A deep learning approach for medical waste classification

被引:0
作者
Haiying Zhou
Xiangyu Yu
Ahmad Alhaskawi
Yanzhao Dong
Zewei Wang
Qianjun Jin
Xianliang Hu
Zongyu Liu
Vishnu Goutham Kota
Mohamed Hasan Abdulla Hasan Abdulla
Sohaib Hasan Abdullah Ezzi
Binjie Qi
Juan Li
Bixian Wang
Jianyong Fang
Hui Lu
机构
[1] The First Affiliated Hospital,Department of Orthopedics
[2] College of Medicine,Department of Rehabilitation Medicine
[3] Zhejiang University,Department of Infrastructure and General Affairs
[4] The First Affiliated Hospital,School of Mathematical Sciences
[5] College of Medicine,undefined
[6] Zhejiang University,undefined
[7] The First Affiliated Hospital,undefined
[8] College of Medicine,undefined
[9] Zhejiang University,undefined
[10] UniDT Technology (Shanghai) Co.,undefined
[11] Ltd,undefined
[12] Zhejiang Univeristy,undefined
[13] Suzhou Warrior Pioneer Software Co.,undefined
[14] Ltd. (Room 26,undefined
[15] Building 17,undefined
[16] No. 6,undefined
[17] Trade City,undefined
[18] Wuzhong Economic Development Zone),undefined
[19] Alibaba-Zhejiang University Joint Research Center of Future Digital Healthcare,undefined
[20] Zhejiang University,undefined
[21] Zhejiang University School of Medicine,undefined
来源
Scientific Reports | / 12卷
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摘要
As the demand for health grows, the increase in medical waste generation is gradually outstripping the load. In this paper, we propose a deep learning approach for identification and classification of medical waste. Deep learning is currently the most popular technique in image classification, but its need for large amounts of data limits its usage. In this scenario, we propose a deep learning-based classification method, in which ResNeXt is a suitable deep neural network for practical implementation, followed by transfer learning methods to improve classification results. We pay special attention to the problem of medical waste classification, which needs to be solved urgently in the current environmental protection context. We applied the technique to 3480 images and succeeded in correctly identifying 8 kinds of medical waste with an accuracy of 97.2%; the average F1-score of five-fold cross-validation was 97.2%. This study provided a deep learning-based method for automatic detection and classification of 8 kinds of medical waste with high accuracy and average precision. We believe that the power of artificial intelligence could be harnessed in products that would facilitate medical waste classification and could become widely available throughout China.
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