Sensor-based characterization of construction and demolition waste at high occupancy densities using synthetic training data and deep learning.

IF 3.7 4区 环境科学与生态学 Q3 ENGINEERING, ENVIRONMENTAL
Waste Management & Research Pub Date : 2024-09-01 Epub Date: 2024-02-22 DOI:10.1177/0734242X241231410
Felix Kronenwett, Georg Maier, Norbert Leiss, Robin Gruna, Volker Thome, Thomas Längle
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引用次数: 0

Abstract

Sensor-based monitoring of construction and demolition waste (CDW) streams plays an important role in recycling (RC). Extracted knowledge about the composition of a material stream helps identifying RC paths, optimizing processing plants and form the basis for sorting. To enable economical use, it is necessary to ensure robust detection of individual objects even with high material throughput. Conventional algorithms struggle with resulting high occupancy densities and object overlap, making deep learning object detection methods more promising. In this study, different deep learning architectures for object detection (Region-based CNN/Region-based Convolutional Neural Network (Faster R-CNN), You only look once (YOLOv3), Single Shot MultiBox Detector (SSD)) are investigated with respect to their suitability for CDW characterization. A mixture of brick and sand-lime brick is considered as an exemplary waste stream. Particular attention is paid to detection performance with increasing occupancy density and particle overlap. A method for the generation of synthetic training images is presented, which avoids time-consuming manual labelling. By testing the models trained on synthetic data on real images, the success of the method is demonstrated. Requirements for synthetic training data composition, potential improvements and simplifications of different architecture approaches are discussed based on the characteristic of the detection task. In addition, the required inference time of the presented models is investigated to ensure their suitability for use under real-time conditions.

利用合成训练数据和深度学习,基于传感器表征高居住密度下的建筑和拆除垃圾。
基于传感器的建筑和拆除废物(CDW)流监测在回收利用(RC)中发挥着重要作用。提取的有关材料流成分的知识有助于确定回收路径、优化加工厂并为分类奠定基础。为了实现经济高效的使用,有必要确保即使在材料吞吐量很高的情况下也能对单个物体进行稳健的检测。传统算法难以解决高占用密度和物体重叠的问题,因此深度学习物体检测方法更有前途。在本研究中,针对物体检测的不同深度学习架构(基于区域的 CNN/基于区域的卷积神经网络(Faster R-CNN)、YOLOv3(You only look once)、SSD(Single Shot MultiBox Detector)),研究了它们是否适用于 CDW 特征描述。砖和砂石砖的混合物被视为废物流的典范。特别关注了随着占用密度和颗粒重叠度的增加而提高的检测性能。本文介绍了一种生成合成训练图像的方法,该方法避免了耗时的人工标记。通过在真实图像上测试在合成数据上训练的模型,证明了该方法的成功。根据检测任务的特点,讨论了合成训练数据组成的要求、不同架构方法的潜在改进和简化。此外,还研究了所提出模型所需的推理时间,以确保其适合在实时条件下使用。
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来源期刊
Waste Management & Research
Waste Management & Research 环境科学-工程:环境
CiteScore
8.50
自引率
7.70%
发文量
232
审稿时长
4.1 months
期刊介绍: Waste Management & Research (WM&R) publishes peer-reviewed articles relating to both the theory and practice of waste management and research. Published on behalf of the International Solid Waste Association (ISWA) topics include: wastes (focus on solids), processes and technologies, management systems and tools, and policy and regulatory frameworks, sustainable waste management designs, operations, policies or practices.
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