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 are 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. Recyclable waste detection poses a unique computer vision challenge as it requires detection of highly deformable and often translucent objects in cluttered scenes without the kind of context information usually present in human-centric datasets. This challenging computer vision task currently lacks suitable datasets or methods in the available literature. 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. We believe that ZeroWaste will 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 at http://ai.bu.edu/zerowaste/.
翻译:不到35%的可回收废物正在美国被实际回收,这导致了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。问题的核心是废物分类过程效率低下(分离纸、塑料、金属、玻璃等),因为废物流极其复杂和杂乱。可回收废物的探测带来了独特的计算机愿景挑战,因为它需要检测在封闭的场景中高度变形和经常是转异的物体,而没有通常存在于以人为中心的数据集中的某种背景信息。这一具有挑战性的计算机愿景任务目前缺乏适当的数据集或现有文献中的方法。在本文中,我们迈出一步,以计算机辅助废物的检测,并首次介绍在工业级中发现的废物和分解数据集,ZeroWaste。 我们相信,ZeroWaste将催化在极端的杂乱和回收域的应用中物体检测和语系分割的研究。我们的项目网页可在 http://devai/strestage中找到。