利用考虑到可穿越区域阴影的彩色点云创建语义分割数据集

Pub Date : 2023-12-20 DOI:10.20965/jrm.2023.p1406
Marin Wada, Yuriko Ueda, Junya Morioka, Miho Adachi, Ryusuke Miyamoto
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引用次数: 0

摘要

语义分割可为输入图像提供像素级标签,有望显著提高自主机器人的运动性能。然而,要为目标应用训练出一个好的分类器并不容易;公开的大规模数据集通常并不适合。事实上,在筑波挑战赛中,使用城市景观训练的分类器不够准确。为了生成适合目标环境的数据集,我们尝试使用三维扫描仪获得的彩色点云构建一种半自动方法。虽然达到了一定的精确度,但并不实用。因此,我们提出了一种新方法,通过在三维空间中渲染阴影来创建有阴影的图像,以提高有阴影的实际图像的分类准确性,而现有的方法并不能输出适当的结果。使用在筑波市政厅周围捕获的数据集进行的实验结果表明,在阴影生成过程中应用适当的限制条件时,所提出的方法更胜一筹;在不同地点获取测试图像时,mIoU 从 0.358 提高到 0.491。
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Dataset Creation for Semantic Segmentation Using Colored Point Clouds Considering Shadows on Traversable Area
Semantic segmentation, which provides pixel-wise class labels for an input image, is expected to improve the movement performance of autonomous robots significantly. However, it is difficult to train a good classifier for target applications; public large-scale datasets are often unsuitable. Actually, a classifier trained using Cityscapes is not enough accurate for the Tsukuba Challenge. To generate an appropriate dataset for the target environment, we attempt to construct a semi-automatic method using a colored point cloud obtained with a 3D scanner. Although some degree of accuracy is achieved, it is not practical. Hence, we propose a novel method that creates images with shadows by rendering them in the 3D space to improve the classification accuracy of actual images with shadows, for which existing methods do not output appropriate results. Experimental results using datasets captured around the Tsukuba City Hall demonstrate that the proposed method was superior when appropriate constraints were applied for shadow generation; the mIoU was improved from 0.358 to 0.491 when testing images were obtained at different locations.
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