Six-Degree-of-Freedom Pose Estimation Method for Multi-Source Feature Points Based on Fully Convolutional Neural Network

IF 3.1 4区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Junxiao Wang, Peng Wu, Xiaoming Zhang, Renjie Xu, Tao Wang
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引用次数: 0

Abstract

An object’s six-degree-of-freedom (6DoF) pose information has great importance in various fields. Existing methods of pose estimation usually detect two-dimensional (2D)-three-dimensional (3D) feature point pairs, and directly estimates the pose information through Perspective-n-Point (PnP) algorithms. However, this approach ignores the spatial association between pixels, making it difficult to obtain high-precision results. In order to apply pose estimation based on deep learning methods to real-world scenarios, we hope to design a method that is robust enough in more complex scenarios. Therefore, we introduce a method for 3D object pose estimation from color images based on farthest point sampling (FPS) and object 3D bounding box. This method detects the 2D projection of 3D feature points through a convolutional neural network, matches it with the 3D model of the object, and then uses the PnP algorithm to restore the feature point pair to the object pose. Due to the global nature of the bounding box, this approach can be considered effective even in partially occluded or complex environments. In addition, we propose a heatmap suppression method based on weighted coordinates to further improve the prediction accuracy of feature points and the accuracy of the PnP algorithm in solving the pose position. Compared with other algorithms, this method has higher accuracy and better robustness. Our method yielded 93.8% of the ADD(-s) metrics on the Linemod dataset and 47.7% of the ADD(-s) metrics on the Occlusion Linemod dataset. These results show that our method is more effective than existing methods in pose estimation of large objects.

基于全卷积神经网络的多源特征点六自由度姿态估计方法
物体的六自由度(6DoF)姿态信息在各个领域都非常重要。现有的姿态估计方法通常检测二维(2D)-三维(3D)特征点对,并通过透视点算法(PnP)直接估计姿态信息。然而,这种方法忽略了像素之间的空间关联,很难获得高精度的结果。为了将基于深度学习方法的姿态估计应用到现实世界的场景中,我们希望设计一种在更复杂的场景中足够稳健的方法。因此,我们介绍了一种基于最远点采样(FPS)和物体三维边界框的彩色图像三维物体姿态估计方法。该方法通过卷积神经网络检测三维特征点的二维投影,将其与物体的三维模型进行匹配,然后使用 PnP 算法将特征点对还原为物体姿态。由于边界框的全局性,这种方法即使在部分遮挡或复杂的环境中也能发挥有效作用。此外,我们还提出了一种基于加权坐标的热图抑制方法,以进一步提高特征点的预测精度和 PnP 算法求解姿态位置的精度。与其他算法相比,该方法具有更高的精度和更好的鲁棒性。我们的方法在 Linemod 数据集上获得了 93.8% 的 ADD(-s) 指标,在 Occlusion Linemod 数据集上获得了 47.7% 的 ADD(-s) 指标。这些结果表明,在大型物体的姿态估计方面,我们的方法比现有方法更有效。
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来源期刊
Journal of Intelligent & Robotic Systems
Journal of Intelligent & Robotic Systems 工程技术-机器人学
CiteScore
7.00
自引率
9.10%
发文量
219
审稿时长
6 months
期刊介绍: The Journal of Intelligent and Robotic Systems bridges the gap between theory and practice in all areas of intelligent systems and robotics. It publishes original, peer reviewed contributions from initial concept and theory to prototyping to final product development and commercialization. On the theoretical side, the journal features papers focusing on intelligent systems engineering, distributed intelligence systems, multi-level systems, intelligent control, multi-robot systems, cooperation and coordination of unmanned vehicle systems, etc. On the application side, the journal emphasizes autonomous systems, industrial robotic systems, multi-robot systems, aerial vehicles, mobile robot platforms, underwater robots, sensors, sensor-fusion, and sensor-based control. Readers will also find papers on real applications of intelligent and robotic systems (e.g., mechatronics, manufacturing, biomedical, underwater, humanoid, mobile/legged robot and space applications, etc.).
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