Automatic recognition of construction waste based on unmanned aerial vehicle images and deep learning

IF 2.7 4区 环境科学与生态学 Q3 ENVIRONMENTAL SCIENCES Journal of Material Cycles and Waste Management Pub Date : 2024-12-10 DOI:10.1007/s10163-024-02136-w
Pengjian Cheng, Zhongshi Pei, Yuheng Chen, Xin Zhu, Meng Xu, Lulu Fan, Junyan Yi
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Abstract

As one of the main components of urban waste, the appropriate disposal of construction waste is crucial for the sustainable development of cities. The recognition and classification of construction waste are crucial components of construction waste management and lay the foundation for high-value applications. This paper utilized unmanned aerial vehicle (UAV) aerial images and the YOLO model to recognize construction waste on-site. A dataset of indoor scattered, indoor dense, and demolition site conditions was established. The impact patterns of epoch number, initial learning rate, and batch-size on the model were discussed, and the optimal parameter values were determined. The influence of training dataset composition was analyzed, indicating that appropriately adding indoor dense condition images helped improve the convergence speed and recognition accuracy. In the model performance validation, the comparison with manually sorting results revealed a high accuracy in recognizing the five types of construction waste. The recall of all five types was around 0.8. The validation results showed that the model can efficiently and accurately recognize and classify construction waste in demolition site images. The proposed method can aid in the rapid assessment and dynamic monitoring of construction waste, thereby enhancing the efficiency of waste management and recycling.

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基于无人机图像和深度学习的建筑垃圾自动识别
作为城市垃圾的主要组成部分之一,建筑垃圾的合理处理对城市的可持续发展至关重要。建筑垃圾的识别和分类是建筑垃圾管理的重要组成部分,为高价值应用奠定了基础。本文利用无人机航拍图像和YOLO模型对建筑垃圾进行现场识别。建立了室内分散、室内密集和拆迁现场条件数据集。讨论了历元数、初始学习率和批大小对模型的影响规律,确定了最优参数值。分析了训练数据集组成的影响,表明适当添加室内密集条件图像有助于提高收敛速度和识别精度。在模型性能验证中,与人工分类结果的对比表明,对五种建筑垃圾的识别准确率较高。所有五种型号的召回率都在0.8左右。验证结果表明,该模型能够高效、准确地对拆迁现场图像中的建筑垃圾进行识别和分类。该方法有助于快速评估和动态监测建筑废物,从而提高废物管理和回收的效率。
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来源期刊
CiteScore
5.30
自引率
16.10%
发文量
205
审稿时长
4.8 months
期刊介绍: The Journal of Material Cycles and Waste Management has a twofold focus: research in technical, political, and environmental problems of material cycles and waste management; and information that contributes to the development of an interdisciplinary science of material cycles and waste management. Its aim is to develop solutions and prescriptions for material cycles. The journal publishes original articles, reviews, and invited papers from a wide range of disciplines related to material cycles and waste management. The journal is published in cooperation with the Japan Society of Material Cycles and Waste Management (JSMCWM) and the Korea Society of Waste Management (KSWM).
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