Prasad Vineet, Arashpour Mehrdad
Department of Civil Engineering, Monash University, Melbourne, Australia.
J Environ Manage. 2024 Mar;354:120313. doi: 10.1016/j.jenvman.2024.120313. Epub 2024 Feb 16.
This paper addresses the critical environmental issue of effectively managing construction and demolition waste (CDW), which has seen a global surge due to rapid urbanization. With the advent of deep learning-based computer vision, this study focuses on improving intelligent identification of valuable recyclables from cluttered and heterogeneous CDW streams in material recovery facilities (MRFs) by optimally leveraging both visual and spatial features (depth). A high-quality CDW RGB-D dataset was curated to capture MRF stream complexities often overlooked in prior studies, and comprises over 3500 images for each modality and more than 160,000 dense object instances of diverse CDW materials with high resource value. In contrast to former studies which directly concatenate RGB and depth features, this study introduces a new depth fusion strategy that utilizes computationally efficient convolutional operations at the end of the conventional waste segmentation architecture to effectively fuse colour and depth information. This avoids cross-modal interference and maximizes the use of distinct information present in the two different modalities. Despite the high clutter and diversity of waste objects, the proposed RGB-DL architecture achieves a 13% increase in segmentation accuracy and a 36% reduction in inference time when compared to the direct concatenation of features. The findings of this study emphasize the benefit of effectively incorporating geometrical features to complement visual cues. This approach helps to deal with the cluttered and varied nature of CDW streams, enhancing automated waste recognition accuracy to improve resource recovery in MRFs. This, in turn, promotes intelligent solid waste management for efficiently managing environmental concerns.
本文探讨了有效管理建筑和拆除废物(CDW)这一关键环境问题,由于快速城市化,CDW在全球范围内激增。随着基于深度学习的计算机视觉的出现,本研究专注于通过优化利用视觉和空间特征(深度),提高在材料回收设施(MRF)中从杂乱且异质的CDW流中智能识别有价值可回收物的能力。精心策划了一个高质量的CDW RGB-D数据集,以捕捉先前研究中经常被忽视的MRF流复杂性,每个模态包含超过3500张图像以及超过160,000个具有高资源价值的不同CDW材料的密集物体实例。与以前直接连接RGB和深度特征的研究不同,本研究引入了一种新的深度融合策略,该策略在传统废物分割架构的末尾利用计算效率高的卷积操作来有效融合颜色和深度信息。这避免了跨模态干扰,并最大限度地利用了两种不同模态中存在的独特信息。尽管废物对象高度杂乱且多样,但与直接连接特征相比,所提出的RGB-DL架构在分割精度上提高了13%,推理时间减少了36%。本研究结果强调了有效纳入几何特征以补充视觉线索的好处。这种方法有助于应对CDW流的杂乱和多样性质,提高自动废物识别准确性,以改善MRF中的资源回收。这反过来又促进了智能固体废物管理,以有效管理环境问题。