KMOP-vSLAM:基于K-means和OpenPose的RGB-D相机动态视觉SLAM

Yubao Liu, J. Miura
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引用次数: 8

摘要

虽然同步定位和地图绘制(SLAM)技术已经取得了巨大的进步,但场景刚性假设限制了视觉SLAM在计算机视觉、智能机器人和增强现实等现实环境中的广泛应用。为了使SLAM在动态环境中更加健壮,需要从跟踪过程中去除动态对象(包括未知对象)上的异常值。为了解决这一挑战,我们提出了一种新的实时视觉SLAM系统KMOP-vSLAM,它增加了无监督学习分割和人工检测的能力,以减少室内动态环境中跟踪的漂移误差。提出了一种高效的几何离群点检测方法,利用前一帧图像的动态信息和一种新的概率模型,结合几何约束和人工检测对运动目标进行判断。属于运动物体的异常特征在很大程度上被检测出来并从跟踪中去除。著名的数据集TUM用于评估人们走动的动态场景中的跟踪误差。与使用RGB-D相机的最先进的视觉slam相比,我们的方法产生了更低的轨迹误差。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
KMOP-vSLAM: Dynamic Visual SLAM for RGB-D Cameras using K-means and OpenPose
Although tremendous progress has been made in Simultaneous Localization and Mapping (SLAM), the scene rigidity assumption limits wide usage of visual SLAMs in the real-world environment of computer vision, smart robotics and augmented reality. To make SLAM more robust in dynamic environments, outliers on the dynamic objects, including unknown objects, need to be removed from tracking process. To address this challenge, we present a novel real-time visual SLAM system, KMOP-vSLAM, which adds the capability of unsupervised learning segmentation and human detection to reduce the drift error of tracking in indoor dynamic environments. An efficient geometric outlier detection method is proposed, using dynamic information of the previous frames as well as a novel probability model to judge moving objects with the help of geometric constraints and human detection. Outlier features belonging to moving objects are largely detected and removed from tracking. The well-known dataset, TUM, is used to evaluate tracking errors in dynamic scenes where people are walking around. Our approach yields a significantly lower trajectory error compared to state-of-the-art visual SLAMs using an RGB-D camera.
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