0.911,尽管推理时间较长,为200-350毫秒。相反,YOLO v8的准确率为0.867,mAP为0.922,由于其推理时间较短,为80-160毫秒,在实时应用中表现出色。本研究强调了根据具体应用需求选择合适模型的重要性。

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