Medical Waste Classification using Deep Learning and Convolutional Neural Networks

Mark Verma, Arun Kumar, Somesh Kumar
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Abstract

With the rise of attention to healthcare since the start of the century, which the recent pandemic has emphasized, the number of hospitals and clinics has increased exponentially. The growth in hospitals and patients has also resulted in increased medical waste. The different kinds of medical waste must be segregated and disposed of properly to prevent the spread of bacteria and viruses and cross-contamination. However, it is not economically feasible to hire a workforce that can segregate said waste. With the perceived popularity of deep learning and image classification systems, creating a Deep Learning model to categorize the different kinds of medical waste is possible. Hence using a deep learning-based classification method in which an appropriate pre-trained model is selected for practical implementation, followed by transfer learning methods to improve classification results, is appropriate. Different types of medical waste are grouped into umbrella categories(general, hazardous, infectious). An ideal situation would be where images are uploaded, and the machine can classify the presented waste appropriately with little to no waiting times. Three out of four of the modified pre-trained models with different architectures were able to achieve an accuracy above 95 percent.
使用深度学习和卷积神经网络的医疗废物分类
随着本世纪以来对保健的重视程度的提高(最近的大流行病强调了这一点),医院和诊所的数量呈指数级增长。医院和病人的增加也导致医疗废物的增加。不同种类的医疗废物必须进行分类和妥善处理,防止细菌和病毒的传播和交叉污染。然而,从经济上讲,雇佣一个能够隔离这些废物的劳动力是不可行的。随着深度学习和图像分类系统的普及,创建一个深度学习模型来分类不同类型的医疗废物是可能的。因此,使用基于深度学习的分类方法是合适的,其中选择适当的预训练模型进行实际实施,然后使用迁移学习方法来提高分类结果。不同类型的医疗废物分为总类别(一般、危险、传染性)。理想的情况是,上传图像后,机器可以对呈现的废物进行适当分类,几乎不需要等待时间。四分之三具有不同架构的修改预训练模型能够达到95%以上的准确率。
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