基础模型在垃圾分类中的泛化能力

IF 7.1 2区 环境科学与生态学 Q1 ENGINEERING, ENVIRONMENTAL
Aloïs Babé , Rémi Cuingnet , Mihaela Scuturici , Serge Miguet
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引用次数: 0

摘要

基于计算机视觉的工业废物分类系统需要具有较强的跨地点、跨时间段的泛化能力。本研究调查了基础模型的潜力,以其对广泛任务的适应性和有希望的泛化能力而闻名,作为此类系统的基础。为了评估基础模型的泛化性能,我们使用了五个跨越不同领域的废物分类数据集,在一个数据集上训练模型,并在所有其他数据集上测试它们。此外,我们探索了各种训练程序,以优化该特定领域的基础模型适应性。我们的研究结果表明,与标准模型相比,基础模型具有更好的泛化能力,并且良好的泛化性能与模型大小和模型预训练数据集的大小相关。此外,我们证明了从基础模型中提取判别特征并不需要复杂的分类器头。标准微调和参数有效微调(PEFT)都提高了泛化性能,PEFT对较大的模型特别有效。简单的数据增强技术被发现是无效的。总的来说,基础模型在工业废物分类中的应用取得了很好的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Generalization abilities of foundation models in waste classification
Industrial waste classification systems based on computer vision require strong generalization abilities across location and time period in order to be deployed. This study investigates the potential of foundation models, known for their adaptability to a wide range of tasks and promising generalization capabilities, to serve as the basis for such systems. To evaluate the generalization performance of foundation models we use five waste classification datasets spanning various domains, train the models on one dataset and test them on all others. Additionally, we explore various training procedures to optimize foundation model adaptation for this specific domain. Our findings reveal that foundation models exhibit superior generalization abilities compared to standard models and that good generalization performance is correlated with the model size and the size of the model pretraining dataset. Furthermore, we demonstrate that elaborate classifier heads are not necessary for extracting discriminative features from foundation models. Both standard fine-tuning and Parameter-Efficient Fine-tuning (PEFT) improve generalization performance, with PEFT being particularly effective for larger models. Simple data augmentation techniques were found to be ineffective. Overall, application of foundation models to industrial waste classification holds very promising results.
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来源期刊
Waste management
Waste management 环境科学-工程:环境
CiteScore
15.60
自引率
6.20%
发文量
492
审稿时长
39 days
期刊介绍: Waste Management is devoted to the presentation and discussion of information on solid wastes,it covers the entire lifecycle of solid. wastes. Scope: Addresses solid wastes in both industrialized and economically developing countries Covers various types of solid wastes, including: Municipal (e.g., residential, institutional, commercial, light industrial) Agricultural Special (e.g., C and D, healthcare, household hazardous wastes, sewage sludge)
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