Improving Instance Segmentation using Synthetic Data with Artificial Distractors

Kanghyun Park, Hyeongkeun Lee, Hunmin Yang, Se-Yoon Oh
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引用次数: 1

Abstract

Despite the advances in deep learning, training instance segmentation models like convolutional neural networks still tend to depend on enormous training data that are expensive and require labor to annotation. To avoid labor-intensive procedure, synthetic data can be an alternative because it is easy to generate and automatically segmented. However, it is challenging to train instance segmentation model that perform well at real world using only synthetic data because of domain gap. It is wrong direction to put a lot of effort into solving these problems by making synthetic data more photorealistic. In this paper, we suggest how to learn the instance segmentation model using synthetic data with artificial distractors. The performance has been improved about 7% by adding flying distractors compared to original synthetic data.
基于人工干扰的合成数据分割方法的改进
尽管深度学习取得了进步,但像卷积神经网络这样的训练实例分割模型仍然倾向于依赖于大量昂贵的训练数据,并且需要人工来注释。为了避免劳动密集型的过程,可以选择合成数据,因为它易于生成和自动分割。然而,由于领域差距的存在,仅使用合成数据来训练在现实世界中表现良好的实例分割模型是一项挑战。通过使合成数据更逼真来解决这些问题是错误的方向。在本文中,我们提出了如何使用人工干扰的合成数据来学习实例分割模型。与原始合成数据相比,加入飞行干扰物后,性能提高了约7%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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