基于合成数据集的工业零件仿真分类研究

Xiaomeng Zhu, Talha Bilal, Pär Mårtensson, Lars Hanson, Mårten Björkman, A. Maki
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引用次数: 1

摘要

本文是关于有效地利用合成数据来训练用于工业零件分类的深度神经网络,特别是通过考虑与现实世界图像的域间隙。为此,我们引入了一个合成数据集,可以作为模拟到真实挑战的初步测试平台;它包含6个工业用例的17个对象,包括孤立的和组装的部件。一些物体的子集在形状和反照率上表现出很大的相似性,以反映工业零件的挑战性情况。所有的样本图像都带有或没有随机背景和后处理,以评估领域随机化的重要性。我们称之为合成工业零件数据集(SIP-17)。我们通过对五个最先进的深度网络模型(监督和自监督)的性能进行基准测试来研究SIP-17的实用性,这些模型仅在合成数据上进行训练,同时在真实数据上进行测试。通过分析结果,我们推断了使用合成数据进行工业零件分类的可行性和挑战,以及进一步开发更大规模的合成数据集的一些见解。我们的数据集†和代码‡是公开的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards Sim-to-Real Industrial Parts Classification with Synthetic Dataset
This paper is about effectively utilizing synthetic data for training deep neural networks for industrial parts classification, in particular, by taking into account the domain gap against real-world images. To this end, we introduce a synthetic dataset that may serve as a preliminary testbed for the Sim-to-Real challenge; it contains 17 objects of six industrial use cases, including isolated and assembled parts. A few subsets of objects exhibit large similarities in shape and albedo for reflecting challenging cases of industrial parts. All the sample images come with and without random backgrounds and post-processing for evaluating the importance of domain randomization. We call it Synthetic Industrial Parts dataset (SIP-17). We study the usefulness of SIP-17 through benchmarking the performance of five state-of-the-art deep network models, supervised and self-supervised, trained only on the synthetic data while testing them on real data. By analyzing the results, we deduce some insights on the feasibility and challenges of using synthetic data for industrial parts classification and for further developing larger-scale synthetic datasets. Our dataset † and code ‡ are publicly available.
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