Less than 35% of recyclable waste is being actually recycled in the US, which leads to increased soil and sea pollution and is one of the major concerns of environmental researchers as well as the common public. At the heart of the problem is the inefficiencies of the waste sorting process (separating paper, plastic, metal, glass, etc.) due to the extremely complex and cluttered nature of the waste stream. Automated waste detection strategies have a great potential to enable more efficient, reliable and safer waste sorting practices, but the literature lacks comprehensive datasets and methodology for the industrial waste sorting solutions. In this paper, we take a step towards computer-aided waste detection and present the first in-the-wild industrial-grade waste detection and segmentation dataset, ZeroWaste. This dataset contains over1800fully segmented video frames collected from a real waste sorting plant along with waste material labels for training and evaluation of the segmentation methods, as well as over6000unlabeled frames that can be further used for semi-supervised and self-supervised learning techniques. ZeroWaste also provides frames of the conveyor belt before and after the sorting process, comprising a novel setup that can be used for weakly-supervised segmentation. We present baselines for fully-, semi- and weakly-supervised segmentation methods. Our experimental results demonstrate that state-of-the-art segmentation methods struggle to correctly detect and classify target objects which suggests the challenging nature of our proposed in-the-wild dataset. We believe that ZeroWastewill catalyze research in object detection and semantic segmentation in extreme clutter as well as applications in the recycling domain. Our project page can be found athttp://ai.bu.edu/zerowaste/.
翻译:不到35%的可回收废物正在美国被实际回收,这导致土壤和海洋污染的增加,也是环境研究人员和普通公众关注的主要问题之一。问题的核心在于废物分类过程(分离纸、塑料、金属、玻璃等)效率低下。由于废物流极其复杂和杂乱,因此废物分类过程(分离纸、塑料、金属、玻璃等)非常复杂。自动废物检测策略具有巨大潜力,可以促进更高效、可靠和安全的废物分类做法,但文献缺乏工业废物分类解决方案的综合数据集和方法。在本文中,我们迈出了计算机辅助废物分类探测的一步,并展示了第一个在焊接工业级废物检测和分解数据集(ZeroWaste)。这个数据集包含超过1800条断层的视频框架,以及用于培训和评估分解方法的垃圾材料标签,以及可进一步用于半监督和自我校正校正的六千条未加标签框架。我们在进行亚化的循环循环循环分析过程中展示了一种具有挑战性的方法。 Zerowasteal 将一个用于进行预测的磁段, 并完整地展示了我们目前用于循环分析的磁段。