Improvement of EfficientNet in medical waste classification

Xiaomo Wang
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Abstract

In recent years, medical waste has gained attention due to its hazardous nature, complexity, and high cost of manual sorting and management. Therefore, it is crucial to develop classification systems that are accurate and efficient. This study analyzes various deep learning models for medical waste classification, compares their accuracies in image recognition, and provides an in-depth analysis of EfficientNet, a classification model that is well-suited to handle large amounts of waste mixing. EfficientNet’s superior performance can be adapted to numerous potential scenarios in medical waste, and its improved performance is also very promising in the field of medical waste classification. The data demonstrate its significant advantages over other models, indicating broad application prospects and economic benefits.
改进医疗废物分类中的 EfficientNet
近年来,医疗废物因其危险性、复杂性以及人工分类和管理的高成本而备受关注。因此,开发准确高效的分类系统至关重要。本研究分析了用于医疗废物分类的各种深度学习模型,比较了它们在图像识别中的准确性,并深入分析了适合处理大量废物混合的分类模型 EfficientNet。EfficientNet 的优越性能可适用于医疗废物中的众多潜在场景,其性能的提升在医疗废物分类领域也大有可为。数据表明,与其他模型相比,EfficientNet 具有显著优势,具有广阔的应用前景和经济效益。
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