首页> 外文期刊>ISPRS Journal of Photogrammetry and Remote Sensing >Detection and 3D reconstruction of traffic signs from multiple view color images
【24h】

Detection and 3D reconstruction of traffic signs from multiple view color images

机译:从多视图彩色图像中检测和3D重建交通标志

获取原文
获取原文并翻译 | 示例
       

摘要

3D reconstruction of traffic signs is of great interest in many applications such as image-based localization and navigation. In order to reflect the reality, the reconstruction process should meet both accuracy and precision. In order to reach such a valid reconstruction from calibrated multi-view images, accurate and precise extraction of signs in every individual view is a must. This paper presents first an automatic pipeline for identifying and extracting the silhouette of signs in every individual image. Then, a multi-view constrained 3D reconstruction algorithm provides an optimum 3D silhouette for the detected signs. The first step called detection, tackles with a color-based segmentation to generate ROIs (Region of Interests) in image. The shape of every ROI is estimated by fitting an ellipse, a quadrilateral or a triangle to edge points. A ROI is rejected if none of the three shapes can be fitted sufficiently precisely. Thanks to the estimated shape the remained candidates ROIs are rectified to remove the perspective distortion and then matched with a set of reference signs using textural information. Poor matches are rejected and the types of remained ones are identified. The output of the detection algorithm is a set of identified road signs whose silhouette in image plane is represented by and ellipse, a quadrilateral or a triangle. The 3D reconstruction process is based on a hypothesis generation and verification. Hypotheses are generated by a stereo matching approach taking into account epipolar geometry and also the similarity of the categories. The hypotheses that are plausibly correspond to the same 3D road sign are identified and grouped during this process. Finally, all the hypotheses of the same group are merged to generate a unique 3D road sign by a multi-view algorithm integrating a priori knowledges about 3D shape of road signs as constraints. The algorithm is assessed on real and synthetic images and reached and average accuracy of 3.5cm for position and 4.5° for orientation.
机译:交通标志的3D重建在许多应用中都引起了极大的兴趣,例如基于图像的定位和导航。为了反映现实,重建过程应兼顾准确性和准确性。为了从校准的多视图图像中获得这种有效的重建,必须在每个单独的视图中准确准确地提取符号。本文首先提出了一种自动管道,用于识别和提取每个单独图像中的标志轮廓。然后,多视图约束3D重建算法为检测到的信号提供了最佳的3D轮廓。称为检测的第一步是处理基于颜色的分割,以在图像中生成ROI(感兴趣区域)。通过将椭圆,四边形或三角形拟合到边缘点来估计每个ROI的形状。如果三个形状中的任何一个都不能足够精确地拟合,则将拒绝ROI。多亏了估计的形状,剩余的候选ROI被校正以消除透视失真,然后使用纹理信息与一组参考符号进行匹配。不合格的比赛将被拒绝,剩余比赛的类型将被识别。检测算法的输出是一组已识别的路标,其图像平面中的轮廓由椭圆,四边形或三角形表示。 3D重建过程基于假设的生成和验证。假设是通过立体匹配方法生成的,该方法考虑了极线几何以及类别的相似性。在此过程中,可以识别可能与同一3D路标相对应的假设并将其分组。最后,通过将关于路标3D形状的先验知识作为约束的多视图算法合并,将同一组的所有假设合并以生成唯一的3D路标。该算法在真实和合成图像上进行了评估,达到的平均位置精度为3.5厘米,方向精度为4.5度。

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