Wood Defect Detection Dataset
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资源简介:
To enhance quality control procedures in the wood industry, the authors of the Wood Defect Detection dataset propose new automated vision-based systems. The dataset encompasses over 43,000 labeled defects found on wood surfaces, encompassing ten different types of the most frequently occurring defects. These include live_knot, dead_knot, knots_with_cracks, crack, resin, marrow, quartzite, missing_knot, blue_stain, and overgrown areas. Each image within the dataset is accompanied by a semantic map and a bounding box label, facilitating both semantic segmentation and localization tasks. Notably, all the data were directly collected from a wood production line as part of the manufacturing process. They highlight the significant variability in raw materials and the intricate manufacturing processes, leading to a diverse range of observable structural defects. These defects require assessment by trained specialists through manual processes that are laborious, subject to bias, and less efficient.
为提升木材行业质量控制流程,Wood Defect Detection 数据集的作者们提出了基于新型自动化视觉的系统。该数据集包含超过43,000个在木材表面发现的标记缺陷,涵盖了最常见的十种缺陷类型。这些类型包括活节、死节、带裂纹的节、裂纹、树脂、髓心、石英岩、缺节、蓝变以及过度生长区域。数据集中的每张图像均附有语义图和边界框标签,便于进行语义分割和定位任务。值得注意的是,所有数据均直接从木材生产线中收集,作为制造过程的一部分。作者们强调了原材料在性质上的显著变异以及制造工艺的复杂程度,这些因素导致了可观察到的结构缺陷的多样性。这些缺陷需要通过训练有素的专家通过繁琐、易受偏见且效率较低的手动流程进行评估。
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搜集汇总
数据集介绍

背景与挑战
背景概述
Wood Defect Detection Dataset是一个专注于木材缺陷检测的计算机视觉数据集,发布于2021年,旨在通过自动化系统提升木材工业的质量控制效率。该数据集包含20,276张图像,标注了86,803个对象,涵盖活节、死节、裂纹等10种常见缺陷类型,并提供像素级实例分割和边界框标注,适用于实例分割、语义分割和物体检测任务。数据直接从生产线采集,具有真实工业场景的多样性,但部分图像(约10%)未标注,且未提供预定义的数据划分。
以上内容由遇见数据集搜集并总结生成



