Department of Real Estate and Construction, The University of Hong Kong, Pokfulam Road, Hong Kong, China.
Department of Real Estate and Construction, The University of Hong Kong, Pokfulam Road, Hong Kong, China.
Waste Manag. 2022 Apr 1;142:29-43. doi: 10.1016/j.wasman.2022.02.009. Epub 2022 Feb 13.
Waste sorting is highly recommended for municipal solid waste (MSW) management. Increasingly, computer vision (CV), robotics, and other smart technologies are used for MSW sorting. Particularly, the field of CV-enabled waste sorting is experiencing an unprecedented explosion of academic research. However, little attention has been paid to understanding its evolvement path, status quo, and prospects and challenges ahead. To address the knowledge gap, this paper provides a critical review of academic research that focuses on CV-enabled MSW sorting. Prevalent CV algorithms, in particular their technical rationales and prediction performance, are introduced and compared. The distribution of academic research outputs is also examined from the aspects of waste sources, task objectives, application domains, and dataset accessibility. The review discovers a trend of shifting from traditional machine learning to deep learning algorithms. The robustness of CV for waste sorting is increasingly enhanced owing to the improved computation powers and algorithms. Academic studies were unevenly distributed in different sectors such as household, commerce and institution, and construction. Too often, researchers reported some preliminary studies using simplified environments and artificially collected data. Future research efforts are encouraged to consider the complexities of real-world scenarios and implement CV in industrial waste sorting practice. This paper also calls for open sharing of waste image datasets for interested researchers to train and evaluate their CV algorithms.
垃圾分类对于城市固体废物(MSW)管理非常重要。越来越多的计算机视觉(CV)、机器人技术和其他智能技术被用于 MSW 分类。特别是,CV 支持的废物分类领域正在经历一场前所未有的学术研究热潮。然而,很少有人关注理解其演变路径、现状以及未来的前景和挑战。为了解决这一知识差距,本文对专注于 CV 支持的 MSW 分类的学术研究进行了批判性回顾。介绍并比较了流行的 CV 算法,特别是它们的技术原理和预测性能。还从废物来源、任务目标、应用领域和数据集可访问性等方面检查了学术研究成果的分布。该综述发现,从传统机器学习到深度学习算法的转变趋势。由于计算能力和算法的提高,CV 对废物分类的稳健性也越来越强。学术研究在家庭、商业和机构、建筑等不同领域的分布不均。研究人员经常使用简化的环境和人工收集的数据报告一些初步研究。鼓励未来的研究工作考虑到实际场景的复杂性,并将 CV 应用于工业废物分类实践中。本文还呼吁开放共享废物图像数据集,以供有兴趣的研究人员训练和评估他们的 CV 算法。