基于数据增强的驾驶员辅助属性感知语义分割性能提升

M. D. Sulistiyo, Yasutomo Kawanishi, Daisuke Deguchi, I. Ide, Takatsugu Hirayama, H. Murase
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引用次数: 2

摘要

本文是我们在开发属性感知语义分割方法的基础上的扩展,该方法主要关注交通场景中行人的理解。近年来,语义分割的热门话题已经扩展到能够与对象的属性识别任务协同工作;这里,它指的是识别行人的身体方向。与传统的语义分割相比,属性感知语义分割更有利于驾驶员辅助,因为它可以为系统提供更多的信息输出。在本文中,我们对数据增强的使用进行了研究,以提高属性感知语义分割任务的性能。实验表明,该方法对训练数据进行扩充,能够提高模型的性能。我们还展示了一些定性结果,并讨论了驾驶员辅助系统的好处。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Performance Boost of Attribute-aware Semantic Segmentation via Data Augmentation for Driver Assistance
This paper is an extension of our work in developing an attribute-aware semantic segmentation method which focuses on pedestrian understanding in a traffic scene. Recently, the trending topic of semantic segmentation has been expanded to be able to collaborate with the object’s attributes recognition task; Here, it refers to recognizing a pedestrian’s body orientation. The attribute-aware semantic segmentation can be more beneficial for driver assistance compared to the conventional semantic segmentation because it can provide a more informative output to the system. In this paper, we conduct a study of the data augmentation usage as an effort to enhance the performance of the attribute-aware semantic segmentation task. The experiments show that the proposed method in augmenting the training data is able to improve the model’s performance. We also demonstrate some of qualitative results and discuss the benefits to a driver assistance system.
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