Dynamic feature detection using virtual correction and camera oscillations

M. Heshmat, M. Abdellatif, Kazuaki Nakamura, A. Abouelsoud, N. Babaguchi
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Abstract

Visual SLAM algorithms exploit natural scene features to infer the camera motion and build a map of a static environment. In this paper, we relax the severe assumption of a static scene to allow for the detection and deletion of dynamic points. A new "virtual correction" method is introduced which serves to detect the dynamic points by checking the re-projection error of the points before and after the virtual measurement update. It can also recover the erroneously excluded useful features, particularly the distant points which may be deleted because of the change in its position after new measurement observation. Deliberate camera oscillations are also used to improve the VSLAM accuracy and the camera observability. The simulation results showed the effectiveness of the virtual correction when combined with camera oscillation in recovering the misclassified features and detecting the dynamic features even in difficult scenarios.
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动态特征检测使用虚拟校正和相机振荡
视觉SLAM算法利用自然场景特征来推断相机运动并构建静态环境的地图。在本文中,我们放宽了对静态场景的严格假设,以允许检测和删除动态点。提出了一种新的“虚拟校正”方法,通过检测虚拟测量更新前后点的重投影误差来检测动态点。它还可以恢复错误排除的有用特征,特别是在新的测量观测后由于位置变化而可能被删除的远处点。为了提高VSLAM的精度和相机的可观测性,还采用了有意的相机振荡。仿真结果表明,在复杂场景下,结合摄像机振荡的虚拟校正在恢复误分类特征和检测动态特征方面是有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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Visual attention modeling for 3D video using neural networks Dynamic feature detection using virtual correction and camera oscillations Camera oscillation pattern for VSLAM: Translational versus rotational Dynamic stereoscopic previz No-reference perceptual blur metric for stereoscopic images
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