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Smart-sight: Video-based waste characterization for RDF-3 production
Waste Management ( IF 8.1 ) Pub Date : 2024-02-23 , DOI: 10.1016/j.wasman.2024.02.028
Junaid Tahir , Zhigang Tian , Pablo Martinez , Rafiq Ahmad

A material recovery facility (MRF) can transform municipal solid waste (MSW) into a valued commodity called refuse-derived fuel (RDF) as a promising solution to waste-to-energy conversion. The quality of the produced RDF significantly relies on the composition of in-feed waste and waste characterization method applied for auditing purposes, a process that is both time-consuming and fraught with potential hazards. This study focuses to enhance the workflow of the waste characterization process at an MRF. A solution named Smart Sight is proposed to detect and classify waste based on videos recorded after processing MSW through a mechanical sorting line consisting of bag breakers and trommel screens. A comprehensive dataset is created encompassing thirteen mixed waste classes from single and multi-family streams. The dataset is preprocessed with motion compensation techniques and frame differencing methods to extract and refine valuable frames. A one-stage YOLO detector model is then trained over the dataset. The experimental results show that the proposed method works efficiently at detecting and classifying waste objects in indoor MRF environments. Accuracy, precision, recall, and F1 score related to the proposed solution are found to be 0.70, 0.762, 0.69 and 0.72, respectively, with a mAP@ of 0.716. The proposed approach is validated using data collected from local MRF by comparing the estimated waste composition values of the proposed solution with laboratory results obtained through current standardized industrial practices. Comparison reveals that waste characterization estimation obtained is consistent with the laboratory results, inferring that Smart-Sight is a viable tool for estimating waste composition.

中文翻译:

Smart-sight:用于 RDF-3 生产的基于视频的废物表征

材料回收设施 (MRF) 可以将城市固体废物 (MSW) 转化为一种称为垃圾衍生燃料 (RDF) 的有价值的商品,作为废物能源转化的一种有前景的解决方案。生产的 RDF 的质量在很大程度上取决于进料废物的成分和用于审核目的的废物表征方法,该过程既耗时又充满潜在危险。本研究的重点是增强 MRF 废物表征过程的工作流程。提出了一种名为“Smart Sight”的解决方案,用于根据通过由破袋机和滚筒筛组成的机械分拣线处理城市固体废物后记录的视频来检测和分类废物。创建了一个综合数据集,其中包含来自单户和多户流的 13 种混合废物类别。使用运动补偿技术和帧差分方法对数据集进行预处理,以提取和细化有价值的帧。然后在数据集上训练单阶段 YOLO 检测器模型。实验结果表明,该方法可以有效地检测和分类室内 MRF 环境中的废物。与所提出的解决方案相关的准确度、精确度、召回率和 F1 分数分别为 0.70、0.762、0.69 和 0.72,mAP@ 为 0.716。通过将拟议解决方案的估计废物成分值与通过当前标准化工业实践获得的实验室结果进行比较,使用从当地 MRF 收集的数据来验证拟议的方法。比较表明,获得的废物特征估计与实验室结果一致,推断Smart-Sight是估计废物成分的可行工具。
更新日期:2024-02-23
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