This work presents the Industrial Hand Action Dataset V1, an industrial assembly dataset consisting of 12 classes with 459,180 images in the basic version and 2,295,900 images after spatial augmentation. Compared to other freely available datasets tested, it has an above-average duration and, in addition, meets the technical and legal requirements for industrial assembly lines. Furthermore, the dataset contains occlusions, hand-object interaction, and various fine-grained human hand actions for industrial assembly tasks that were not found in combination in examined datasets. The recorded ground truth assembly classes were selected after extensive observation of real-world use cases. A Gated Transformer Network, a state-of-the-art model from the transformer domain was adapted, and proved with a test accuracy of 86.25% before hyperparameter tuning by 18,269,959 trainable parameters, that it is possible to train sequential deep learning models with this dataset.
翻译:这项工作介绍了工业手动数据集V1, 工业组装数据集,由12个类别组成,基本版本有459,180个图像,空间扩增后有2,295,900个图像。与其他可自由获取的数据集相比,该数据集的有效期高于平均水平,而且符合工业组装线的技术和法律要求。此外,该数据集包含工业组装任务的分解、手对手提物体的交互作用以及各种细微的人类手动动作,而这些动作在被检查的数据集中没有找到。 记录下来的地面真象组装类是在广泛观察真实世界使用案例后选定的。 变压器域中最先进的模型Gated Transforer Network得到调整, 测试精度为86.25%,然后用18,269,959个可培训参数对超参数进行调试调,因此有可能用该数据集来培训深层次的学习模型。</s>