【24h】

Primitive Fitting Using Deep Geometric Segmentation

机译:使用深几何分割的原始拟合

获取原文

摘要

To identify and fit geometric primitives (e.g., planes, spheres, cylinders, cones) in a noisy point cloud is a challenging yet beneficial task for fields such as reverse engineering and as-built BIM. As a multi-model multi-instance fitting problem, it has been tackled with different approaches including RANSAC, which however often fit inferior models in practice with noisy inputs of cluttered scenes. Inspired by the corresponding human recognition process, and benefiting from the recent advancements in image semantic segmentation using deep neural networks, we propose BAGSFit as a new framework addressing this problem. Firstly, through a fully convolutional neural network, the input point cloud is point-wisely segmented into multiple classes divided by jointly detected instance boundaries without any geometric fitting. Thus, segments can serve as primitive hypotheses with a probability estimation of associating primitive classes. Finally, all hypotheses are sent through a geometric verification to correct any misclassification by fitting primitives respectively. We performed training using simulated range images and tested it with both simulated and real-world point clouds. Quantitative and qualitative experiments demonstrated the superiority of BAGSFit.
机译:为了在有噪声的点云识别和适合的几何图元(例如,平面,球,圆柱体,圆锥体)为等领域逆向工程和竣工BIM一个挑战尚未有益的任务。作为一种多模式多实例安装的问题,已经解决了不同的方法,包括RANSAC,然而这往往适合劣质模型在实践中混乱的场面嘈杂的投入。通过相应的人类识别过程的启发,并在图像语义分割使用深层神经网络的最新发展中受益,我们建议BAGSFit作为一个新的框架解决这一问题。首先,通过一个完全卷积神经网络中,输入点云是点明智地分割为多个类,没有任何几何拟合通过共同检测到的实例的边界划分。因此,段可以作为与原始类相关联的概率估计原始假设。最后,所有的假设都是通过几何验证发送到纠正分别拟合图元的任何错误分类。我们使用模拟范围图像进行培训和模拟都和真实世界的点云进行了测试。定量和定性实验证明BAGSFit的优越性。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号